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Model predictive control based on Particle Swarm Optimization of greenhouse climate for saving energy consumption

机译:基于粒子群优化的温室气候模型预测控制节能

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This paper presents a greenhouse climate controller, which can minimize the consumption of energy while keeping the climatic temperature variables under control. A nonlinear model predicative control (MPC) algorithm based on particle swarm optimization (PSO) is proposed in this paper, since MPC is very flexible in selecting the control objectives to solve the cost minimization problem. Combining MPC with PSO not only can state the energy cost function flexibly, but also can solve the optimization problems of the nonlinear processes. The controller consists of three fundamental elements: a predictor that predicts the temperature based on the model and process information, a cost function that assigns a value to keep the greenhouse climate condition under the minimum energy cost, and an optimization technique which uses PSO to solve the constrained nonlinear optimization problem. In this work, the proposed controller can maintain the temperature under the specified range while saving the energy consumption. The result indicates that the suggested controller is effective in energy saving. The controller has been applied to the plastic solar greenhouse located in the North of China.
机译:本文提出了一种温室气候控制器,该控制器可以在控制气候温度变量的同时将能源消耗降至最低。提出了一种基于粒子群优化(PSO)的非线性模型预测控制(MPC)算法,因为MPC在选择控制目标时非常灵活,可以解决成本最小化的问题。 MPC与PSO的结合不仅可以灵活地描述能源成本函数,而且可以解决非线性过程的优化问题。该控制器由三个基本元素组成:一个基于模型和过程信息预测温度的预测器,一个将成本保持在最低能量成本下以保持温室气候状况的值的成本函数以及一种使用PSO求解的优化技术约束非线性优化问题。在这项工作中,建议的控制器可以将温度保持在指定范围内,同时节省能耗。结果表明所建议的控制器在节能方面是有效的。该控制器已应用于中国北方的塑料日光温室。

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