Title of Invention

PROCESS CONTROL USING ON-LINE INSTRUMENTATION AND PROCESS MODELS

Abstract Title: A method to obtain an improved estimate of a process or product property A method for providing improved estimates of properties of a chemical manufacturing process is disclosed. The method employs a process model that includes, or is modified by, scores or other gains obtained from the mathematical transformation of data obtained from an on-line analyzer. Chemical manufacturing processes using the method also are disclosed. (Figure 1)
Full Text FORM 2
THE PATENTS ACT, 1970
(39 of 1970)
&
THE PATENTS RULES, 2003
COMPLETE SPECIFICATION
(See section 10, rule 13)



GRANTED
17/6/2008



"PROCESS CONTROL USING ON-LINE INSTRUMENTATION AND PROCESS
MODELS"
INEOS USA LLC, a limited liability company organized under the laws of the State of Delaware, USA, whose principal office is at 200E Randolph Drive, Chicago, Illinois, USA 60601
The following specification particularly describes the invention and the manner in which it is to be performed.


ORIGINAL
449/MUMNP/2005

Field of the Invention
The present invention relates to a method to obtain an improved estimate of a process or product property that is useful in controlling a chemical manufacturing process.
The invention relates to chemical manufacturing process control. More specifically, the invention relates to the use of information obtained by mathematical manipulation of on-line analyzer data. This information describes sources of variability in manufactured materials, which can be used to improve the performance of controllers or process models used in a chemical manufacturing process.
Background of the Invention
Chemical manufacturing processes typically operate in the liquid or gas phase within a set of operating conditions such as temperature, pressure, and catalyst concentration to produce a material having a desired set of physical and chemical properties.
For example, one or more olefins can be reacted in a liquid or gas phase reactor in the presence of a catalyst to produce a polyolefin or other polymer. A variety of polymers having different properties can be manufactured in the same reactor by altering the. operating conditions, types and ratios of reactor feedstock, catalyst and additives. One polymer property often of great interest is polymer melt flow rate.
Modem chemical reactors typically employ computer-based control of some type to maintain product quality and to transition operation from the manufacture of one product to another. Where the reactor is used to manufacture polypropylene, the melt flow rate can be altered if the control program alters, for example, the hydrogen to propylene ratio present in the reactor.
The types of control used in modem reactors can range from one or more control loops using relatively simple proportional integral derivative (PID) or fuzzy logic


controller to sophisticated state of the art predictive control programs. Control systems
of modem polypropylene plants used to control the properties and consistency of the manufactured polypropytenes typically are predictive models, and can be of the "first principles" type, semi-empirical type, or completelyem empirical type.
A first principles model employs process control equations derived from physical -and chemical relationships that describe various aspects of the interaction of materials within the process. A semi-empirical model employs equations of the type used in a first principles model but which have been modified by empirical analysis of date to produce a somewhat better result An empirical model uses relationships derived from observation of the process behavior in an attempt to model the behavior, without any particular regard for the first principles type of equations typically used to describe behavior of materials within the reactor and associated processes. Examples of empirical models include many forms of regression models, including neural networks. In practice, these three model types represent a continuum of models useful for predictive control of the reactor, and most models will exhibit at least some degree of both first principle and empirical concepts.
A goal of most any polymer control system or process model will be to produce a material having a specified set of properties, including polymer melt flow rate. Because loop control and models both tend to represent imperfect descriptions of behavior, the properties of materials produced using control based on these principles tend to differ somewhat from the desired values of the actual properties as measured in the lab.
Where predictive models are used, the time required to identify the difference between predicted and measured polymer properties haf led to various efforts to develop on-fine instrumentation capable of measuring directly or interring a product quality during polymer production. For example, it is known to use various on-line viscometers to directly measure meometric properties of polymers. Alternatively, on-line instruments such as Fourier transform infrared spectrometers f FTIRs"), near infrared spectrometers ("NIRs"), ultraviolet-visible ("UV-VIS") spectrometers, Raman spectrometers and nuclear magnetic resonance spectrometers ("NMRs" or "IMRs") have been used with varying degrees of success to infer material properties, such as melt flow rates, from the types of data that can be generated by these instruments and their


associated data analysis software. Inferences of a property such as melt flow rate from spectrometry data typically is accomplished using advanced mathematical techniques such as multivariate curve fitting, neural networks, Principal Component Regression (PCR), or Partial Least Squares Regression Analysis (PLS), to transform the raw spectrometry data into an estimate of the desired physical property. Additional background information concerning PCR and PLS can be found in "Partial Least Squares Regression: A Tutorial", Analytics Chlmica Acta 185 (1986) 1-17, by P. Geladi and BR Kowalski.
In PCR and PLS, the spectrometric data are decomposed into two matrices, a "scores" matrix and a loadings" matrix. The loadings matrix is a vector matrix containing the minimum number of vectors that adequately describe the variability in the spectral data while providing the desired level of predictive ability in the resulting model. The scores matrix is a scalar matrix that contains the contribution of each of the loadings vectors to each sample spectrum.
Thus, each sample spectrum in the calibration set can be reconstructed from a linear combination of the products of scores and loadings. For example, a four factor PCR or PLS model will have four loadings vectors and each sample can be described by four scalar values (the scores). A subset of one or more of these scores typically describes most of the variabllity attributable to a property such as melt flow rate. Additional information concerning the development and use of these techniques can be found, in "Chemometrics: Its Role in Chemistry and Measurement Sciences", Chemometrfcs and Intelligent Laboratory Systems, 3 (1988) 17-29, Elsevier Science Publishers B.V., and "Examining Large Databases: A Chemometric Approach Using Principal Component Analysis". Journal of Chemometrics, Vol. 5,79 (1991), John Wiley and Sons, both authored by Robert; R. Meglen, the disclosure of each being incorporated by reference in its entirety.
"Coefficients" from multivariate curve fits and "weights" or "hidden node outputs" from neural network analysis are analogous concepts to the techniques discussed above and can also be used in combination with a process model.
In some cases, process control engineers have attempted to enhance spectral analyzer results by performing regression analysis of local process variables measured


In situ or in the immediate vicinity of the analyzer with scores resulting from the estimation of a property, such as Mooney viscosity, by on-line instrumentation. One such approach is described in U.S. Patent No. 6,072376 to McDonald, et al, the disclosure of which is hereby incorporated by reference. While this method may lead to improved process control In some cases, the industry desires new, more powerful approaches to integrating on-line instrumentation and process control. Such improved techniques would be useful, for example, to minimize variability in manufactured materials, or to minimize transition times when switching from the manufacture of one material to another Ideally, these techniques could be used to improve the performance of plants using simpler control schemes such as PID or fuzzy logic control loops, as wen as the performance of those plants using sophisticated predictive control models.
Summary of the Invention
We have found that substantial Improvement in process control may be provided in estimating product properties or process conditions of state by combining certain "scores" resulting from a mathematical technique used to derive distinct sources of variability in on-line sample data with a process model to yield an enhanced estimate of a process property such as melt flow rate.
This enhanced estimate then can be used directly for process control, such as being used as an input to a PID or fuzzy logic control loop, or in connection with a first principles, semi-empirical or empirical predictive process model that requires use of the estimated process property as a variable to provide for improved, preferably predictive, process control.
It should be noted that the use of one or more physical measurements obtained at or near an on-line analyzer for the purpose of improving the property measurement ability of the analyzer, whether or not such data is mathematically transformed by linear regression or other method, is not considered to be use of a process model in connection with an analyzer as contemplated by our invention. Similarly, the regression of directly measured process variables only with scores, such as in Example 4, while constituting a model, is not a "process model" as that term is used in this application.


In one embodiment of our invention, we obtain an improved estimate of a product property, or process condition or state (hereafter generically a "property), useful in a chiemical manufacturing process. The improved estimate is obtained by using a process model for predicting the property In connection with one or more scores correlative to the property. The scores are obtained by mathematical transforming data obtained ~ from an on-line analyzer. The improved estimate of the property may then be used by a controller to provide for improved plant performance.
As used in this application, a "controller" can be any device, including, but not limited to, hardware or software, capable of accepting an estimate of a desired property and using that estimate to alter its control output For example, a controller can be a simple loop controller based on PID or fuzzy logic, or a multivariate predictive optimizer controller, as discussed in more total below.
"Chemical reactor means any vessel in which a chemical feedstock is converted into a different chemical effluent, whether or not in the presence of a catalyst or other materials, and without regard for whether the reaction occurs in a liquid, solid or gaseous phase, or as a supercritical fluid, or combinations thereof.
When scores or other "gains" as described below are used In "connection with" or "in association" with a process model, It means that the scores or other gains can be terms embedded within a linear or non-linear model of the process, or that the scores or other gains can be used in linear or non-linear equation in which the process model's output is also used as a term in the equation.
"Mathematical transformation* means mathematical manipulation of sample data from an on-line instrument by any method that yields a matrix of scores representative of a set of vectors (the loadings vectors), each vector capturing a distinct source of variability in the measured samples. In other words, a mathematical transformation operates on a set of data (such as a set of free induction decay curves from a nuclear magnetic resonance analyzer) to reduce the data to scores and loadings matrices that represent a simplified data set that when taken together can be used to reproduce the raw data to a high degree of certainty, but which reduce the number of dimensions required to describe the data set to a lower number of dimensions better suited for use in control or prediction appllications.

"On-fine analyzer" refers to any instrument capable of producing data that can be transformed into scores that can be correlated to a property in real tirne, or In sufficiently near real time so as to be useful for process control purposes. An on-line analyzer useful for this purpose typically will be any analyzer that can provide an estimate of a property to the control system faster, more frequently or more conveniently than the system can be provided the measured value of that property from samples drawn and analyzed in the laboratory. Typically, such on-line analzers are spectral analyzers such as NMR, IR, NIR, UV-V1S or Raman spectrometers, as the spectra generated by these devices lend themselves well to the application of the mathematical techniques described above, but the term "on-fine analyzer*, as used in this invention, includes any analyzer capable of generating a data set that can be subjected to the mathematical transformation processes mentioned above.
In some embodiments of this invention, the free induction decay curves ("FIDs") obtained from on-line nuclear magnetic resonance measurements of a chemical product, such as a propylene-containing polymer, are mathematically transformed by Partial Least Squares analysis to obtain scores which are incorporated into a semi-empirical model of melt flow rate.
In other preferred embodiments of our invention, a predictive process model is used to generate; a first estimate of a property of a manufactured chemical product Data from on-line measurement of the chemical product then is mathematically transformed to provide scores used to refine the first estimate of the property.
In yet another embodiment of our invention, a chemical manufacturing process uses an on-line analyzer to collect data for a chemical material at a point within the manufacturing process; mathematically transforms the data to produce scores related to the chemical material; uses the scores in connection with a process model to produce an estimate of a property of interest for the chemical material; and inputs the estimated property into a controller used in the chemical manufacturing process. The controller output can then be varied in response to the estimated property to cause the property cf interest to move toward a desired value.
As used in this application, "process model" means any process model that generates predicted values of one or more process variables at the then current time to


determine whether control actions should be taken by one or more controller at about
the same point in time. Such controllers may be Iinear or nonlinear. The term non-
linear*, when used in describing a controller, means a controller that is capable of
optimizing non-linear relationships, either directly, but more typically indirectly, such as
by approximate solutions non-linear relationship, using multiple equation to model
a non-linear relationship over discrete ranges of variable values.
In preferred embodiments, a predictive process model is used in association with one or more multivariate predictive optimizer controllers.
As used in this application, "predictive process model" means any forward-looking process model that generates predicted values of one or more process variables at a future point in time to determine whether control actions should be taken by one or more controllers at a present or a future point in time. As with process models generally, such controllers may be linear or nonlinear. In some preferred embodiments of the invention, a predictive process model is associated with one or more multivariate predictive optimizer controllers.
A "multivariate predictive optimizer controller" is a controller that is based on
multi-variable dynamic (i.e., time-variant) expressions, which is the compiling or
calculation of a matrix of valued or functions which relate a plurality of manipulated and,
optionally, disturbance variables, to a plurality of control variables, and optionally, to
constraint variables, in such a manner as to facilitate prediction of state variables at
future points in time and to enable control of a system based in whole or in part on such
predictions.
In some preferred embodiments of these inventions, the chemical reactor is a polyolefin reactor. As used herein, a "poryolelin reactor" is a chemical reactor in which at least fifty weight percent of the reactor feedstock is propylene and/or ethylene, which is reacted in the presence of a catalyst to produce a polyolefin comprising polypropylene, polyethylene or co-polymers thereof. Reactor types typically used for the production of polyoletins include gas phase fluidized bed reactors, gas phase subfluidized bed reactors, stirred tank reactors, liquid pool reactors, gas loop reactors having one or more fluidization domains, such as multi-zone circulating reactors having


a fluidization zone and a packed bed zone where polymer powder flows by the force of gravity, and supercritical loop reactors.
Preferably, potyotefln reactors use catalysts selected from the group consisting of Ziegler-Natta, tale transition metal, and metallocene catalysts, and more preferably, the manufacturing process occurs at toast partially in the gas phase. This embodiment is particularly useful for the manufacture of polyolefins and olefin copolymers, and in particular, ethylene and propylene-containing polymers or copolymers. The invention particularly can be used effectively in connection with one or more horizontally agitated, sub-fluidized bed gas phase reactors.
Brief Description of the Drawings
FIG. 1 is a diagram showing a horizontally agitated subfluidized bed reactor and associated equipment for the manufacture of polypropylene.
FIG. 2 is a schematic diagram of a system for making polypropylene. The system uses two reactors of the type described in connection with FIG. 1. The system employs a predictive process model for process control, and an on-line analyzer capable of providing sample data, which can be mathematically transformed to yield scores that can be used in combination with the process model to estimate melt flow rate.
FIG. 3 is a plot showing the melt flow rate of a propylene polymer measured in the laboratory compared with melt flow rate as predicted by on-line Instrumentation, as predicted by a validated process model, and as predicted by the validated model using both a combination of scores from mathematically transformed on-line NMR data and a process model of melt flow rate In accordance with Example 1 of the invention.
FIG. 4 is a plot showing the melt flow rate of a propylene polymer measured in the laboratory compared with melt flow rate as predicted by on-line instrumentation, as predicted by a validated process model, and as predicted by the validated model using both a combination of scores from mathematically transformed on-line NMR data and a process model of melt flow rate in accordance with Example 2 of (he invention.
FIGS. 5a and 5b illustrate the relationships modeled by and selected for use in a non-linear multivariable predictive optimizer controller used in connection with the first gas composition controller described in Example 3.


FIG. 6 is a plot of measured and predicted melt flow rates of Example 4.
FIG. 7 is a plot of laboratory melt flow rate and validation data for predicted melt
flow rates using the models created In connection with Figure 6 and Example 4.

Detailed Description of the Invention
Applicants' invention is described below in detail in connection with the manufacture of polypropylene. Applicants' invention is useful in many chemica! manufacturing environment, and can be adapted to other processes by those skilled in the art using the teachings contained in this application.
Figure 1 illustrates a horizontal, mechanicaly agitated, sub-fiuidized bed reactor system 10 including certain key associated equipment used for the manufacture of polypropylene.
Polymerization of monomer feedstock occurs in a horizontal, cylindrical reactor vessel 12. Catalyst, co-catalyst and modifiers can be fed at a continuously variable rate separately into an inlet end 14 of vessel 12 through feedlines 16 and 18.
During steady state operation, polymerization begins in a vapor space 20 located in the upper portion of vessel 12, and, as particle size Increases and particles settle, continues in a particulate bed 22 occupying the tower portion of vessel 12. An agitator 24 is located along the longitudinal axis A of vessel 12. Paddles 26 of agitator 24 stir particulate bed 22 as agitator 24 is turned, thereby promoting mixing and a plug flow movement of material In particulate bed 22 towards a discharge end 28 of vessel 12.
Monomer and condensed liquid from vapor/liquid separator 42 (collectively referred to as ("quench liquid") are added into vapor space 20 of vessel 12 through quench nozzles 30 longitudinally located in vapor space 20 near the top of vessel 12. The liquid added through nozzles 30 cools hot particles located on the upper surface of particulate bed 22, and paddies 26 subsequently drive these cooled particles, and any remaining liquid monomer, into particulate bed 22 to continue the exothermic polymerization reaction and to further cool bed 22. The flow of liquid into vessel 12 can be controlled regionally within vessel 12 by quench control valves 31.
Recycled reactor vapor can be introduced through compressor 32 into a lower portion of bed 22 through gas inlets 34. Hydrogen also can be introduced into the lower

portion of bed 22 through gas inlets 34 by adding hydrogen at or near the inlet or outlet of compressor 32.
Polymer product is removed from discharge end 28 of vessel 12 through one or more discharge valve(s) 35. The discharged product passes through a solid/gas separator 36 (also referred to as the "bag house"). after which the discharged solid -product is transferred to a purge column (see FIG. 2), while the separated gas is routed to offgas compressor 46 to be compressed prior to condensation for make-up to vessel 12.
Reactor offgas cooler condenser 44 condenses vapor drawn directly from reactor vapor space 20, as well as condensed offgas removed from solid/gas separator 36, which was compressed by offgas compressor 46. Vapor and liquid feed to vessel 12 is accomplished using liquid/vapor separator 42. Liquid for feed to vessel 12 through pump 38 is a combination of condensate and fresh monomer make-up through monomer make-up line 40.
Under nominal operating conditions, the reactor system described above operates at pressures of from about 1400 to 2800 kPa (200 to 400 pslg) and at temperatures of from about 50 to 90 degrees centigrade (122 to 194 degrees Fahrenhelt). The volume of the particulate polymer bed typically occupies between about 40 to 80 percent of the volume of vessel 12.
Reactor system 10 typically can be used to produce hornopolypropyiene or random copolymers of propylene and other olefins, such as ethylene. Control of such a reactor system typically involves the use of an empirical, semi-empirical or first principles reactor process model, as discussed in greater detail below. The process model advantageously employs an estimate of polymer melt flow rate obtained in part from scores resulting from the mathematical transformation of FID curve data obtained from an on-line NMR analyzer located as shown in Figure 2.
Control of a reactor system 10 typically requires manipulation of process variables such as:
a) catalyst flow to control production rate;
b) hydrogen concentration to control molecular weight or melt flow rate;


c) comonomer feed and concentration (when making random copolymers) to control product properties;
d) cocatalyst to catalyst ratio;
e) cocataJyst to electron donor ratio when using catalyst systems having oof catalysts such as tri-alkyl aluminum and external electron donors; and
f) various gas concentrations and ratios in the recycle loops to determine the
proper make-up of raw and recycled materials to maintain the desired in-reactor
concertration.
Figure 2 is a simplified schematic diagram of a chemical manufacturing process 100 capable of making homopolymers, random copolymers and impact copolymers of polypropylene. In Figure 2, the sold Ones indicate the flow of materials, while the dashed lines Indicate the flow of information. As will be recognized by those skilled in the art, random copolymers typically are those materials formed by the introduction of two or more polyolefins in a single reactor, and impact copolymers typically are those materials formed by first producing a polymer such as a polypropylene material in a first reactor or reaction zone, which is transferred into a second reactor or reaction zone to incorporate an impact modifying material formed in the second reaction zone, such as an ethylene-propylene ("EPR") rubber. System 100 physical plant equipment includes a first reactor 102, a second reactor 104, a first reactor liquid gas separator 106, a second reactor liquid gas separator 106, a purge column 110 for degassing residual hydrocarbons from the Impact copolymer powder produced in reactor 104, an extruder 112 for converting the degassed powder into pellets, as are typically used by the conversion industry, and an on-line NMR melt flow analyzer 113 located between the baghouse (see element 36 of Figure 1) and purge column 110 as wed as a laboratory 124 which performs product analysis of samples collected at the point of the NMR analyzer 113. System 100 can also include non-linear multivariable predictive optimizer controllers, in this case the four optimizers 114, 116, 118 and 120, as well as a computer 122 capable of performing the calculations described herein when used in the configuration described in Example 3. These controllers and computer are included in Figure 2 for discussion of Example 3, and are not necessarily part of system 100. Discussion of these elements is provided In detail in connection with Example 3, below.

Reactors 102 and 104 typically operate in the manner described in detail in connection with the description of system 10 of Figure 1 and with auxlliary equipment of the type described in connection with Figure 1. The operation of horizontal gas phase reactors of this type is well known to those skilled in the art, and is described in our U.S. Patent Nos. 4,888,704 and 8,504,166, the disclosure of each being hereby incorporated by reference.
Reactors 102 and 104 operate using a process control program that requires an estimate of product melt flow rate as measured between baghouse 36 (see Figure 1) and purge column 110 (see Figure 2). Use of our invention to obtain good estimates of the melt flow rate is demonstrated by Example 1, below.
The same calibration and validation data sets have been used for Examples 1,2, and 4 below. For the calibration set, data were collected during a three month period. There were 425 data points in the calibration set. Al calibration data have been adjusted by a time lag approximately equal to the time required for material produced in the reactor to pass through system 100 to the point where the on-line analyzer is located so that on-line data will be representative of material produced in the reactors at an earlier point in time. Additionally, process data has been averaged over about a one half to one hour period around the time selected as representative of the manufactured material. Similar time lags and time averaged measurement of process conditions preferably would be used when implementing the embodiment of the invention described in Example 3, and preferably are employed wherever on-line instrument data is acquired at a point located substantially downstream (with respect to time) from the point where process conditions are measured.
For the validation set, data were collected for a one-year period. Validation data have been filtered against the following criteria to ensure stable process conditions. All process and scores data are based on 8-hour averages. For process data, each 8-hour interval was broken up into eight 1-hour sub-intervals. The average values of the 1-hour sub-intervals could not deviate by more than a specified percentage from the average for the full 8-hour interval otherwise, the data were excluded. For the scores data, outliers were eliminated using the Mahalanobis distance as a criterion. Additional information concerning the use of the Mahalanobis distance can be found in


"Multivariate Data Analysis, 5th Edition" by J. F. Hair, Jr., R. E. Anderson, R. L Tatham, and W. C. Black; PrenOoe Hall (pub), 1998, pp. 66,219,224. After outler removal, there were 569 data points in the validation set
Example 1
A variety of impact copolymers of polypropylene were manufactured over a three month period using a two reactor system such as the one described in Figures 1 and 2 above.
The reactor system was fitted with an on-One nuclear magnetic resonance measurement system available from Oxford Instruments of North Andover, Massachusetts as the Oxford Instruments MagneFlow Rack Mount analyzer. This system was used to provide direct estimates of melt flow rate by performing a PLS regression of free induction decay curves generated by the analyzer.
NMR measurements were performed every six to eight minutes on a fresh polymer sample extracted from the process and subsequently handled as described below.
A 300 ml powder sample was extracted from the process and educted to the on-line NMR system where the powder was separated from the motive gas by a cyclone separator. The powder dropped by gravity into a pre-heater chamber where it was fluidized with hot nitrogen unfit it reached a designated temperature of 71 degrees. Centigrade. A valve in the bottom of the preheater then opened and dropped the sample into the NMR probe located between the pole faces of a permanent magnet
The sample was checked for adequate size and, if adequate, the measurement sequence was started. During the measurement sequence, the sample was subjected to a series of 90-degree radio frequency (RF) pulses and the free induction decay (FID) data were collected after each pulse. The FID signals for each sample were averaged and then sent to the NMR control computer for score generation and prediction of properties. The sample was then educted from the NMR probe and returned to the process stream.
The reactor control system employed a semi-empirical model of melt flow rate in dance with Equation I, below:



where:
%RCSEG is the percent rubber in the manufactured impact copolymer;
TOFFGAS1 is the offgas temperature of the first reactor in degrees F;
H2C3RAT1 is the hydrogen to propylene molar ratio in the first reactor;
H2C3RAT2 is the hydrogen to propylene molar ratio in the second reactor;
SCORE3 is a third component of independent variability obtained from a partial least squares analysis of the NMR data;
SCORE4 is a fourth component of independent variability obtained from a partial least squares analysis of the NMR data; and
the coefficients A3, A4, AS, B1, G1, G2 and G3 were derived by non-linear regression using Statistica, Release 5.5, avaliable from StatSoft, Inc. of Tulsa, Oklahoma.
More specifically, partial least squares analysis was used to obtain scores from the NMR data. The scores were then combined with process model data and the combined process model data and scores non-linearly regressed to determine statistically significant terms. While non-linear regression Is used in this Example, it should be noted that when the process model is linear, linear regression can be used instead of non-linear regression. When a statistically


insignificant term was identified, that term was dropped from the combined score
and process model, and the regression run again. This process was repeated
until only statistically significant terms remained.In the combined equation. In this
case, the coefficients of statistical/ significant terms remaining after the analysis was completed had the values listed below:
A3 = 1.6154 A4 = 0.7701 A5 = 5.3367 B1 = 23.5065 G1 = 0.8338 G2 = 1.7243 G3 = 0.4716
As can be seen from observation of (Equation I, the process model equation appllicity includes scores from mathematical transformation of the on-fine analyzer data as terms in the process model equation.
Scores from the mathematical transformation of on-line NMR process datsrwere selected by empirical evaluation of the partial least squares analysis of the data in a manner known to those skilled in the art Typically, the results of the data analysis package will yield a number of scores, each of which correlates to a distinct (i.e. substantially independent) source of variabillity (represented by factors or loadings from PLS regression) in the analysis of the on-line NMR sample. The control engineer will take the scores and check to see which terms are most highly correlated to variability in melt flow rate (or other property of interest) and select those scores that represent statistically meaningful correlations to melt flow for use in the combined model.
It is important to note that the scores selected are not necessarily those from the instrument data that describe the highest variability of the sample data, but those that when combined with process data show the highest correlation to observed melt flows. Thus in this case, the scores selected for use In the model were the third and fourth scores, which described the third and fourth largest distinct components of variability in

the sample results. These scores were selected because they were the only statistically significant results showing a high degree of correlation between observed and predicted process model melt flow rate when combined with the process data.
figure 3 Is a plot of estimates of melt flow rate from three methods compared with laboratory measured melt flow rate for the validation data set This demonstrates -the superiority of melt flow estimates obtained by using a combination of a process model for melt flow and the scores obtained by a partial least squares analysis of free induction decay curves from the on-fine NMR instrument
'The square data points of Figure 3 represent a process model estimate of melt flow rates of impact copolymer powder. This process model is described in Example 2, Equations II, III and IV. The circular data points represent estimates of melt flow values obtained directly from the on-line NMR instrument which uses a four factor PLS model. The solid triangle data points represent estimated malt flow rates obtained from Equation I, which uses a combination of process model terms and scores from the on-line NMR instrument Figure 3 shows that the use of a combination of scores from NMR data in connection with a process model yields values that match the laboratory data more closely than the melt flow estimate produced directly by the NMR instrument or from the process model alone. Quantitatively, on the validation set, the root mean square error of prediction for the process model, for the NMR data, and for the combined approach of Example 1 are, respectively, 13.4%, 147.6% and 10.8%, where the root mean square error of prediction is calculated as below:
Root Mean Square Error of Prediction = 100 * SQRT((1/n) * sum of [relative error inMFR]2)
where the relative error in MFR is given by:
relative error = [ {MFR(observed) - MFR(predicted))/MFR(observed) ] and
n is the number of data points, and the sum is taken over all n data points.
Thus, the approach using scores combined with a process model has the lowest root mean square error. Another physically meaningful measure for comparing different methods is counting the number of data points for which the percent relative error is
17

within a range, such as ±20%. By this measure, the combined approach of Example 1 predicted MFR within ±20% of the observed MFR in 539 out of 569 data points in the validation set In contrast, the process model predicted within ±20% in only 487 out of 569 data points, and the MFR estimate produced by the NMR Installment was within ±20% in Just 119 out of 569 data points. This dearly shows the performance' improvement obtained by combining a process model and scores from the NMR data, as described in Example 1.
Scores obtained by mathematically transforming NMR data can be used in combination with a process model in ways other than those described in Example 1, as is demonstrated by Example 2, below.
Example 2
As In Example 1, a variety of impact copolymers of polypropylene were manufactured over a three-month period of time using a two-reactor system such as the one described above. In this instance, an estimate of melt flow rate was first determined by using an existing process model, and that estimate refined using scores obtained by mathematically transforming on-line NMR data of the type obtained in Example 1.
The general process model used In this Example employs what those skilled in the art will recognize as the log blending rule and is described by the Equation II, below.
In (MFRPROMODTOT) = (1 - %RCSEG / 100) * In (MFRPROMOD1) +
(%RCSEG/100)*ln(MFRPROMOD2) (Equation II)
where:
MFRPROMODTOT is the value of MFR obtained from the process model;
MFRPROMOD1 is a first component of the MFR model estimate attributable to the first reactor;


MFRPR0M002 is a second component of the MFR model estimate attributable to the second reactor; and
%RCSE6 is the percent rubber in the manufactured impact copolymer.
the specific process model employed for MFRPROMOD1 is described by Equation III below.
ln(MFRPROMOD1) =
6.8120 +12587 in(H2C3RAT1 + 0.000284 AIMgRAT) (Equation III) where:
MFRPROMOD1 is the process model's predicted first reactor melt flow rate;
H2C3RAT1 is the molar ratio of hydrogen to propylene in the first reactor, and AIMgRAT is the molar ratio of aluminum to magnesium in the catalyst system.
The second reactor melt flow rate is modeled by Equation IV below.
ln(MFRPROMOD2)= .
1.5027 +12771 * ln(H2C3RAT2) - 1.3141 * In (C2C3RAT) (Equation IV) where:
MFRPROMOD2 is the process model's predicted melt flow rate for the incremental product made in the second reactor;
H2C3RAT2 is the molar ratio of hydrogen to propylene in the second reactor and
C2C3RAT is the molar ratio of ethylene to propylene in the second reactor.


Values of MFRPROMODTOTare then augmented by scores obtained from mathematical trasformation of the on-line NMR FID curves in accordance with Equation V, below.
In (MFR) = A2 * SCORE2 + A3 * SCORE3 + A4 * SCORE4 + A5 + B1 *-IN(MFRPROMODTOT) (Equation V)
The values of A2- A5 and B1 were determined by linear regression of the scores from Equation V using the Iinear regression feature of a MICROSOFT EXCEL spreadsheet, and in this case were:
A2 = 0.3468 A3 = 1.1899 A4 = 0.6959 A5 = 0.03808 B1 = 0.8883
A1, of Score 1 was dropped in this Example because it was statistically insignificant (i.e.. In this particular instance, the " t" value of A1 fell within the range of-2.0 to 2.0).
Figure 4 is a plot of estimates of melt flow rate from three methods compared with laboratory measured melt flow rate for the validation data set As with Example 1, square data points represent melt flow rate values of Impact copolymer powder obtained from a process model alone. Circular data points represent estimates of melt flow values obtained directly from the on-line NMR installment, and solid triangular data points represent estimated melt flow rates obtained from the foregoing equation, which uses a combination.of scores from the on-line NMR instrument and the process model terms. Figure 4 shows that the use of a combination of scores of NMR data in connection with the process model as described in Example 2 estimates the laboratory data more closely than the melt flow estimate produced by the NMR instrument or the process model alone.


In the foregoing process model, specific tems will be recognized and well known to those of ordinary skill in the art Included terms are those such as aluminum to magnesium ratio (i.e., cocatalyst to catalyst ratio resulting from the use of an aluminum-containing cocatalyst in combination with a magnesium-corrtaining Ziegler-Natta catalyst), hydrogen to propylene molar ratios, ethylene to propylene ratios, and percent -rubber in the impact copolymer.
It should be noted that while Equations II, ill, IV and V are exemplary models, other equations resulting from first principles, semi-empirical or empirical modeling techniques may be used in accordance with the invention, as all three types of models can benefit from the combination of scores with the process model in accordance with bur invention.
Thus, an important point to be considered here is that the invention is not dependent on the use of any particular process model, but rather that the prediction of the process model can be improved by directly incorporating scores from a mathematical transformation or on-line process analysis equipment (such as an ori-fine NMR instrument) when compared to a prediction or measurement obtained from an on-line instrument used to directly estimate the desired property, or the use of a process model alone.
For the validation set of this Example 2, the root mean square error of prediction for the process model, for the NMR data, and for the combined approach of Example 2 are, respectively. 13.4%, 147.6% and 10.6%.
Thus, the combined approach of Example 2 has the lowest root mean square error. Another physically meaningful measure for comparing different methods is counting the number of data points for which the percent relative error is within a range, such as ±20%. By this measure, the combined approach of Example 2 predicted MFR within ±20% of the observed MFR in 545 out of 569 data points in the validation set In contrast, the process model predicted within ±20% in only 487 out of 569 data points, and the MFR estimate produced by the NMR instrument was within ±20% in just 119 out of 569 data points. This cleariy shows the performance improvement obtained by combining a process model and scores from the NMR data, as described in Example 2.
%
As mentioned above, the types of process models that can be combined with the scores resulting from the mathematical transformation of on-line Instrumentation data In accordance with the Invention, are well-known to those skilled in the art and can be generated for specific reactor configurations by those skilled in the modelling and control
of chemical reactors. Representative examples can be found in U.S. Patent No. -5,504,168 to Bucheill et al., the disclosure of which is hereby incorporated by reference.
Example 3, below, describes briefly both how a simple empirical model for the manufacture of impact copolymers of polypropylene is constructed, and how the model may be improved by the use of scores obtained from an on-line NMR instrument.
Example 3
An impact copolymer plant of the type described in connection with Figures 1 and 2 operates with an empirical process model employing four simple non-linear multivariable predictive optimizer controllers 114,116,116 and 120, as shown in figure 2. This model is described in connection with Tables 1, 2, 3 and 4, below. Referring back to Figure 2, solid lines between physical plant hardware elements 102 through 112 generally indicate the flow of material through system 100, while dashed lines to and from controllers 114 through 120 generally indicate the flow of process information and control information to and from controllers 114 through 120, computer 122, and the laboratory 124. It should be noted that the exact path of information flow from the process to controllers 114 through 120, the computer 122, and from the laboratory 124 need not be as shown in this example.
Tables 1 through 4 fist the primary system variables that are manipulated by each optimizer, as wed as the operating properties that are most directly affected by manipulation of corresponding system variables.


Table 1-First Gas Composition Controller 114

First gas composition controller 114 is based on a time dependent, non-linear model that is developed by accumulating data for a representative operating period. The model is subsequently adjusted by a process control engineer familiar with the chemical process to be controlled as discussed below.
First, the relationship between the dependent and independent process variables is developed through the modeling software. The period of time required to; collect sufficient data to develop a robust process model will vary, but for an impact copolymer plant such as shown in Figure 2, operating periods of six months or so will provide excellent correlations between variables over a wide range of operating conditions and product slates.
The model developed for first gas composition controller 114, and its subsequent modification for use by a process engineer, is schematized in Figure 5.
Figure 5a is a three by three matrix describing relationships R1 through R9, which are the correlations between hydrogen flow, ethylene flow, gas vent flow, offgas hydrogen to propylene ratio, offgas ethylene to propylene ratio and propane


concentration in offgas vent,as modeled for first gas composition controller 114. These
are non-stationary, often non-linear relationships which, although accurately describing the modeled performance off the first reactor offgas system may or may not be suitable for stable reactor control
Once these relationships have been developed, the process control engineer-carefully examines each relationship to examine its effect on the process control model Where the response of the model is deemed by the process engineer to be unstable, or otherwise not well suited for stable process control, the engineer deselects the modeled relationship from the model leaving a matrix having a lesser number of relationships which are routinely used in the model for process control.
Figure 5b represents a final configuration for the model used in first offgas controller 114. As can be seen from Figure 5b, the relationships R2 (relationship between hydrogen flow and ethylene to propylene ratio), R3 (relationship between hydrogen flow and propane in the offgas vent), R4 (relationship between ethylene flow and hydrogen to propylene ratio) and R6 (relationship between ethylene flow and propane in the offgas vent) have been deselected from the model, either because of undesirable actions they are expected to cause in control response or because they are otherwise deemed inappropriate by fhe process control engineer.
During the process engineer's review of the model, he may also specify certain constraints within the model for any particular variable (for example, a limit imposed by the physical limitations of certain equipment), or may specify a variable as a disturbance variable (a variable known to impact a control variable but that is limited or prevented from manipulating that variable in the model.)
Techniques for the deselection of certain process relationships and the specification of process constraints are well-known to those skilled in the process control arts, and can be found, for example, in "Process Control: Structures and Applications", Balchen, J.G. and Mumme, K.I., Aspen Publishers, Inc. (1988), and "Application of Neural Networks to Modeling and Control", Gomm, J. B., Page, G.F. and Williams, 0., Chapman and Had, (1993), the disclosures of which are hereby incorporated by reference. Programs for developing models of this type are available commercially from a number of sources, such as the PROCESS INSIGHTS and PROCESS PERFECTER

programs avaliable from Pavllion Technologies, Inc. of Austin, Texas, or the ASPEN IQ and DMC PLUS programs available from Aspen Technologies, Inc. of Cambridge. Massachusetts. Note that in the engineer's analysis of the relationships in a given controller such as in the first gas controller discussed above, disturbance variables would be listed and conceptually considered with the manipulated variables, whle-constrants would be considered conceptually with the control variables (i.e., the disturbance variables would be fisted in the left hand column and the constraint variables would be fisted in the top row of FIG. 5a). These constraint and disturbance variables have been omitted to simplify the foregoing explanation.
Tables 2,3 and 4 specify the relationships used in first reactor controller 116, the second offgas controller 118, and the second reactor controller 120. The initial models for these controllers are developed in the same manner as that of first offgas controller 114, and are subsequently monodified by the process control engineer, as discussed above.
Table 2 - First Reactor Controller 116

Manipulated variables

Control Variables



Catalyst Row
Hydrogen Concentration In Reactor
Ethylene Concentration in Reactor ,
Reactor Vapor to Liquid Ratio

Production Rate
First Reactor Melt Flow Rate
Percent Ethylene in Product


Disturbance Variables Constraint Variables
Electron Donor to Catalyst Ratio Reactor Temperature Catalyst Yield Cooling Water Valve Position (to offgas
condenser) Propylene Quench Liquid Valve Position


The primary objectives of the first reactor controller are to maximize production rate, stabllize quality, and minimize transition time. Primary controller constraints that the controller must respect are the capabilities of the reactor cooling system and the reactor quench system.
In connection with the first and second reactor controllers, It should be noted that-data for many properties is not directly available or will need to be modeled based on other measurable properties for use in the model. For example, if making a random copolymer of propylene end ethylene, values for percent ethylene, hexane extractables, melt flow rate, and decalin solubles are variables of this type. These properties can be modeled as required by those skilled in the chemical and control arts. Guidance on modeling properties of this type can also be found in the references noted above, as well as in U.S. Patent Nos. 5,933,345 and 5,877,954, the disclosures of which are
«
hereby incorporated by reference. Commercially available software suitable for modeling and/or control of these properties includes the ASPEN IQ and DMC PLUS software available from Aspen Technologies, Inc. and the PROCESS INSIGHTS and PROCESS PERFECTER software available form Pavilion Technologies, Inc.
Additional Information about the application of controllers of the type discussed above can be found in U.S. Patent No. 4,616,308 to Morshedi, and U.S. Patent No. 4,349,869 to Prett, the disclosures of which are incorporated by reference in their entirety.


Table 3-Second Gas Compositon Controller 118


It should be noted that the second reactor gas composition controller is essentially identical to the first reactor gas composition controller.
Table 4 -Second Reactor Controller 120



The property estimation of NMR analyzer 113, and as a result second reactor controller 120, can be improved by combining data from on-line process instrumentation arid mathematical transformed scores from NMR analyzer 113 as indicated in Figure 2
to provide improved estimation of melt flow rate. This improved estimate will result in improved controller performance and hence manufacturing performance. Empirical process models useful in the invention can be simple or complex. The superiority of the embodiments just discussed over simpler empirical models relying on linear regression of on-line scores and measured process variables is illustrated by Example 4, below.
Example 4
Scores from NMR data were obtained as in Example 2, above. The scores were linearly regressed with several process variables used in connection with the foregoing process models. The variables combined with the scores for regression included Al/Mg ratio, first reactor catalyst yield, second reactor incremental catalyst yield, first reactor offgas temperature, hydrogen to propylene ratio for the first reactor, hydrogen to propylene ratio for the second reactor, ethylene to propylene ratio for the second reactor, and percent rubber in the final impact copolymer product
Of these variables, Al/Mg ratio, first reactor offgas temperature, and second
reactor incremental catalyst yield were statistically insignificant when Ineariy regressed
with the NMR scores and used to predict melt flow rate in a manner consistent with
Example 2. An four scores obtained from analysis of the NMR data proved to be
statistically significant
Figure 6 is a plot of predicted melt flow rate vs. melt flow rate as measured in the lab for the calibration set of 425 data points. The data points represent predicted melt flow rate by a model developed using the liner regression approach described above that combines scores with process data (plotted as diamonds on Figures 6 and 7), predicted melt flow rate by a model developed in accordance with Example 2, above, which combines scores with a process model (plotted as squares on Figures 6 and 7), and laboratory measurements of melt flow rate under the conditions input to the process models for each data point (plotted as the solid line on Figure 6 and 7).


As can be seen by comparing the data points on Figure 6, the model developed by regressing scores and process data proved less accurate in predicting laboratory melt flow rate than did the method of Example 2 in accordance with our invention, where the model combined scores with a process model. The process data based model yielded 340 data points out of a total of 425 data points that were within ±20 peroent of" the laboratory value. This compared unfavorably with the predictions in accordance with our invention, which yielded 406 predicted melt flow rates of the total 425 data points that were within 120 percent of the measured laboratory value.
Figure 7 is a plot of laboratory melt flow rate and validation data for predicted melt flow rates using the models created in connection with Figure 6 in accordance with the methods of Example 2 and Example 4. The validation was done with 569 data points obtained during a twelve-month period of time after collection of the data used in model building. As can be seen from Figure 7, predictions of melt flow rate using model validation data confirm the improved accuracy of the method of Example 2 when compared to the method of Example 4. The model in accordance with the invention yielded 545 data points out of 569 data points that were within ±20 percent of the laboratory value. This compared favorably with the predictions of the model based on the method of Example 4, which yielded 199 data points out of 569 data points that were within ±20 percent of the laboratory value.
Quantitatively, the root mean square error of prediction for the process model, for the NMR data, for the combined approach in accordance with the method of Example 2, and for the approach in accordance with Example 4, are, respectively, 13.4%, 147.6%, 10.6% and 27.1%. Thus, the combined approach of Example 2 has the lowest root mean square error. This demonstrates the superiority of the method of Example 2 when compared to the process model alone, the NMR data alone, or the method of regressing on-line scores and process variables, as in Example 4. While the method of Example 2 is superior in this appllication, we believe the simpler empirical method of Example 4 can be advantageously appled in many circumstances, particularly where an approach using combined process model data and scores has not been implemented in any form.
While the foregoing Examples of the invention illustrate the use of the invention to produce improved estimates of melt flow rate of impact copolymers of polypropylene,


the invention may be used in a wide variety of chemical manufacturing applications, such as in the manufacture of a wide variety of chemicate including terephthallic add, polystyrene, polymers of propylene, or ethylene, or alpha-olefln monomers containing from- 4 to 20 carbon atoms, including combinations of two or more of the foregoing olefins or alpha olefins, polyvinyl chloride and polyethylene terephthalate, or combinations of any of the foregoing. Examples of olefinic polymers include polymers containing at least fifty weight percent of material originating as propylene monomer units and less than fifty weight percent (for example one, two, five or more weight percent) of material originating as monomers of a second olefin such ethylene, or polymers containing at least fifty weight percent of material originating as ethylene monomer units and less than fifty weight percent (for example one, two, five or more weight percent) of material originating as C4, C6 or C8 alpha-olefins.
There are only two requirements for our invention to be potentially applicable to a manufacturing application. First, there needs to be a process model (i.e., not just process data) that can be used to generate an estimate of a product or process property useful in the manufacture of the product Second, some type of on-fine instrumentation should be available which will generate data, which can be mathematically transformed to yield scores indicative of variabillity in the product or process property. One or more scores correlative to the product or process property can then be incorporated into the process model In a manner similar to those described herein. It should also be noted that combinations and/or transforms of scores (for example, cross products, reciprocals, squares, and other mathematical transforms of the scores, collectively referred to hereafter as transformed scores) may be used as the scores in the invention as described above if the use of the transformed scores yield improved predictive ability of the combined scores and process model in accordance with the invention.
As mentioned earlier, "coefficients" from multivariate curve fits-and "weights" or "hidden node outputs" from neural network analysis are analogous to scores in the Examples discussed above. Thus, Iflce scores, they can be used to mathematically transform and/or reduce the dimensionality of process analyzer data. When using coefficients or weights or hidden node outputs in the invention, they are used in the same manner as scores or their transforms or combinations are used in the Examples


above. As used in this appllcation and elsewhere in the art, scores, coefficients, neural network weights and hidden node outputs are referred to genetically as "gains".
Other specific examples where our invention can be employed include estimation of melt index or density for polyethylene, and estimates of the amount of alpha olefin comonomers Incorporated into a copolymer material, such as C4, C6 and/or C8 content in high density polyethylene, medium density polyethylene, and/or linear low density polyethylene, where the manufactured material typically contains at least fifty weight percent of material originating as ethylene monomer units.
Other applications for our invention will be apparent to those skilled In the art upon their reading of the descriptions contained herein. Our invention, therefore, is not limited to any particular manufacturing process, process model or type of analyzer, and the scope of our invention is not otherwise limited, except as set forth by the following
claims.

We Claim:
1. A method to obtain an improved estimate of a process or product property that is
useful in controlling a chemical manufacturing process, comprising:
(a) performing the chemical manufacturing process;
(b) employing a process model selected from the group consisting of empirical, semi-empirical and first principal model, to generate an estimate of at least one such property;
(c) employing an on-line analyzer selected from the group consisting of nuclear magnetic resonance, near infrared, infrared, ultraviolet-visible, x-ray fluorescence, ultrasonic and Raman spectrometers to generate spectroscopic data which can be transformed mathematically to yield scores indicative of variability in such property;
(d) mathematically transforming the aforesaid data obtained from the on-line analyzer in step (c) to obtain a set of statistically significant scores correlative to the property; and
(e) combining the scores obtained in step (d) with the process model to obtain a combined model; and
(f) optimizing combined model by a linear and non-linear regression analysis to generate an improved estimate of the property used in controlling the manufacturing process;
provided the process model is not derived from regression of directly measured process variables only with scores.
2. The method as claimed in claim 1, wherein the process model explicitly includes scores from mathematical transformation of the on-line analyzer data as terms in the process model equation.
3. The method as claimed in claim 1, wherein
(i) the process model generates a first estimate of the process or product property used in controlling the manufacturing process and then data from the on-line analyzer are mathematically transformed to obtain a set of


statistically significant scores correlative to the difference between the first estimate of the property used in controlling the manufacturing process and such data; and (ii) the scores obtained in step (i) are combined with the process model to generate an improved estimate of the property used in controlling the manufacturing process.
4. The method as claimed in claim 1, wherein the chemical manufacturing process is a polymerization manufacturing process.
5. The method as claimed in claim 4, wherein the process manufactures a polymeric material selected from the group consisting of homopolymers of propylene, homopolymers of ethylene, and copolymers of ethylene at least 50 weight percent of which is ethylene monomer units and copolymers of propylene at least 50 weight percent of which is propylene monomer units.
6. The method as claimed in claim 5, wherein a nuclear magnetic resonance spectrometer is used to obtain data which is mathematically transformed to obtain scores which are combined with a process model for the purpose of estimating a melt flow rate of polymeric material.
7. The method as claimed in claim 5, wherein the polymeric material is an impact copolymer comprising polymerized propylene and ethylene monomer units.
8. A method of controlling of controlling a chemical manufacturing process using the improved estimate of a process or product as claimed in any one of the preceding claims, wherein the method comprising a step of inputting the generated improved estimate into the process controller to control the process.
9. The method as claimed in claim 8, wherein the method comprising a step of varying the output of the controller in response to the inputted estimated property to cause the property of interest to move toward a desired value.


10. The method as claimed in claim 8, wherein there are one or more controllers selected from the group consisting of Proportional Integral Derivative (PID), fuzzy logic controllers, and combinations thereof.
11. The method as claimed in claim 8, wherein the controller is a multivariate predictive optimizer controller, and an optimizer controller is used in association with a predictive process model.
12. The method as claimed in claim 11, wherein the data collected comprise free induction decay curves obtained from a nuclear magnetic resonance spectrometer.
13. The method as claimed in claim 4, wherein the method manufactures a polymeric material comprising monomer units of butene, hexene, or octane alpha-olefins and at least fifty weight percent of ethylene monomer units.
14. The method as claimed in any one of the preceding claims wherein the scores are transformed scores.
Dated this 17th day of May, 2005
OMANA RAMAKRISHNAN
OF K & S PARTNERS
AGENT FOR THE APPLICANT(S)

Documents:

449-mumnp-2005-abstract(17-6-2008).doc

449-mumnp-2005-abstract(17-6-2008).pdf

449-mumnp-2005-cancelled pages(17-6-2008).pdf

449-mumnp-2005-claims(granted)-(17-6-2008).doc

449-mumnp-2005-claims(granted)-(17-6-2008).pdf

449-mumnp-2005-correspondence(ipo)-(28-7-2008).pdf

449-mumnp-2005-correspondence1(17-6-2008).pdf

449-mumnp-2005-correspondence2(20-12-2006).pdf

449-mumnp-2005-drawing(17-6-2008).pdf

449-mumnp-2005-form 1(17-6-2008).pdf

449-mumnp-2005-form 1(25-1-2007).pdf

449-mumnp-2005-form 13(17-6-2008).pdf

449-mumnp-2005-form 13(8-1-2007).pdf

449-mumnp-2005-form 18(18-10-2005).pdf

449-mumnp-2005-form 2(granted)-(17-6-2008).doc

449-mumnp-2005-form 2(granted)-(17-6-2008).pdf

449-mumnp-2005-form 26(14-2-2008).pdf

449-mumnp-2005-form 26(8-1-2007).pdf

449-mumnp-2005-form 3(17-5-2005).pdf

449-mumnp-2005-form 3(25-1-2007).pdf

449-mumnp-2005-form 3(6-12-2005).pdf

449-mumnp-2005-form 5(25-1-2007).pdf

449-mumnp-2005-form 6(14-2-2008).pdf

449-mumnp-2005-form-pct-isa-210(17-5-2005).pdf

449-mumnp-2005-other document(8-1-2007).pdf

449-mumnp-2005-petition under rule 137(15-1-2007).pdf

abstract1.jpg


Patent Number 222185
Indian Patent Application Number 449/MUMNP/2005
PG Journal Number 39/2008
Publication Date 26-Sep-2008
Grant Date 28-Jul-2008
Date of Filing 17-May-2005
Name of Patentee BP CORPORATION NORTH AMERICA INC.
Applicant Address 4101 WINFIELD ROAD, MAIL CODE 5 EAST, WARRENVILLE, IL 60555, U.S.A.
Inventors:
# Inventor's Name Inventor's Address
1 STEPHENS, WILLIAM, D 1003 MCCLURG DRIVE, BATAVIA, IL 60510, U.S.A.
2 VAIDYANATHAN ,RAMASWAMY APARTMENT 2A, 4125 CHEASAPEAKE DRIVE, AURORA, IL 60504, U.S.A.
3 HURLBUT, RONALD, S 605 ZAININGER AVENUE, NAPERVILLE, IL 60563, U.S.A.
4 VAN HARE, DAVID R 6505 NORTH NATIONAL DRIVE, PARKVILLE, MO 64152, U.S.A.
PCT International Classification Number N/A
PCT International Application Number PCT/US2003/034053
PCT International Filing date 2003-10-27
PCT Conventions:
# PCT Application Number Date of Convention Priority Country
1 10/281,624 2002-10-28 U.S.A.