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Towards Constraint Optimal Control of Greenhouse Climate

机译:向温室气候的约束最优控制迈进

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摘要

Greenhouse climate is a multiple coupled variable, nonlinear and uncertain system. It consists of several major environmental factors, such as temperature, humidity, light intensity, and CO_2 concentration. In this work, we propose a constraint optimal control approach for greenhouse climate. Instead of modeling greenhouse climate, Q-learning is introduced to search for optimal control strategy through trial-and-error interaction with the dynamic environment. The coupled relations among greenhouse environmental factors are handled by coordinating the different control actions. The reinforcement signal is designed with consideration of the control action costs. To decrease systematic trial-and-error risk and reduce the computational complexity in Q-learning algorithm Case Based Reasoning (CBR) is seamlessly incorporated into Q-learning process of the optimal control. The experimental results show this approach is practical, highly effective and efficient.
机译:温室气候是一种多耦合变量,非线性和不确定的系统。它由几种主要的环境因素组成,如温度,湿度,光强度和CO_2浓度。在这项工作中,我们提出了一个限制性的温室气候的最佳控制方法。 Q-Learning通过与动态环境的试验和错误交互来说,Q-Learning引入了Q-Learning来搜索最佳控制策略而不是建模温室气候。温室环境因素之间的耦合关系是通过协调不同的控制作用来处理的。增强信号旨在考虑控制动作成本。为了减少系统的试验和错误风险并降低基于Q学习算法的计算复杂性,基于Q学习的推理(CBR)无缝地结合到最佳控制的Q学习过程中。实验结果表明这种方法是实用,高效和高效的。

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