CN103838142A - Propylene polymerization production process optimal soft measurement system and method based on mixed optimizing - Google Patents

Propylene polymerization production process optimal soft measurement system and method based on mixed optimizing Download PDF

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CN103838142A
CN103838142A CN201310658804.6A CN201310658804A CN103838142A CN 103838142 A CN103838142 A CN 103838142A CN 201310658804 A CN201310658804 A CN 201310658804A CN 103838142 A CN103838142 A CN 103838142A
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CN103838142B (en
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刘兴高
李九宝
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Zhejiang University ZJU
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Abstract

The invention discloses a propylene polymerization production process optimal soft measurement system based on mixed optimizing. The system includes a propylene polymerization production process, an on-site intelligent instrument, a control station, a DCS database storing data, an optimal soft measurement system body based on mixed optimizing and a melt index soft measurement value display instrument. The on-site intelligent instrument and the control station are connected with the propylene polymerization production process and the DCS database, and the optimal soft measurement system body is connected with the DCS database and the soft measurement value display instrument. The optimal soft measurement system based on mixed optimizing comprises a model updating module, a data pre-processing module, a PCA principal component analysis module, a neural network model module and a mixed optimizing optimization module. The invention further provides a soft measurement method based on the soft measurement system. According to the propylene polymerization production process optimal soft measurement system and method based on mixed optimizing, on-site measurement is achieved, on-site parameter optimization is achieved, the soft measurement speed is high, the models are automatically updated, the anti-interference capacity is high, and precision is high.

Description

Based on propylene polymerization production process optimal soft measuring system and the method for mixing optimizing
Technical field
The present invention relates to a kind of optimum soft measuring system and method, specifically a kind of propylene polymerization production process optimal soft measuring system and method based on mixing optimizing.
Background technology
Polypropylene is a kind of thermoplastic resin being made by propylene polymerization, the most important downstream product of propylene, and 50% of World Propylene, 65% of China's propylene is all for polypropylene processed, is one of five large general-purpose plastics, closely related with our daily life.Polypropylene is fastest-rising interchangeable heat plastic resin in the world, and total amount is only only second to tygon and Polyvinylchloride.For making China's polypropylene product there is the market competitiveness, exploitation rigidity, toughness, crushing-resistant copolymerization product, random copolymerization product, BOPP and CPP film material, fiber, nonwoven cloth that mobility balance is good, and exploitation polypropylene is in the application of automobile and field of household appliances, is all important from now on research topic.
Melting index is that polypropylene product is determined one of important quality index of product grade, it has determined the different purposes of product, be an important step of production quality control during polypropylene is produced to the measurement of melting index, to producing and scientific research, have very important effect and directive significance.
But; the on-line analysis of melting index is measured and is difficult at present accomplish; being the shortage of online melting index analyser on the one hand, is that existing in-line analyzer is measured the inaccurate difficulty in caused use that even cannot normally use owing to often can stopping up on the other hand.Therefore, the measurement of MI in commercial production at present, is mainly to obtain by hand sampling, off-line assay, and can only analyze once for general every 2-4 hour, time lag is large, and the quality control of producing to propylene polymerization has brought difficulty, becomes a bottleneck problem being badly in need of solution in production.The online soft sensor system and method research of polypropylene melt index, thus forward position and the focus of academia and industry member become.
Summary of the invention
In order to overcome, the measuring accuracy of current existing propylene polymerization production process is not high, the deficiency of the impact that is subject to human factor, the object of the present invention is to provide a kind of on-line measurement, on-line parameter optimization, soft measuring speed is fast, model upgrades automatically, antijamming capability is strong, precision is high based on mix optimizing the optimum soft measuring system of propylene polymerization production process melting index and method.
The technical solution adopted for the present invention to solve the technical problems is:
A kind of based on mix optimizing propylene polymerization production process optimal soft measuring system, comprise propylene polymerization production process, for measuring the field intelligent instrument of easy survey variable, for measuring the control station of performance variable, the DCS database of store data, the soft measuring system of optimum and melt index flexible based on mixing optimizing are measured display instrument, described field intelligent instrument, control station is connected with propylene polymerization production process, described field intelligent instrument, control station is connected with DCS database, described DCS database is connected with the input end of the soft measuring system of optimum based on mixing optimizing, the output terminal of the described soft measuring system of optimum based on mixing optimizing is connected with melt index flexible measurement display instrument, it is characterized in that: the described soft measuring system of optimum based on mixing optimizing comprises: (1), data preprocessing module, for carrying out pre-service from the mode input variable of DCS database input, to input variable centralization, deduct the mean value of variable, be normalized again, divided by the constant interval of variate-value,
(2), PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realize by input variable being applied to linear transformation, be that major component is obtained by C=MU, wherein M is input variable, and C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix;
(3), neural network model module, for adopting RBF neural network, minimized to be input to a kind of nonlinear of output by error function, in mapping, keep topological invariance;
(4), mix optimizing optimize module, for adopting the optimization module based on HPSO-SA algorithm to be optimized neural network, comprising:
(4.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, x 2..., p n) and global optimum p g;
(4.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(4.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
As preferred a kind of scheme, described based on mix optimizing optimal soft measurement model also comprise: model modification module, for the online updating of model, will regularly off-line analysis data be input in training set, renewal neural network model.
As preferred another scheme: in PCA principal component analysis (PCA) module, PCA method realizes the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improves the performance of model.
Based on mix optimizing the flexible measurement method realized of the optimum soft measuring system of polypropylene production process, described flexible measurement method specific implementation step is as follows:
(1) to propylene polymerization production process object, according to industrial analysis and Operations Analyst, to select performance variable and easily survey the input of variable as model, performance variable and easily survey variable are obtained by DCS database;
(2) sample data is carried out to pre-service, to input variable centralization, deduct the mean value of variable; Be normalized again, divided by the constant interval of variate-value;
(3) PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realizes by input variable being applied to a linear transformation, be that major component is obtained by C=xU, wherein x is input variable, and P is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by x=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, x=CU t+ E, wherein E is residual matrix;
(4) set up initial neural network model based on mode input, output data, adopt RBF neural network, complete a kind of nonlinear that is input to output by error minimize, in mapping, keep topological invariance;
(5) adopt the optimization module based on HPSO-SA algorithm to be optimized neural network, comprising:
(5.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(5.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(5.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
As preferred a kind of scheme, described flexible measurement method also comprises: regularly off-line analysis data is input in training set, upgrades neural network model.
Further, in described step (3), adopt PCA principal component analytical method to realize the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improve the performance of model.
Technical conceive of the present invention is: the important quality index melting index of propylene polymerization production process is carried out to online optimum soft measurement, overcome that existing polypropylene melt index measurement instrument measuring accuracy is not high, the deficiency of the impact that is subject to human factor, introduce mixing optimizing optimization module neural network parameter and structure are carried out to Automatic Optimal, do not need artificial experience or repeatedly test and adjust neural network, thereby obtaining having the soft measuring system of online optimum of optimum melt index flexible measurement function.
Beneficial effect of the present invention is mainly manifested in: 1, on-line measurement; 2, on-line parameter Automatic Optimal; 3, soft measuring speed is fast; 4, model upgrades automatically; 5, antijamming capability is strong; 6, precision is high.
Accompanying drawing explanation
Fig. 1 be based on mix optimizing propylene polymerization production process optimal soft measuring system and the basic structure schematic diagram of method;
Fig. 2 is the soft measuring system structural representation of optimum based on mixing optimizing;
Fig. 3 is propylene polymerization production process Hypol explained hereafter process flow diagram.
Embodiment
Below in conjunction with accompanying drawing, the present invention is described further.The embodiment of the present invention is used for the present invention that explains, rather than limits the invention, and in the protection domain of spirit of the present invention and claim, any modification and change that the present invention is made, all fall into protection scope of the present invention.
Embodiment 1
1. with reference to Fig. 1, Fig. 2 and Fig. 3, a kind of based on mix optimizing propylene polymerization production process optimal soft measuring system, comprise propylene polymerization production process 1, for measuring the field intelligent instrument 2 of easy survey variable, for measuring the control station 3 of performance variable, the DCS database 4 of store data, based on the soft measuring system 5 of optimum and the melt index flexible measured value display instrument 6 that mix optimizing, described field intelligent instrument 2, control station 3 is connected with propylene polymerization production process 1, described field intelligent instrument 2, control station 3 is connected with DCS database 4, described DCS database 4 is connected with the input end of the soft measuring system 5 of optimum based on mixing optimizing, the output terminal of the described soft measuring system 5 of optimum based on mixing optimizing is connected with melt index flexible measured value display instrument 6, described based on mix optimizing the soft measuring system of optimum comprise:
(1), data preprocessing module, for the mode input variable from DCS database input is carried out to pre-service, to input variable centralization, deduct the mean value of variable; Be normalized again, divided by the constant interval of variate-value;
(2), PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realize by input variable being applied to linear transformation, be that major component is obtained by C=MU, wherein M is input variable, and C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix;
(3), neural network model module, for adopting RBF neural network, minimized to be input to a kind of nonlinear of output by error function, in mapping, keep topological invariance;
(4), mix optimizing optimize module, for adopting the optimization module based on HPSO-SA algorithm to be optimized neural network, comprising:
(4.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(4.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(4.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
The described soft measuring system of optimum based on mixing optimizing also comprises: model modification module, for the online updating of model, will regularly off-line analysis data be input in training set, and upgrade neural network model.
In PCA principal component analysis (PCA) module, PCA method realizes the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improves the performance of model.
2. propylene polymerization production process process flow diagram as shown in Figure 3, according to reaction mechanism and flow process analysis, consider each factor in polypropylene production process, melting index being exerted an influence, get nine performance variables conventional in actual production process and easily survey variable as mode input variable, have: three bursts of propylene feed flow rates, major catalyst flow rate, cocatalyst flow rate, temperature in the kettle, pressure, liquid level, hydrogen volume concentration in still.
The optimum soft measuring system required mode input variable of table 1 based on mixing optimizing
Figure BDA0000432564270000061
Table 1 has been listed 9 mode input variablees inputting as the soft measuring system 5 of optimum based on mixing optimizing, is respectively hydrogen volume concentration (X in pressure (p) in temperature in the kettle (T), still, the interior liquid level (L) of still, still v), 3 bursts of propylene feed flow rates (first gang of propylene feed flow rate f1, second gang of propylene feed flow rate f2, the 3rd gang of propylene feed flow rate f3), 2 bursts of catalyst charge flow rates (major catalyst flow rate f4, cocatalyst flow rate f5).Polyreaction in reactor is that reaction mass mixes rear participation reaction repeatedly, and therefore mode input variable relates to the mean value in front some moment of process variable employing of material.The mean value of last hour for data acquisition in this example.Melting index off-line laboratory values is as the output variable of the soft measuring system 5 of optimum based on mixing optimizing.Obtain by hand sampling, off-line assay, within every 4 hours, analyze and gather once.
Field intelligent instrument 2 and control station 3 are connected with propylene polymerization production process 1, are connected with DCS database 4; Optimum soft measuring system 5 is connected with DCS database 4 and soft measured value display instrument 6.Field intelligent instrument 2 is measured the easy survey variable of propylene polymerization production object, will easily survey variable and be transferred to DCS database 4; Control station 3 is controlled the performance variable of propylene polymerization production object, and performance variable is transferred to DCS database 4.In DCS database 4, the variable data of record is as the input of the soft measuring system 5 of optimum based on mixing optimizing, and soft measured value display instrument 6 is for showing the output of the soft measuring system 5 of optimum based on mixing optimizing, i.e. soft measured value.
Based on the soft measuring system 5 of optimum of mixing optimizing, comprising:
(1) data preprocessing module 7, for mode input is carried out to pre-service, i.e. centralization and normalization.To input variable centralization, deduct exactly the mean value of variable, making variable is the variable of zero-mean, thus shortcut calculation; To input variable normalization, be exactly the constant interval divided by input variable value, be that the value of variable is fallen within-0.5~0.5, further simplify.
(2) PCA principal component analysis (PCA) module 8, for to input variable prewhitening, processing is variable decorrelation, input variable is applied to a linear transformation, make between each component of variable after conversion uncorrelated mutually, its covariance matrix is unit matrix simultaneously, and major component is obtained by C=MU, and wherein M is input variable, C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix.
(3) neural network model module 9, adopts RBF neural network, and multilayer feedforward neural network is conventionally made up of input layer, hidden layer and output layer in network structure.On network characterization main manifestations for both without neuronic interconnected in layer, also without the anti-contact of interlayer.This network is in fact a kind of static network, and its output is the function of existing input, and irrelevant in inputing or outputing of past and future.RBF neural network model has an input layer, an output layer and a hidden layer.Can prove in theory, RBF neural network can be approached arbitrarily nonlinear system.RBF neural network BP training algorithm has minimized to be input to a kind of nonlinear of output by error function, keep topological invariance in mapping.
(4) mix optimizing and optimize module 10: adopt based on mixing optimizing optimization module neural network is optimized, by mix optimizing powerful global optimizing ability come input and the hidden layer structure of optimization neural network, and carry out neural network learning with this, thereby set up the optimum soft measuring system of RBF neural network of the optimization of the mixing optimizing of propylene polymerization melting index.Specific implementation step is as follows:
(4.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(4.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(4.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
(5) model modification module 11, for the online updating of model, is regularly input to off-line analysis data in training set, upgrades neural network model.
Embodiment 2
1. with reference to Fig. 1, Fig. 2 and Fig. 3, a kind of based on mix optimizing propylene polymerization production process optimal soft measuring method comprise the following steps:
(1) to propylene polymerization production process object, according to industrial analysis and Operations Analyst, to select performance variable and easily survey the input of variable as model, performance variable and easily survey variable are obtained by DCS database;
(2) sample data is carried out to pre-service, to input variable centralization, deduct the mean value of variable; Be normalized again, divided by the constant interval of variate-value;
(3) PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realizes by input variable being applied to a linear transformation, be that major component is obtained by C=MU, wherein M is input variable, and C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix;
(4) set up initial neural network model based on mode input, output data, adopt RBF neural network, complete a kind of nonlinear that is input to output by error minimize, in mapping, keep topological invariance;
(5) adopt the optimization module based on HPSO-SA algorithm to be optimized neural network, comprising:
(5.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(5.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(5.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
Described flexible measurement method also comprises: regularly off-line analysis data is input in training set, upgrades neural network model.
Further, in described step (3), adopt PCA principal component analytical method to realize the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improve the performance of model.
2. the concrete implementation step of the method for the present embodiment is as follows:
Step 1: to propylene polymerization production process object 1, according to industrial analysis and Operations Analyst, select performance variable and easily survey the input of variable as model.
Step 2: sample data is carried out to pre-service, completed by data preprocessing module 7.
Step 3: to carrying out principal component analysis (PCA) through pretreated data, completed by PCA principal component analysis (PCA) module 8.
Step 4: set up initial neural network model 9 based on mode input, output.Input data obtain as described in step 1, and output data are obtained by off-line chemical examination.
Step 5: input and the hidden layer structure of being optimized initial neural network 9 by mixing optimizing optimization module 10.
Step 6: model modification module 11 is regularly input to off-line analysis data in training set, upgrades neural network model, and the soft measuring system 5 of optimum based on mixing optimizing has been set up.
Step 7: the real-time model input variable data that the soft measuring system 5 of the optimum based on the optimizing of HPSO-SA algorithm establishing transmits based on DCS database 4 are carried out the soft measurement of optimum based on the optimizing of HPSO-SA algorithm to the melting index of propylene polymerization production process 1.
Step 8: melt index flexible is measured the output that display instrument 6 shows the soft measuring system 5 of optimum based on mixing optimizing, completes the demonstration of the soft measurement of optimum to propylene polymerization production process melting index.

Claims (2)

1. the propylene polymerization production process optimal soft measuring system based on mixing optimizing, comprise propylene polymerization production process, for measuring the field intelligent instrument of easy survey variable, for measuring the control station of performance variable, the DCS database of store data, the soft measuring system of optimum and melt index flexible based on mixing optimizing are measured display instrument, described field intelligent instrument, control station is connected with propylene polymerization production process, described field intelligent instrument, control station is connected with DCS database, described DCS database with based on mix optimizing the input end of optimal soft measurement model be connected, the output terminal of the described soft measuring system of optimum based on mixing optimizing is connected with melt index flexible measurement display instrument, it is characterized in that: the described soft measuring system of optimum based on mixing optimizing comprises:
(1), data preprocessing module, for the mode input variable from DCS database input is carried out to pre-service, to input variable centralization, deduct the mean value of variable; Be normalized again, divided by the constant interval of variate-value;
(2), PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realize by input variable being applied to linear transformation, be that major component is obtained by C=MU, wherein M is input variable, and C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix;
(3), neural network model module, for adopting RBF neural network, minimized to be input to a kind of nonlinear of output by error function, in mapping, keep topological invariance;
(4), mix optimizing and optimize module, for adopting optimization module based on population-simulated annealing (HPSO-SA) hybrid algorithm to be optimized neural network, comprising:
(4.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(4.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(4.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
The described soft measuring system of optimum based on mixing optimizing also comprises: model modification module, for the online updating of model, regularly off-line analysis data is input in training set, and upgrade neural network model.
Described based on mix optimizing propylene polymerization production process optimal soft measuring system, it is characterized in that: in PCA principal component analysis (PCA) module, PCA method realizes the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improves the performance of model.
With as claimed in claim 1 based on mix optimizing the flexible measurement method realized of the optimum soft measuring system of polypropylene production process, it is characterized in that: described flexible measurement method specific implementation step is as follows:
(4.1) to propylene polymerization production process object, according to industrial analysis and Operations Analyst, select performance variable and easily survey the input of variable as model, general operation variable and easily survey variable are got temperature, pressure, liquid level, hydrogen gas phase percentage, 3 strands of propylene feed flow velocitys and 2 strands of these variablees of catalyst charge flow velocity, are obtained by DCS database;
(4.2) sample data is carried out to pre-service, to input variable centralization, deduct the mean value of variable; Be normalized again, divided by the constant interval of variate-value;
(4.3) PCA principal component analysis (PCA) module, for input variable prewhitening is processed and variable decorrelation, realizes by input variable being applied to a linear transformation, be that major component is obtained by C=MU, wherein M is input variable, and C is principal component scores matrix, and U is loading matrix.If raw data is reconstructed, can be by M=CU tcalculate the wherein transposition of subscript T representing matrix.In the time that the major component number of choosing is less than the variable number of input variable, M=CU t+ E, wherein E is residual matrix;
(4.4) set up initial neural network model based on mode input, output data, adopt RBF neural network, complete a kind of nonlinear that is input to output by error minimize, in mapping, keep topological invariance;
(4.5) adopt the optimization module based on HPSO-SA algorithm to be optimized neural network, comprising:
(4.5.1) algorithm initialization, constructs the initial X=(x of particle colony according to RBF neural network structure to be optimized 1, x 2..., x n), initial movable speed V=(v 1, v 2..., v n), initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p g;
(4.5.2) carry out HPSO algorithm by following formula, allow population restrain:
x k + 1 i = x k i + v k + 1 i - - - ( 1 )
v k + 1 i = w k v k i + c 1 r 1 ( p k i - x k i ) + c 2 r 2 ( p l g - x k i ) - - - ( 2 )
The position vector that in formula, x is particle, the sequence number that i is particle, k is algorithm iteration algebraically, and v is particle rapidity, and p represents initial each particle successive dynasties optimal value OP=(p 1, p 2..., p n) and global optimum p goptimal value set.V k ibe the speed of i particle in the k time iteration algebraically; x k ithe position vector of i particle in the k time iteration algebraically; p k ibe the successive dynasties optimal location of i particle in the k time iteration algebraically, p ibe the successive dynasties optimum solution of i particle, w is speed weight coefficient, c 1, c 2be respectively the attraction coefficient of particle successive dynasties optimum solution and group optimal solution, r 1, r 2be respectively random number.
(4.5.3), in the time that population converges to suitable degree, start the set (best of the successive dynasties optimum solution composition to each particle 1, best 2..., best n) carry out SA algorithm, the optimum solution obtaining is returned as the end product of algorithm.
Described flexible measurement method also comprises: regularly off-line analysis data is input in training set, upgrades neural network model.
Described flexible measurement method, is characterized in that: in described step (4.3), adopt PCA principal component analytical method to realize the prewhitening processing of input variable, can simplify the input variable of neural network model, and then improve the performance of model.
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