SYLGJan 28, 2024

Efficient Data-Driven MPC for Demand Response of Commercial Buildings

arXiv:2401.15742v32 citationsh-index: 9
Originality Incremental advance
AI Analysis

This work addresses energy management for small commercial buildings, offering an incremental improvement in computational efficiency for demand response programs.

The paper tackled the problem of computationally intractable optimization in data-driven MPC for commercial building demand response by proposing a mixed-integer convex MPC with an input convex recurrent neural network, achieving improved thermal comfort and reduced energy consumption and cost compared to existing methods.

Model predictive control (MPC) has been shown to significantly improve the energy efficiency of buildings while maintaining thermal comfort. Data-driven approaches based on neural networks have been proposed to facilitate system modelling. However, such approaches are generally nonconvex and result in computationally intractable optimization problems. In this work, we design a readily implementable energy management method for small commercial buildings. We then leverage our approach to formulate a real-time demand bidding strategy. We propose a data-driven and mixed-integer convex MPC which is solved via derivative-free optimization given a limited computational time of 5 minutes to respect operational constraints. We consider rooftop unit heating, ventilation, and air conditioning systems with discrete controls to accurately model the operation of most commercial buildings. Our approach uses an input convex recurrent neural network to model the thermal dynamics. We apply our approach in several demand response (DR) settings, including a demand bidding, a time-of-use, and a critical peak rebate program. Controller performance is evaluated on a state-of-the-art building simulation. The proposed approach improves thermal comfort while reducing energy consumption and cost through DR participation, when compared to other data-driven approaches or a set-point controller.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes