Energy-efficient AI-based Control of Semi-closed Greenhouses Leveraging Robust Optimization in Deep Reinforcement Learning

IF 13 Q1 ENERGY & FUELS
Akshay Ajagekar , Neil S. Mattson , Fengqi You
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引用次数: 9

Abstract

As greenhouses are being widely adopted worldwide, it is important to improve the energy efficiency of the control systems while accurately regulating their indoor climate to realize sustainable agricultural practices for food production. In this work, we propose an artificial intelligence (AI)-based control framework that combines deep reinforcement learning techniques to generate insights into greenhouse operation combined with robust optimization to produce energy-efficient controls by hedging against associated uncertainties. The proposed control strategy is capable of learning from historical greenhouse climate trajectories while adapting to current climatic conditions and disturbances like time-varying crop growth and outdoor weather. We evaluate the performance of the proposed AI-based control strategy against state-of-the-art model-based and model-free approaches like certainty-equivalent model predictive control, robust model predictive control (RMPC), and deep deterministic policy gradient. Based on the computational results obtained for the tomato crop's greenhouse climate control case study, the proposed control technique demonstrates a significant reduction in energy consumption of 57% over traditional control techniques. The AI-based control framework also produces robust controls that are not overly conservative, with an improvement in deviation from setpoints of over 26.8% as compared to the baseline control approach RMPC.

基于深度强化学习鲁棒优化的半封闭温室节能人工智能控制
随着温室在世界范围内的广泛应用,提高控制系统的能源效率,同时准确调节其室内气候,以实现粮食生产的可持续农业实践至关重要。在这项工作中,我们提出了一个基于人工智能(AI)的控制框架,该框架结合了深度强化学习技术,以产生对温室运行的见解,并结合了鲁棒优化,通过对冲相关的不确定性来产生节能控制。所提出的控制策略能够从历史温室气候轨迹中学习,同时适应当前的气候条件和干扰,如时变的作物生长和室外天气。我们评估了所提出的基于人工智能的控制策略与最先进的基于模型和无模型的方法(如确定性等效模型预测控制、鲁棒模型预测控制(RMPC)和深度确定性策略梯度)的性能。根据番茄作物温室气候控制案例研究的计算结果,所提出的控制技术比传统控制技术显著降低了57%的能耗。基于人工智能的控制框架也产生了不过于保守的鲁棒控制,与基准控制方法RMPC相比,与设定值的偏差超过26.8%。
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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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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