基于布谷鸟搜索算法的压力过程控制系统分数阶模型辨识

S. Rukkaphan, C. Sompracha
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引用次数: 0

摘要

提出了用布谷鸟搜索(CS)算法辨识压力过程控制系统最优分数阶模型的方法。压力过程控制需要精确的模型进行分析和设计。分数阶模型是基于分数阶微积分的。因此,传递函数模型的阶数可以由整数扩展到实数。因此,分数阶模型比整数阶模型更精确。分数阶系统辨识问题可以归结为现代优化问题。目标函数由实际压力过程控制的输出与候选模型在搜索空间内的输出之间的绝对误差(IAE)的积分得到。CS算法求解压力过程控制分数阶模型的最优参数,使目标函数最小。仿真结果表明,与CS算法识别的整数阶模型相比,CS算法识别的分数阶模型具有较高的精度。
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Fractional Order Model Identification for Pressure Process Control System by Cuckoo Search Algorithm
This paper presents the optimal fractional order model identification of the pressure process control system by the cuckoo search (CS) algorithm. The accurate model the pressure process control is required for analysis and design. The fractional order model is based on the fractional calculus. Therefore, the orders of transfer function model can be extended from integer to real number. Consequently, the fractional order model is more accurate than the integer order model. The fractional order system identification problem can be set as the modern optimization problem. The objective function receives from the integral of the absolute error (IAE) between the output of actual pressure process control and the output of candidate model within search space. The CS algorithm solves the optimal parameter of the fractional order model of the pressure process control in order to minimize the objective function. From simulation results, the fractional order model identified by the CS algorithm can give high accuracy, once compared with the integer order model identified by the CS algorithm.
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