SYLGNEOCSep 11, 2019

Learning-based Model Predictive Control for Smart Building Thermal Management

arXiv:1909.05331v1
AI Analysis

This addresses energy efficiency and comfort for smart building management, representing an incremental improvement over conventional MPC methods.

The paper tackles thermal control in a four-zone smart building by proposing a learning-based model predictive control approach that integrates occupancy estimation via artificial neural networks, resulting in significant energy savings such as 40.56% less cooling and 16.73% less heating power consumption while maintaining comfort.

This paper proposes a learning-based model predictive control (MPC) approach for the thermal control of a four-zone smart building. The objectives are to minimize energy consumption and maintain the residents' comfort. The proposed control scheme incorporates learning with the model-based control. The occupancy profile in the building zones are estimated in a long-term horizon through the artificial neural network (ANN), and this data is fed into the model-based predictor to get the indoor temperature predictions. The Energy Plus software is utilized as the actual dataset provider (weather data, indoor temperature, energy consumption). The optimization problem, including the actual and predicted data, is solved in each step of the simulation and the input setpoint temperature for the heating/cooling system, is generated. Comparing the results of the proposed approach with the conventional MPC results proved the significantly better performance of the proposed method in energy savings (40.56% less cooling power consumption and 16.73% less heating power consumption), and residents' comfort.

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