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Theoretical Exploration of Irrigation Control for Stem Water Potential through Model Predictive Control

机译:通过模型预测控制对茎水势灌溉控制的理论探索

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Irrigation takes considerable amount of water; however, in many cases up to half of it is wasted. Improving the efficiency of irrigation control, therefore, is an important task for sustainable water management. Most existing irrigation control systems are based on soil moisture level. In this work, we explore theoretically the use of continuous values stem water potential (SWP) as a basis for control. SWP is a more direct measure of plant water status than the soil moisture level. After linearizing and discretizing a nonlinear dynamic model of water dynamics in a plant, we develop a model predictive control (MPC) framework for regulating SWP. To prevent plants from suffering water stress, data-driven robust MPC (DDRMPC) which captures the uncertainty of weather forecast error is implemented. A case study based on almond tree is presented to characterize the effectiveness of the DDRMPC strategy relative to on-off control. Sensitivity analysis on the prediction horizon and penalty weights were performed to investigate the varying irrigation control decisions. For the case characterized, the analysis shows that controlling tree trunk water potential through DDRMPC can save 2.5% amount of water comparing to on-off control while maintaining zero violation.
机译:灌溉采用相当数量的水;但是,在许多情况下,最多的一半被浪费了。因此,提高灌溉控制效率是可持续水管理的重要任务。大多数现有的灌溉控制系统基于土壤水分水平。在这项工作中,我们从理论上探讨了连续值阀杆水势(SWP)作为控制的基础。 SWP是一种比土壤水分水平更直接的植物水位。在植物中线性化和离散水动力学的非线性动态模型之后,我们开发了用于调节SWP的模型预测控制(MPC)框架。为了防止植物遭受水分应力,实现了捕获天气预报误差不确定性的数据驱动的鲁棒MPC(DDRMPC)。提出了一种基于杏仁树的案例研究,以表征DDRMPC策略相对于开关控制的有效性。对预测地平线和惩罚权重的敏感性分析进行了调查不同的灌溉控制决策。对于所表征的情况,分析表明,通过DDRMPC控制树干水电位可以节省2.5%的水与开关控制相比,同时保持零违规。

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