Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller
Abstract Grain drying control is a challenging task owing to the complex heat and mass exchange process. To precisely control the outlet grain moisture content (MC) of a continuous mixed‐flow grain dryer, in this paper, we proposed a genetically optimized inverse model proportional–integral–derivati...
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doaj-8f9c0baf88f2468e887e2d4f7a1e26612020-11-25T00:28:41ZengWileyFood Science & Nutrition2048-71772020-02-018280581910.1002/fsn3.1340Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controllerAini Dai0Xiaoguang Zhou1Zidan Wu2Science and Information College Qingdao Agricultural University Qingdao ChinaSchool of Economics and Management Minjiang University Fuzhou ChinaSchool of Automation Beijing University of Posts and Telecommunications Beijing ChinaAbstract Grain drying control is a challenging task owing to the complex heat and mass exchange process. To precisely control the outlet grain moisture content (MC) of a continuous mixed‐flow grain dryer, in this paper, we proposed a genetically optimized inverse model proportional–integral–derivative (PID) controller based on support vector machines for regression algorithm which is named the GO‐SVR‐IMCPID controller. The structure of the GO‐SVR‐IMCPID controller consists of a genetic optimization algorithm, an indirect inverse model predictive controller, and a PID controller. In addition, to verify the control performances of the proposed controller in the simulation study, we have established a nonlinear mathematical model for the mixed‐flow grain dryer to represent the nonlinear grain drying process. Finally, the control performance and the robustness of the GO‐SVR‐IMCPID controller were simulated and compared with the other controllers. By the simulation results, it is shown that this proposed algorithm can track the target value precisely and has fewer steady errors and strong ability of anti‐interference. Furthermore, it has further confirmed the superiority of the proposed grain drying controller by comparing it with the other controllers.https://doi.org/10.1002/fsn3.1340genetic algorithmgrain dryingindirect inverse model controllersupport vector regression |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Aini Dai Xiaoguang Zhou Zidan Wu |
spellingShingle |
Aini Dai Xiaoguang Zhou Zidan Wu Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller Food Science & Nutrition genetic algorithm grain drying indirect inverse model controller support vector regression |
author_facet |
Aini Dai Xiaoguang Zhou Zidan Wu |
author_sort |
Aini Dai |
title |
Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller |
title_short |
Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller |
title_full |
Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller |
title_fullStr |
Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller |
title_full_unstemmed |
Design of an intelligent controller for a grain dryer: A support vector machines for regression inverse model proportional–integral–derivative controller |
title_sort |
design of an intelligent controller for a grain dryer: a support vector machines for regression inverse model proportional–integral–derivative controller |
publisher |
Wiley |
series |
Food Science & Nutrition |
issn |
2048-7177 |
publishDate |
2020-02-01 |
description |
Abstract Grain drying control is a challenging task owing to the complex heat and mass exchange process. To precisely control the outlet grain moisture content (MC) of a continuous mixed‐flow grain dryer, in this paper, we proposed a genetically optimized inverse model proportional–integral–derivative (PID) controller based on support vector machines for regression algorithm which is named the GO‐SVR‐IMCPID controller. The structure of the GO‐SVR‐IMCPID controller consists of a genetic optimization algorithm, an indirect inverse model predictive controller, and a PID controller. In addition, to verify the control performances of the proposed controller in the simulation study, we have established a nonlinear mathematical model for the mixed‐flow grain dryer to represent the nonlinear grain drying process. Finally, the control performance and the robustness of the GO‐SVR‐IMCPID controller were simulated and compared with the other controllers. By the simulation results, it is shown that this proposed algorithm can track the target value precisely and has fewer steady errors and strong ability of anti‐interference. Furthermore, it has further confirmed the superiority of the proposed grain drying controller by comparing it with the other controllers. |
topic |
genetic algorithm grain drying indirect inverse model controller support vector regression |
url |
https://doi.org/10.1002/fsn3.1340 |
work_keys_str_mv |
AT ainidai designofanintelligentcontrollerforagraindryerasupportvectormachinesforregressioninversemodelproportionalintegralderivativecontroller AT xiaoguangzhou designofanintelligentcontrollerforagraindryerasupportvectormachinesforregressioninversemodelproportionalintegralderivativecontroller AT zidanwu designofanintelligentcontrollerforagraindryerasupportvectormachinesforregressioninversemodelproportionalintegralderivativecontroller |
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1725334902985981952 |