4.7 Article

Optimal energy management in smart sustainable buildings A chance-constrained model predictive control approach

Journal

ENERGY AND BUILDINGS
Volume 248, Issue -, Pages -

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2021.111163

Keywords

Building energy management; Smart sustainable buildings; Chance-constrained MPC; Mixed-integer-linear-programming

Funding

  1. Luxembourg National Research Fund (FNR) [C18/SR/12676686]

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Recent European environmental directives, prevalent consumer desire to minimize electricity costs, and flexible buildings driven by the grid have all contributed to the rise of smart sustainable buildings (SSBs). Coordinated by building energy management systems (BEMS), SSBs aim to achieve monetary gains for owners while meeting the nearly-zero-energy (nZE) mandate. The proposed framework in this paper considers device composition, weather forecast uncertainties, and a novel adaptive sustainability criterion to optimize cost management and maintain the SSB's nZE status.
Recent European environmental directives, the prevalent consumer desire to minimize electricity costs, and the grid-driven need for flexible buildings all lead to a common outcome: the smart sustainable building (SSB). Coordinated by their building energy management systems (BEMS), SSBs steer their operation towards monetary gains for their owners, and flexibility for grid operators. Another key feature is their sustainability, expressed by the mandatory nearly-zero-energy (nZE) mandate, i.e., balancing yearly energy consumption and on-site renewable energy production. In this paper, we present a generic and comprehensive (in terms of device composition) BEMS framework for SSBs. Aside from operating cost minimization, the BEMS is additionally tasked with overseeing the SSB's environmental profile, ensuring that the nZE mandate is not jeopardized in the pursuit of monetary gains. This is achieved through a novel adaptive sustainability criterion. The inherent uncertainties of solar irradiance and ambient temperature are reflected on the occupants' thermal comfort, the relevant limitation being cast as chance constraints. The overall mixed-integer linear programming (MILP) problem is solved through model predictive control (MPC). The main contributions lie in the joint consideration of a) a comprehensive devices set, b) weather forecast uncertainties, and c) the employment of the novel adaptive sustainability criterion. The proposed framework is validated in a nigh-exhaustive case study and evaluated with respect to cost management and ability to manage the SSB's nZE status. (C) 2021 Elsevier B.V. All rights reserved.

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