Context-Aware Model Predictive Control for Microgrid Energy Management via LLMs
Ruixiang Wu, Jiahao Ai, Tinko Sebastian Bartels, Tongxin Li

TL;DR
This paper introduces InstructMPC, a novel framework that leverages Large Language Models to incorporate unstructured contextual data into microgrid control, improving cost efficiency and robustness.
Contribution
It presents a new LLM-based control paradigm with a tunable last layer, providing theoretical guarantees and practical validation for microgrid energy management.
Findings
LLM-driven MPC reduces grid electricity costs significantly.
Theoretical regret bound of $O( oot{2}{T \, \log T})$ established.
Robustness against noisy textual inputs demonstrated.
Abstract
The optimal operation of modern microgrids, particularly those integrating stochastic renewable generation and battery energy storage system (BESS), relies heavily on load and disturbances forecasting to minimize operational costs. However, in environments with uncertainties in both generation and consumption, traditional numerical forecasting methods often fail to capture generation shifts and event-driven load surges. While contextual information regarding event schedules, system logs, and computational task records is easily obtainable, classic control paradigms lack a formal interface to integrate the unstructured, semantic data into the physical operation loop. This paper addresses this gap by introducing the InstructMPC framework, which utilizes a Large Language Model (LLM) paired with a tunable last layer mapping to translate unstructured operational context into predictive…
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