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Data Predictive Control for Building Energy Management
Author(s) -
Achin Jain,
Madhur Behl,
Rahul Mangharam
Publication year - 2016
Publication title -
scholarlycommons (university of pennsylvania)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2993422.2996410
Subject(s) - model predictive control , computer science , control (management) , energy management , energy (signal processing) , artificial intelligence , statistics , mathematics
Decisions on how best to optimize today's energy systems operations are becoming ever so complex and conflicting such that model-based predictive control algorithms must play a key role. However, learning dynamical models of energy consuming systems such as buildings, using grey/white box approaches is very cost and time prohibitive due to its complexity. This paper presents data-driven methods for making control-oriented model for peak power reduction in buildings. Specifically, a data predictive control with regression trees (DPCRT) algorithm, is presented. DPCRT is a finite receding horizon method, using which the building operator can optimally trade off peak power reduction against thermal comfort without having to learn white/grey box models of the systems dynamics. We evaluate the performance of our method using a DoE commercial reference virtual test-bed and show how it can be used for learning predictive models with 90% accuracy, and for achieving 8.6% reduction in peak power and costs.

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