用于灌溉调度的混合整数 MPC 中的 ReLU 代理变量

Bernard T. AgyemanUniversity of Alberta, Jinfeng LiuUniversity of Alberta, Sirish L. Shah
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引用次数: 0

摘要

高效的农业用水管理对于缓解日益严重的淡水匮乏危机非常重要。混合整数模型预测控制(MPC)已成为解决农业灌溉复杂调度问题的有效方法。然而,混合整数模型预测控制的计算复杂性仍然是一个重大挑战,尤其是在大规模应用中。本研究提出了一种方法,通过采用 ReLU 代理模型来描述农田土壤湿度动力学,从而提高基于混合整数 MPC 的灌溉调度器的计算效率。通过利用 ReLU 算子的混合整数线性表示,所提出的方法将具有二次成本函数的基于混合整数 MPC 的调度程序转换为混合整数二次方程程序,这是最简单的一类混合整数非线性编程问题,可以使用全局优化求解器高效求解。通过在大规模农田上进行的跨越两个生长季节的比较研究,以及其他机器学习替代模型(特别是长短期记忆(LSTM)网络)和广泛使用的触发式灌溉调度方法,证明了这种方法的有效性。基于ReLU的方法大大缩短了求解时间(最多可缩短99.5%),同时在节水和灌溉水利用效率(IWUE)方面取得了与LSTM方法相当的性能。此外,与广泛使用的触发式灌溉调度方法相比,基于ReLU的方法在总规定灌溉量和IWUE方面保持了更高的性能。
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ReLU Surrogates in Mixed-Integer MPC for Irrigation Scheduling
Efficient water management in agriculture is important for mitigating the growing freshwater scarcity crisis. Mixed-integer Model Predictive Control (MPC) has emerged as an effective approach for addressing the complex scheduling problems in agricultural irrigation. However, the computational complexity of mixed-integer MPC still poses a significant challenge, particularly in large-scale applications. This study proposes an approach to enhance the computational efficiency of mixed-integer MPC-based irrigation schedulers by employing ReLU surrogate models to describe the soil moisture dynamics of the agricultural field. By leveraging the mixed-integer linear representation of the ReLU operator, the proposed approach transforms the mixed-integer MPC-based scheduler with a quadratic cost function into a mixed-integer quadratic program, which is the simplest class of mixed-integer nonlinear programming problems that can be efficiently solved using global optimization solvers. The effectiveness of this approach is demonstrated through comparative studies conducted on a large-scale agricultural field across two growing seasons, involving other machine learning surrogate models, specifically Long Short-Term Memory (LSTM) networks, and the widely used triggered irrigation scheduling method. The ReLU-based approach significantly reduces solution times -- by up to 99.5\% -- while achieving comparable performance to the LSTM approach in terms of water savings and Irrigation Water Use Efficiency (IWUE). Moreover, the ReLU-based approach maintains enhanced performance in terms of total prescribed irrigation and IWUE compared to the widely-used triggered irrigation scheduling method.
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