Robust Model Predictive Control of Irrigation Systems with Active Uncertainty Learning and Data Analytics
Chao Shang, Wei-Han Chen, Abraham Duncan Stroock, Fengqi You

TL;DR
This paper introduces a data-driven robust model predictive control method for irrigation systems that integrates mechanistic and data-driven models, utilizing historical data to construct uncertainty sets for improved water management.
Contribution
It presents a novel integration of mechanistic and data-driven models with learning-based uncertainty sets and theoretical guarantees, enhancing irrigation control efficiency.
Findings
Achieves 40% water savings compared to open-loop control.
Reliably maintains soil moisture above safety levels.
Significantly outperforms rule-based and certainty equivalent MPC.
Abstract
We develop a novel data-driven robust model predictive control (DDRMPC) approach for automatic control of irrigation systems. The fundamental idea is to integrate both mechanistic models, which describe dynamics in soil moisture variations, and data-driven models, which characterize uncertainty in forecast errors of evapotranspiration and precipitation, into a holistic systems control framework. To better capture the support of uncertainty distribution, we take a new learning-based approach by constructing uncertainty sets from historical data. For evapotranspiration forecast error, the support vector clustering-based uncertainty set is adopted, which can be conveniently built from historical data. As for precipitation forecast errors, we analyze the dependence of their distribution on forecast values, and further design a tailored uncertainty set based on the properties of this type of…
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