Least-cost model predictive control of residential energy resources when applying μmCHP

M. Houwing, R. Negenborn, P. Heijnen, B. de Schutter, H. Hellendoorn
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引用次数: 36

Abstract

With an increasing use of distributed energy resources and intelligence in the electricity infrastructure, the possibilities for minimizing costs of household energy consumption increase. Technology is moving toward a situation in which households manage their own energy generation and consumption, possibly in cooperation with each other. As a first step, in this paper a decentralized controller based on model predictive control is proposed. For an individual household using a micro combined heat and power (muCHP) plant in combination with heat and electricity storages the controller determines what the actions are that minimize the operational costs of fulfilling residential electricity and heat requirements subject to operational constraints. Simulation studies illustrate the performance of the proposed control scheme, which is substantially more cost effective compared with a control approach that does not include predictions on the system it controls.
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应用μmCHP时住宅能源的最小成本模型预测控制
随着在电力基础设施中越来越多地使用分布式能源和智能,使家庭能源消耗成本最小化的可能性增加。技术正朝着这样一种局面发展:家庭可以相互合作,管理自己的能源生产和消费。首先,提出了一种基于模型预测控制的分散控制器。对于使用微型热电联产(muCHP)电厂与热电储存相结合的单个家庭,控制器决定在操作限制的情况下,将满足住宅用电和供热需求的运营成本降至最低。仿真研究说明了所提出的控制方案的性能,与不包括对其控制系统的预测的控制方法相比,该控制方案具有更高的成本效益。
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