Design of Soft Computing Based Optimal PI Controller for Greenhouse System

A. Manonmani, T. Thyagarajan, S. Sutha, V. Gayathri
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引用次数: 2

Abstract

Greenhouse system (GHS) is the worldwide fastest growing phenomenon in agricultural sector. Greenhouse models are essential for improving control efficiencies. The Relative Gain Analysis (RGA) reveals that the GHS control is complex due to 1) high nonlinear interactions between the biological subsystem and the physical subsystem and 2) strong coupling between the process variables such as temperature and humidity. In this paper, a decoupled linear cooling model has been developed using a feedback-feed forward linearization technique. Further, based on the model developed Internal Model Control (IMC) based Proportional Integrator (PI) controller parameters are optimized using Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) to achieve minimum Integral Square Error (ISE). The closed loop control is carried out using the above control schemes for set-point change and disturbance rejection. Finally, closed loop servo and servo-regulatory responses of GHS are compared quantitatively as well as qualitatively. The results implicate that IMC based PI controller using PSO provides better performance than the IMC based PI controller using GA. Also, it is observed that the disturbance introduced in one loop will not affect the other loop due to feedback-feed forward linearization and decoupling. Such a control scheme used for GHS would result in better yield in production of crops such as tomato, lettuce and broccoli.
基于软计算的温室系统最优PI控制器设计
温室系统(GHS)是世界范围内发展最快的农业现象。温室模型对于提高控制效率至关重要。相对增益分析(RGA)表明,由于生物子系统和物理子系统之间的高度非线性相互作用以及温度和湿度等过程变量之间的强耦合,GHS控制非常复杂。本文采用前馈-前馈线性化技术建立了一个解耦的线性冷却模型。在此基础上,利用遗传算法(GA)和粒子群算法(PSO)优化控制器参数,实现最小积分平方误差(ISE)。采用上述控制方案对系统的设定点变化和扰动抑制进行闭环控制。最后,定量和定性地比较了GHS的闭环伺服和伺服调节响应。结果表明,使用粒子群算法的基于IMC的PI控制器比使用遗传算法的基于IMC的PI控制器性能更好。此外,由于前馈线性化和解耦,在一个回路中引入的扰动不会影响另一个回路。这种用于GHS的控制方案将使番茄、生菜和西兰花等作物的产量提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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