Article ID Journal Published Year Pages File Type
262549 Energy and Buildings 2015 13 Pages PDF
Abstract

•This study developed a model predictive controller (MPC) using occupant-feedback.•The proposed MPC modulates indoor air temperature base on a thermal comfort model.•The proposed MPC adapts to occupant actual mean vote (AMV) inputs.•A stochastic MPC is designed to allow tradeoffs between energy and thermal comfort.•The developed MPC performs better than an MPC based on predicted mean vote (PMV).

This study developed two model predictive control (MPC) algorithms, a certainty-equivalence MPC and a chance-constrained MPC, for indoor thermal control to minimize energy consumption while maintaining occupant thermal comfort. It is assumed that occupant perceptions of thermal sensation can be continually collected and fed back to calibrate a dynamic thermal sensation model and to update the MPC. The performance of the proposed MPCs based on Actual Mean Vote (AMV) was compared to an MPC using Fanger's Predicted Mean Vote (PMV) as the thermal comfort index. Simulation results demonstrated that when the PMV gives an accurate prediction of occupants’ AMV, the proposed MPCs achieve a comparable level of energy consumption and thermal comfort, while it reduces the demand on continually sensing environmental and occupant parameters used by the PMV model. Simulation results also showed that when there is a discrepancy between the PMV and AMV, the proposed MPC controllers based on AMV expect to outperform the PMV based MPC by providing a better outcome in indoor thermal comfort and energy consumption. In addition, the proposed chance-constrained MPC offers an opportunity to adjust the probability of satisfying the thermal comfort constraint to achieve a balance between energy consumption and thermal comfort.

Related Topics
Physical Sciences and Engineering Energy Renewable Energy, Sustainability and the Environment
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