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Electro-Hydraulic Servo System Identification of Continuous Rotary Motor Based on the Integration Algorithm of Genetic Algorithm and Ant Colony Optimization 被引量:1

Electro-Hydraulic Servo System Identification of Continuous Rotary Motor Based on the Integration Algorithm of Genetic Algorithm and Ant Colony Optimization
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摘要 In order to increase the robust performance of electro-hydraulic servo system, the system transfer function was identified by the intergration algorithm of genetic algorithm and ant colony optimization(GA-ACO), which was based on standard genetic algorithm and combined with positive feedback mechanism of ant colony algorithm. This method can obtain the precise mathematic model of continuous rotary motor which determines the order of servo system. Firstly, by constructing an appropriate fitness function, the problem of system parameters identification is converted into the problem of system parameter optimization. Secondly, in the given upper and lower bounds a set of optimal parameters are selected to meet the best approximation of the actual system. And the result shows that the identification output can trace the sampling output of actual system, and the error is very small. In addition, another set of experimental data are used to test the identification result. The result shows that the identification parameters can approach the actual system. The experimental results verify the feasibility of this method. And it is fit for the parameter identification of general complex system using the integration algorithm of GA-ACO. In order to increase the robust performance of electro- hydraulic servo system, the system transfer function was identified by the intergration algorithm of genetic algorithm and ant colony optimization (GA-ACO), which was based on standard genetic algorithm and combined with positive feedback mechanism of ant colony algorithm. This method can obtain the precise mathematic model of continuous rotary motor which determines the order of servo system. Firstly, by constructing an appropriate fitness function, the problem of system parameters identification is converted into the problem of system parameter optimization. Secondly, in the given upper and lower bounds a set of optimal parameters are selected to meet the best approximation of the actual system. And the result shows that the identification output can trace the sampling output of actual system, and the error is very small. In addition, another set of experimental data are used to test the identification result. The result shows that the identification parameters can approach the actual system. The experimental results verify the feasibility of this method. And it is fit for the parameter identification of general complex system using the integration algorithm of GA-ACO.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2012年第5期428-433,共6页 东华大学学报(英文版)
基金 Project of China Postdoctoral Science Foundation,China (No. 2012M510982) Special Fund on the Science and Technology Innovation People of Harbin,China (No. 2011RFQXG002) Technology Item of Heilongjiang Provincial Education Committee,China (No.12511088) Postdoctoral Project of Heilongjiang,China (No. LBH-Z10117 ) Youth Fund of Harbin University of Science and Technology,China (No. 2011YF030)
关键词 continuous rotary motor system identification genetic algorithm and ant colony optimization (GA-ACO) algorithm 液压传动 传动理论 传动装置 液压马达
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