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      Online Model Estimation for Predictive Thermal Control of Buildings

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          Abstract

          This study proposes a general, scalable method to learn control-oriented thermal models of buildings that could enable wide-scale deployment of cost-effective predictive controls. An Unscented Kalman Filter augmented for parameter and disturbance estimation is shown to accurately learn and predict a building's thermal response. Recent studies of heating, ventilating, and air conditioning (HVAC) systems have shown significant energy savings with advanced model predictive control (MPC). A scalable cost-effective method to readily acquire accurate, robust models of individual buildings' unique thermal envelopes has historically been elusive and hindered the widespread deployment of prediction-based control systems. Continuous commissioning and lifetime performance of these thermal models requires deployment of on-line data-driven system identification and parameter estimation routines. We propose a novel gray-box approach using an Unscented Kalman Filter based on a multi-zone thermal network and validate it with EnergyPlus simulation data. The filter quickly learns parameters of a thermal network during periods of known or constrained loads and then characterizes unknown loads in order to provide accurate 24+ hour energy predictions. This study extends our initial investigation by formalizing parameter and disturbance estimation routines and demonstrating results across a year-long study.

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          Unscented Filtering for Spacecraft Attitude Estimation

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            Issues in identification of control-oriented thermal models of zones in multi-zone buildings

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              Minimal linear combinations of the inertia parameters of a manipulator

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                Author and article information

                Journal
                1601.02947

                Performance, Systems & Control,Artificial intelligence
                Performance, Systems & Control, Artificial intelligence

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