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46results about How to "Overcoming the time-consuming and labor-intensive adjustment problems" patented technology

Parameter self-tuning method based on system error for MIMO partial format model-free controller

The invention discloses a parameter self-tuning method based on system error for an MIMO partial format model-free controller. A system error set is used as the input of a BP neutral network. The BP neutral network performs forward calculation, and the to-be-tuned parameters of an MIMO partial format model-free controller, such as penalty factor and step length factor, are output through an outputlayer. A control input vector of a controlled object is calculated by using a control algorithm of the MIMO partial format model-free controller. With the minimum value of a system error function asthe objective, system error back propagation calculation is carried out on the gradient information set of each to-be-tuned parameter through a gradient descent method according to the control input.The hidden layer weight coefficient and the output layer weight coefficient of the BP neutral network are updated online and in real time. Therefore, self-tuning of the parameters of the controller based on system error is realized. The parameter self-tuning method based on system error for an MIMO partial format model-free controller presented by the invention can overcome the difficulty of online controller parameter tuning, and has a good control effect on an MIMO system.
Owner:ZHEJIANG UNIV

Partial deviation information based parameter self-setting method of MIMO tight-format model-free controller

The invention discloses a partial deviation information based parameter self-setting method of an MIMO tight-format model-free controller. Partial deviation information serves as input of a BP neuralnetwork, the BP neural network carries out forward calculation and outputs to-be-set parameters, including an output-layer output punishing factor and a step factor, of the MIMO tight-format model-free controller, a control algorithm of the MIMO tight-format model-free controller is used to calculate a control input vector aimed at a controlled object, reverse spreading of system errors is calculated by taking minimizing a value of a system error function as the target, employing a gradient decrease method and controlling input aimed at a gradient information set of parameters to be set, a hidden-layer weight coefficient and an output-layer weight coefficient of the BP neural network are updated online in real time, and parameters of the controller are self-set on the basis of the partialdeviation information. The method can be used to overcome difficulty in online parameter setting of the controller, and has a good control effect for the MIMO system.
Owner:ZHEJIANG UNIV

System-error-based parameter self-setting method of SISO tight-format model-free controller

The invention discloses a system-error-based parameter self-setting method of a single-input-and-single-output (SISO) tight-format model-free controller. A system error and a function group are used as the input of a BP neural network. The BP neural network carries out forward calculation and outputs to-be-set parameters like a penalty factor and a step-size factor of an SISO tight-format model-free controller through an output layer. Calculation is carried out by using a control algorithm of the SISO tight-format model-free controller to obtain a control input for a controlled object; and with minimization of a value of a system error function as an objective, system error back-propagation calculation is carried out on gradient information of all to-be-set parameters by combining the control input based on a gradient descent method. A hidden layer weight coefficient and an output layer weight coefficient of the BP neural network are updated in real time in an online manner and system-error-based self setting of the parameters of the controller is realized. With the system-error-based parameter self-setting method, the setting problem of the parameters of the controller can be solved; and the good control effect is realized.
Owner:ZHEJIANG UNIV

Parameter self-tuning MISO (Multiple Input and Single Output) different-factor tight-format model-free control method

The invention discloses a parameter self-tuning MISO (Multiple Input and Single Output) different-factor tight-format model-free control method. In view of the limitation of the existing MISO tight-format model-free control method adopting the same factor structure, that is, the limitation of only adopting penalty factors with the same value and step-size factors with the same value for differentcontrol inputs in a control input vector at a k moment, an MISO tight-format model-free control method by adopting a different factor structure is provided, penalty factors with different values and / or step-size factors with different values can be adopted for different control inputs in the control input vector at the k moment, and the control problem of different characteristics of control channels existing in a complex object such as a strong nonlinear MISO system can be solved. A parameter self-tuning method is also provided to effectively overcome the problem that penalty factors and step-size factors need to consume time and labor for tuning. Compared with the existing control method, the method of the invention is higher in control accuracy, better in stability and wider in applicability.
Owner:ZHEJIANG UNIV

System error-based parameter self-setting method of MIMO full-format model-free controller

The invention discloses a system error-based parameter self-setting method of an MIMO full-format model-free controller. According to the invention, a system error set is used as input of a BP neuralnetwork, and the BP neural network performs forward calculation and outputs a penalty factor, a step factor and other MIMO full-format no-model controller to-be-set parameters through an output layer.The calculation is performed by adopting a control algorithm of the MIMO full-format model-free controller, and then a control input vector for a controlled object is obtained through calculation. The value of a system error function is minimized as a target, and the gradient descent method is adopted. The gradient information sets of all to-be-set parameters are respectively set according to thecontrol input and the reverse propagation calculation of the system error is performed. The hidden-layer weight coefficient of the BP neural network is updated on line in real time, and then the hidden-layer weight coefficient is outputted for realizing the parameter self-setting of the controller based on the system error. According to the invention, the self-setting method of the MIMO full-format model-free controller is proposed based on the system error. The problem of the parameter online setting of the controller can be effectively solved. The good control effect of the MIMO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of SISO full-format model free controller based on partial derivative information

The invention discloses a parameter self-tuning method of an SISO full-format model free controller based on partial derivative information. The partial derivative information is used as an input of aBP neural network, the BP neural network performs forward calculation and outputs a penalty factor, a step length factor and other parameters to be set of a controller through an output layer, a control algorithm of the controller is used to calculate and obtain control input for a controlled object, the gradient information of the control input for each parameter to be set is calculated, with aminimum value of a system error function as a target, a gradient descent method is used, combined with gradient information, the system error backpropagation calculation is carried out, a hidden layerweight coefficient and an output layer weight coefficient of the BP neural network are updated in real time in an online mode, and the gradient information is stored as the partial derivative information to be an input of the BP neural network of a next time. The invention provides the parameter self-tuning method of an SISO full-format model free controller based on partial derivative information, the tuning problem of the controller parameters can be effectively overcome, and a good control effect is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of MISO tight format model-free controller based on system errors

The invention discloses a parameter self-tuning method of a MISO tight format model-free controller based on system errors. The method includes: a system error set is adopted as input of a BP neural network, the BP neural network performs forward calculation and outputs to-be-tuned parameters of the MISO tight format model-free controller, such as a penalty factor and a step factor, through an output layer, a control input vector of a controlled object is obtained through calculation by employing a control algorithm of the MISO tight format model-free controller, the minimization of a value ofa system error function is regarded as the target, reverse propagation calculation of the system errors is performed aiming at a gradient information set of each to-be-tuned parameter with the combination of control input by employing a gradient descent method, weight coefficients of a hidden layer and the output layer of the BP neural network are updated in real time in an online manner, and parameter self-tuning of the controller based on the system errors is realized. According to the parameter self-tuning method of the MISO tight format model-free controller based on the system errors, the online tuning problem of the parameters of the controller can be effectively overcome, and a good control effect of the MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on partial derivative information for MIMO partial format model-free controller

The invention discloses a parameter self-tuning method based on partial derivative information for an MIMO partial format model-free controller. A partial derivative information set is used as the input of a BP neutral network. The BP neutral network performs forward calculation, and the to-be-tuned parameters of an MIMO partial format model-free controller, such as penalty factor and step lengthfactor, are output through an output layer. A control input vector of a controlled object is calculated by using a control algorithm of the MIMO partial format model-free controller. With the minimumvalue of a system error function as the objective, system error back propagation calculation is carried out on the gradient information set of each to-be-tuned parameter through a gradient descent method according to the control input. The hidden layer weight coefficient and the output layer weight coefficient of the BP neutral network are updated online and in real time. Therefore, self-tuning ofthe parameters of the controller based on partial derivative information is realized. The parameter self-tuning method based on partial derivative information for an MIMO partial format model-free controller presented by the invention can overcome the difficulty of online controller parameter tuning, and has a good control effect on an MIMO system.
Owner:ZHEJIANG UNIV

Partial deviation information based parameter self-setting method of SISO tight-format model-free controller

The invention discloses a partial deviation information based parameter self-setting method of an SISO tight-format model-free controller. Partial deviation information serves as input of a BP neuralnetwork, the BP neural network carries out forward calculation and outputs to-be-set parameters including an output-layer output punishing factor and a step factor, a control algorithm of the controller is used to calculate a control input vector aimed at a controlled object, reverse spreading of system errors is calculated by taking minimizing a value of a system error function as the target, employing a gradient decrease method and controlling input aimed at gradient information of parameters to be set, a hidden-layer weight coefficient and an output-layer weight coefficient of the BP neuralnetwork are updated online in real time,. and the gradient information is stored as partial deviation information and serves as input of the BP neural network in next time. The method can be used toovercome difficulty in parameter setting of the controller, and has a good control effect.
Owner:ZHEJIANG UNIV

Offset-guiding-information-based parameter self-setting method of SISO partial-format model-free controller

The invention discloses an offset-guiding-information-based parameter self-setting method of a single-input-and-single-output (SISO) partial-format model-free controller. Offset guiding information isused as an input of a BP neural network and the BP neural network carries out forward calculation and outputs to-be-set parameters like a penalty factor and a step-size factor of a controller throughan output layer. Calculation is carried out by using a control algorithm of the controller to obtain a control input for a controlled object; a control input is calculated; and for gradient information of all to-be-set parameters, with minimization of a value of a system error function as an objective, system error back-propagation calculation is carried out by combining the gradient informationbased on a gradient descent method. A hidden layer weight coefficient and an output layer weight coefficient of the BP neural network are updated in real time in an online manner; the gradient information is stored as offset guiding information and is used as an input of the BP neural network at a next time. With the offset-guiding-information-based parameter self-setting method, the setting problem of the parameters of the controller can be solved; and the good control effect is realized.
Owner:ZHEJIANG UNIV

System error-based parameter self-setting method of MISO full-format model-free controller

The invention discloses a system error-based parameter self-setting method of an MISO full-format model-free controller. According to the invention, a system error set is used as input of a BP neuralnetwork, and the BP neural network performs forward calculation and outputs a penalty factor, a step factor and other MISO full-format no-model controller to-be-set parameters through an output layer.The calculation is performed by adopting a control algorithm of the MISO full-format model-free controller, and then a control input vector for a controlled object is obtained through calculation. The value of a system error function is minimized as a target, and the gradient descent method is adopted. The gradient information sets of all to-be-set parameters are respectively set according to thecontrol input and the reverse propagation calculation of the system error is performed. The hidden-layer weight coefficient of the BP neural network is updated on line in real time, and then the hidden-layer weight coefficient is outputted for realizing the parameter self-setting of the controller based on the system error. According to the invention, the self-setting method of the MISO full-format model-free controller is proposed based on the system error. The problem of the parameter online setting of the controller can be effectively solved. The good control effect of the MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of MISO (Multiple Input and Single Output) partial format model-free controller based on partial derivative information

The invention discloses a parameter self-tuning method of an MISO (Multiple Input and Single Output) partial format model-free controller based on partial derivative information, which comprises the steps that a partial derivative information set is used to serve as input of a BP neural network, the BP neural network performs forward calculation and outputs parameters to be tuned such as a penaltyfactor and a step factor of the MISO partial format model-free controller through an output layer, a control input vector in allusion to a controlled object is calculated by adopting a control algorithm of the MISO partial format model-free controller, the minimization of the value of a system error function is taken as an objective, a gradient descent method is adopted to perform system error back propagation calculation respectively in allusion to a gradient information set of each parameter to be tuned by combining the control input, a hidden layer weight coefficient and an output layer weight coefficient of the BP neural network are updated in real time online, and parameter self-tuning of the controller based on the partial derivative information is realized. The parameter self-tuning method provided by the invention of the MISO partial format model-free controller based on the partial derivative information can effectively overcome a problem of online tuning for controller parameters and has a good control effect for the MISO system.
Owner:ZHEJIANG UNIV

Partial deviation information based parameter self-setting method of MIMO tight-format model-free controller

The invention discloses a partial deviation information based parameter self-setting method of an MIMO tight-format model-free controller. Partial deviation information serves as input of a BP neuralnetwork, the BP neural network carries out forward calculation and outputs to-be-set parameters, including an output-layer output punishing factor and a step factor, of the MIMO tight-format model-free controller, a control algorithm of the MIMO tight-format model-free controller is used to calculate a control input vector aimed at a controlled object, reverse spreading of system errors is calculated by taking minimizing a value of a system error function as the target, employing a gradient decrease method and controlling input aimed at a gradient information set of parameters to be set, a hidden-layer weight coefficient and an output-layer weight coefficient of the BP neural network are updated online in real time, and parameters of the controller are self-set on the basis of the partialdeviation information. The method can be used to overcome difficulty in online parameter setting of the controller, and has a good control effect for the MIMO system.
Owner:ZHEJIANG UNIV

MISO different-factor partial-format Model-free control method with self-tuning parameters

The invention discloses an MIMO different-factor partial-format model-free control method with self-tuning parameters, and aims at the limitation of a prior MIMO partial-format model-free control method adopting a same-factor structure, namely, aiming at the limitation that different control inputs in a control input vector at a k moment can only adopt penalty factors with the same numerical valueand step factors with the same numerical value, an MIMO partial-format model-free control method adopting a different-factor structure is provided, different control inputs in a control input vectorat the k moment can adopt penalty factors with different numerical values and step factors with different numerical values, the control problem of different characteristics of various control channelsin complex objects such as a strong nonlinear MIMO system can be solved. Meanwhile, a method of parameter self-tuning is provided to solve the problem that tuning of the penalty factors and step factors is time consuming and labor consuming. Compared with a prior control method, the method has higher control precision, better stability and wider applicability.
Owner:ZHEJIANG UNIV

Ensemble learning-based parameter self-setting method of SISO tight format model-free controller

The invention discloses an ensemble learning-based parameter self-setting method of an SISO tight format model-free controller. An ensemble learning algorithm comprises three individual algorithms, namely, a PSO algorithm, a BP neural network and a recurrent neural network. The system error is used as the input of the ensemble learning algorithm; online setting is carried out on the parameters ofthe SISO tight format model-free controller by the three individual algorithms, and three groups of temporary setting parameters are output; the results are input into the controller to calculate thecontrol input of a controlled object; and calculation is performed to obtain three groups of temporary system errors, the weight ratios of the individual algorithms are calculated by using a softmax function; and weighted summation is performed on the weight ratios and the temporary setting parameters, so that final to-be-set parameters of the SISO tight format model-free controller can be obtained, and parameter self-setting is realized. According to the ensemble learning-based parameter self-setting method of an SISO tight format model-free controller, the advantages of the different individual algorithms are combined, the algorithm generalization is enhanced, the online setting problem of controller parameters is solved, and a good control effect is achieved on an SISO system.
Owner:ZHEJIANG UNIV +1

Parameter self-tuning method of SISO tight format model-free controller based on Attention mechanism recurrent neural network

The invention discloses a parameter self-tuning method of an SISO tight format model-free controller based on an Attention mechanism recurrent neural network. The method includes: firstly, screening important information from an original input set by an Attention mechanism and calculating the input of a generated recurrent neural network, enabling the recurrent neural network to perform forward calculation to output SISO tight format model-free controller to-be-tuned parameters; performing calculation by a control algorithm to obtain control input of a controlled object, adopting a minimum system error function value as a target, using a gradient descent method, combining the gradient information of the control input for each to-be-tuned parameter, performing system error back propagationcalculation by using a chain rule, and updating the ownership coefficient of the recurrent neural network, thus realizing parameter self-setting of the controller based on the recurrent neural network. According to the parameter self-tuning method of the SISO tight format model-free controller based on the Attention mechanism recurrent neural network, important characteristics of input informationcan be captured, the problem of online tuning of controller parameters is solved, and a good control effect on an SISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on system error for miso compact model-free controller

The invention discloses a parameter self-tuning method of a MISO tight format model-free controller based on system errors. The method includes: a system error set is adopted as input of a BP neural network, the BP neural network performs forward calculation and outputs to-be-tuned parameters of the MISO tight format model-free controller, such as a penalty factor and a step factor, through an output layer, a control input vector of a controlled object is obtained through calculation by employing a control algorithm of the MISO tight format model-free controller, the minimization of a value ofa system error function is regarded as the target, reverse propagation calculation of the system errors is performed aiming at a gradient information set of each to-be-tuned parameter with the combination of control input by employing a gradient descent method, weight coefficients of a hidden layer and the output layer of the BP neural network are updated in real time in an online manner, and parameter self-tuning of the controller based on the system errors is realized. According to the parameter self-tuning method of the MISO tight format model-free controller based on the system errors, the online tuning problem of the parameters of the controller can be effectively overcome, and a good control effect of the MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on partial derivative information for siso full-format model-free controller

The invention discloses a parameter self-tuning method of an SISO full-format model free controller based on partial derivative information. The partial derivative information is used as an input of aBP neural network, the BP neural network performs forward calculation and outputs a penalty factor, a step length factor and other parameters to be set of a controller through an output layer, a control algorithm of the controller is used to calculate and obtain control input for a controlled object, the gradient information of the control input for each parameter to be set is calculated, with aminimum value of a system error function as a target, a gradient descent method is used, combined with gradient information, the system error backpropagation calculation is carried out, a hidden layerweight coefficient and an output layer weight coefficient of the BP neural network are updated in real time in an online mode, and the gradient information is stored as the partial derivative information to be an input of the BP neural network of a next time. The invention provides the parameter self-tuning method of an SISO full-format model free controller based on partial derivative information, the tuning problem of the controller parameters can be effectively overcome, and a good control effect is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on system error for mimo partial scheme model-free controller

The invention discloses a parameter self-tuning method based on system error for an MIMO partial format model-free controller. A system error set is used as the input of a BP neutral network. The BP neutral network performs forward calculation, and the to-be-tuned parameters of an MIMO partial format model-free controller, such as penalty factor and step length factor, are output through an outputlayer. A control input vector of a controlled object is calculated by using a control algorithm of the MIMO partial format model-free controller. With the minimum value of a system error function asthe objective, system error back propagation calculation is carried out on the gradient information set of each to-be-tuned parameter through a gradient descent method according to the control input.The hidden layer weight coefficient and the output layer weight coefficient of the BP neutral network are updated online and in real time. Therefore, self-tuning of the parameters of the controller based on system error is realized. The parameter self-tuning method based on system error for an MIMO partial format model-free controller presented by the invention can overcome the difficulty of online controller parameter tuning, and has a good control effect on an MIMO system.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of MISO partial format model-free controller based on system errors

The invention discloses a parameter self-tuning method of a MISO partial format model-free controller based on system errors. The method includes: a system error set is adopted as input of a BP neuralnetwork, the BP neural network performs forward calculation and outputs to-be-tuned parameters of the MISO partial format model-free controller, such as a penalty factor and a step factor, through anoutput layer, a control input vector of a controlled object is obtained through calculation by employing a control algorithm of the MISO partial format model-free controller, the minimization of a value of a system error function is regarded as the target, reverse propagation calculation of the system errors is performed aiming at a gradient information set of each to-be-tuned parameter with thecombination of control input by employing a gradient descent method, weight coefficients of a hidden layer and the output layer of the BP neural network are updated in real time in an online manner, and parameter self-tuning of the controller based on the system errors is realized. According to the parameter self-tuning method of the MISO partial format model-free controller based on the system errors, the online tuning problem of the parameters of the controller can be effectively overcome, and a good control effect of the MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of mimo partial scheme model-free controller based on partial derivative information

The invention discloses a parameter self-tuning method based on partial derivative information for an MIMO partial format model-free controller. A partial derivative information set is used as the input of a BP neutral network. The BP neutral network performs forward calculation, and the to-be-tuned parameters of an MIMO partial format model-free controller, such as penalty factor and step lengthfactor, are output through an output layer. A control input vector of a controlled object is calculated by using a control algorithm of the MIMO partial format model-free controller. With the minimumvalue of a system error function as the objective, system error back propagation calculation is carried out on the gradient information set of each to-be-tuned parameter through a gradient descent method according to the control input. The hidden layer weight coefficient and the output layer weight coefficient of the BP neutral network are updated online and in real time. Therefore, self-tuning ofthe parameters of the controller based on partial derivative information is realized. The parameter self-tuning method based on partial derivative information for an MIMO partial format model-free controller presented by the invention can overcome the difficulty of online controller parameter tuning, and has a good control effect on an MIMO system.
Owner:ZHEJIANG UNIV

MISO hetero-factor full-format model-free control method with parameter self-tuning

The invention discloses a MISO hetero-factor full-format model-free control method with parameter self-tuning. The MISO hetero-factor full-format model-free control method with parameter self-tuning aims at the limitation of an existing MISO full-format model-free control method with a same factor structure, namely, the limitation comprises that penalty factors with a same numerical value and stepsize factors with a same numerical value can only be used for different control inputs in the control input vector at k time, the MISO full-format model-free control method based on a hetero-factor structure is proposed. At the k time, penalty factors with different numerical values and / or step size factors with different numerical values can be used for different control inputs in a control input vector, the control difficult problems of different control channel characteristics in complex objects such as strongly nonlinear MISO systems can be solved, and meanwhile, the method of parameter self-tuning is proposed to effectively solve the difficult problem of time-consuming and laborious tuning of the penalty factors and the step size factors. Compared with an existing control method, theMISO hetero-factor full-format model-free control method with parameter self-tuning has higher control accuracy, better stability and wider applicability.
Owner:ZHEJIANG UNIV

Parameter self-tuning method of miso full-format model-free controller based on partial derivative information

The invention discloses a parameter self-setting method of a MISO full format model-free controller based on deviation information. The parameter self-setting method includes the steps of using deviation information as the input of a BP neural network, the BP neural network performing forward calculation and outputting a penalty factor, a step factor and other to-be-set parameters of an MISO fullformat no-model controller through an output layer, calculating to obtain a control input vector for a controlled object by adopting a control algorithm of the MISO full format no-model controller, conducting system error reverse propagation calculation for gradient information sets of all the to-be-set parameters by using a gradient descent method in combination with control output with minimization of the value of a system error function as a target, on-line updating the hidden layer weight coefficient of the BP neural network in real time, outputting the layer weight coefficient, and realizing the self-setting of parameters based on the deviation information. The parameter self-setting method can effectively overcome the online setting difficulty of the parameters of a controller, and agood control effect on an MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on ensemble learning for siso compact model-free controller

The invention discloses a parameter self-tuning method of a SISO compact format model-free controller based on integrated learning. The integrated learning algorithm includes three individual algorithms of PSO algorithm, BP neural network and cyclic neural network. Taking the system error as the input of the integrated learning algorithm, three individual algorithms are firstly used to tune the parameters of the SISO compact model-free controller online and output three sets of temporary tuning parameters, and input the results into the controller to calculate the control of the controlled object. Input, calculate three groups of temporary system errors and use the softmax function to calculate the weight ratio of individual algorithms, weight the weight ratio and the temporary tuning parameters to be summed as the final SISO compact model-free controller parameters to be tuned, and realize parameter self-tuning. The SISO compact format model-free controller proposed by the present invention is based on the parameter self-tuning method of integrated learning, combines the advantages of different individual algorithms, enhances the generalization of the algorithm, overcomes the problem of online tuning of controller parameters, and has a good control effect on the SISO system.
Owner:ZHEJIANG UNIV +1

Parameter self-tuning method of siso partial scheme model-free controller based on partial derivative information

The invention discloses an offset-guiding-information-based parameter self-setting method of a single-input-and-single-output (SISO) partial-format model-free controller. Offset guiding information isused as an input of a BP neural network and the BP neural network carries out forward calculation and outputs to-be-set parameters like a penalty factor and a step-size factor of a controller throughan output layer. Calculation is carried out by using a control algorithm of the controller to obtain a control input for a controlled object; a control input is calculated; and for gradient information of all to-be-set parameters, with minimization of a value of a system error function as an objective, system error back-propagation calculation is carried out by combining the gradient informationbased on a gradient descent method. A hidden layer weight coefficient and an output layer weight coefficient of the BP neural network are updated in real time in an online manner; the gradient information is stored as offset guiding information and is used as an input of the BP neural network at a next time. With the offset-guiding-information-based parameter self-setting method, the setting problem of the parameters of the controller can be solved; and the good control effect is realized.
Owner:ZHEJIANG UNIV

Parameter self-setting method of MISO full format model-free controller based on deviation information

The invention discloses a parameter self-setting method of a MISO full format model-free controller based on deviation information. The parameter self-setting method includes the steps of using deviation information as the input of a BP neural network, the BP neural network performing forward calculation and outputting a penalty factor, a step factor and other to-be-set parameters of an MISO fullformat no-model controller through an output layer, calculating to obtain a control input vector for a controlled object by adopting a control algorithm of the MISO full format no-model controller, conducting system error reverse propagation calculation for gradient information sets of all the to-be-set parameters by using a gradient descent method in combination with control output with minimization of the value of a system error function as a target, on-line updating the hidden layer weight coefficient of the BP neural network in real time, outputting the layer weight coefficient, and realizing the self-setting of parameters based on the deviation information. The parameter self-setting method can effectively overcome the online setting difficulty of the parameters of a controller, and agood control effect on an MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on partial derivative information for miso compact model-free controller

The invention discloses a parameter self-setting method of a MISO tight format model-free controller based on deviation information. The parameter self-setting method includes the steps of using deviation information as the input of a BP neural network, the BP neural network performing forward calculation and outputting a penalty factor, a step factor and other to-be-set parameters of an MISO tight format no-model controller through an output layer, calculating to obtain a control input vector for a controlled object by adopting a control algorithm of the MISO tight format no-model controller,conducting system error reverse propagation calculation for gradient information sets of all the to-be-set parameters by using a gradient descent method in combination with control output with minimizing the value of the system error function as a target, on-line updating the hidden layer weight coefficient of the BP neural network in real time, outputting the layer weight coefficient, and realizing the self-setting of parameters based on the deviation information. The parameter self-setting method can effectively overcome the online setting difficulty of the parameters of a controller, and agood control effect on an MISO system is achieved.
Owner:ZHEJIANG UNIV

Parameter self-tuning method based on system error for siso full-format model-free controller

The invention discloses a system error-based parameter self-tuning method for an SISO full format model free controller. System errors and a function group thereof are used as input for a BP neutral network, and forward calculating operation is performed via the BP neutral network; SISO full format model free controller parameters to be tuned such as penalty factors, step length factors and the like are output via an output layer; a control algorithm for the SISO full format model free controller is adopted for calculating control input of a controlled object, an aim of the method is to minimizing a value of a system error function, and a gradient descent method is adopted for conducting system error back propagation calculating operation on gradient information of each parameter to be tuned based on control input; a hidden layer weight coefficient and an output layer weight coefficient of the BP neutral network are updated online in real time, and therefore system error-based parameter self-tuning for the controller is realized. The system error-based parameter self-tuning method for the SISO full format model free controller put forward in the invention can be used for effectively solving difficult problems of tuning controller parameters, and good control effects can be exerted.
Owner:ZHEJIANG UNIV
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