Climate control in greenhouse using intelligent control algorithms

Revathi Soundiran, T. Radhakrishnan, Sivakumaran Natarajan
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引用次数: 15

Abstract

Greenhouse climate control problem has received considerable attention in agriculture engineering research. The greater part of accomplishing ensured farming within the greenhouse environment is achieved by controlling the temperature and relative humidity. As the result of process dead times and extreme interdependence of these parameters, the control problem is classified to be non-linear and multivariable. With the advances in intelligent control systems, more and more decisions involved in greenhouse control can be automated. Thus, more emphasis can be placed on emulating the abilities of the expert operator. In this paper, intelligent and non-intelligent control techniques for addressing the problem of automated climate control in a greenhouse are investigated. These include proportional-integral-derivative (PID) and Linear-Quadratic regulator (LQR) as a ‘non-intelligent’ technique and fuzzy PID and fuzzy immune PID as ‘intelligent’ technique. The new study is made for implementing the nonlinear fuzzy immune PID controller for greenhouse climate control. This controller has a simple structure and its parameters can be conveniently adjusted. It consists of a PID controller and a basic immune proportional controller in cascaded connection, the nonlinear function of the immune proportional controller is realized using fuzzy reasoning. Thus, controller parameters are adjusted online by the rules of immune feedback controller and fuzzy controller. The simulation results are compared for the effectiveness and applicability to greenhouse environmental problem.
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基于智能控制算法的温室气候控制
温室气候控制问题一直是农业工程研究中备受关注的问题。在温室环境中实现保证耕作的大部分是通过控制温度和相对湿度来实现的。由于过程死区时间和这些参数的极端相互依赖,控制问题被归为非线性和多变量问题。随着智能控制系统的发展,温室控制中越来越多的决策可以实现自动化。因此,更多的重点可以放在模拟专家操作人员的能力上。本文研究了解决温室气候自动控制问题的智能和非智能控制技术。这些包括比例积分导数(PID)和线性二次调节器(LQR)作为“非智能”技术,模糊PID和模糊免疫PID作为“智能”技术。对温室气候控制的非线性模糊免疫PID控制器的实现进行了新的研究。该控制器结构简单,参数调整方便。它由一个PID控制器和一个级联的基本免疫比例控制器组成,免疫比例控制器的非线性功能采用模糊推理实现。利用免疫反馈控制器和模糊控制器的规则在线调整控制器参数。比较了模拟结果对温室环境问题的有效性和适用性。
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CiteScore
2.40
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