Demand-response in building heating systems: A Model Predictive Control approach

•A predictive control-based optimization approach is developed for efficient management of building heating systems.•Demand response based on price–volume signals is considered.•A heuristic procedure is devised for solving the optimization problem.•The proposed approach is suitable for application t...

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Veröffentlicht in:Applied energy 2016-04, Vol.168, p.159-170
Hauptverfasser: Bianchini, Gianni, Casini, Marco, Vicino, Antonio, Zarrilli, Donato
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container_start_page 159
container_title Applied energy
container_volume 168
creator Bianchini, Gianni
Casini, Marco
Vicino, Antonio
Zarrilli, Donato
description •A predictive control-based optimization approach is developed for efficient management of building heating systems.•Demand response based on price–volume signals is considered.•A heuristic procedure is devised for solving the optimization problem.•The proposed approach is suitable for application to large-scale buildings. In this paper we consider the problem of optimizing the operation of a building heating system under the hypothesis that the building is included as an active consumer in a demand response program. Demand response requests to the building operational system come from an external market player or a grid operator. Requests assume the form of price–volume signals specifying a maximum volume of energy to be consumed during a given time slot and a monetary reward assigned to the participant in case it fulfills the conditions. A receding horizon control approach is adopted for the minimization of the energy bill, by exploiting a simplified model of the building. Since the resulting optimization problem is a mixed integer linear program which turns out to be manageable only for buildings with very few zones, a heuristics is devised to make the algorithm applicable to realistic size problems as well. The derived control law is tested on the realistic simulator EnergyPlus to evaluate pros and cons of the proposed algorithm. The performance of the suboptimal control law is evaluated on small- and large-scale test cases.
doi_str_mv 10.1016/j.apenergy.2016.01.088
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source Elsevier ScienceDirect Journals
subjects Algorithms
Building heating systems
Buildings
Computer simulation
Demand response
Energy management
Energy management systems
Energy policy
Heating systems
Markets
Mathematical modeling
Model Predictive Control
Optimization
title Demand-response in building heating systems: A Model Predictive Control approach
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