Model predictive control for demand flexibility: Real-world operation of a commercial building with photovoltaic and battery systems

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2022-09-01 DOI:10.1016/j.adapen.2022.100099
Kun Zhang , Anand Prakash , Lazlo Paul , David Blum , Peter Alstone , James Zoellick , Richard Brown , Marco Pritoni
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引用次数: 20

Abstract

Hundreds of studies have investigated Model Predictive Control (MPC) for the optimal operation of building energy systems in the past two decades. However, MPC field tests are still uncommon, especially for small- and medium-sized commercial buildings and for buildings integrated with onsite renewables. This paper describes the implementation and the long-term performance evaluation of an MPC controller in a small commercial building equipped with behind-the-meter photovoltaics and electrochemical batteries. MPC controls space conditioning, commercial refrigeration, and the battery system. We tested two types of demand flexibility applications in the field: electricity bill minimization under time-of-use tariffs and responses to grid flexibility events. Results show that the proposed controller achieves 12% of annual electricity cost savings and 34% peak demand reduction against the baseline, while respecting thermal comfort and food safety. The field tests also demonstrate the ability of the MPC controller to provide a multitude of grid services including real-time pricing, demand limiting, load shedding, load shifting, and load tracking, using the same optimization framework.

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需求灵活性的模型预测控制:具有光伏和电池系统的商业建筑的实际运行
在过去的二十年里,数以百计的研究对模型预测控制(MPC)用于建筑能源系统的优化运行进行了研究。然而,MPC现场测试仍然不常见,特别是对于中小型商业建筑和集成了现场可再生能源的建筑。本文介绍了一种MPC控制器在一个小型商业建筑中安装的电表后光伏和电化学电池的实现和长期性能评估。MPC控制空间调节、商业制冷和电池系统。我们在现场测试了两种类型的需求灵活性应用:在使用时间关税下的电费最小化和对电网灵活性事件的响应。结果表明,在保证热舒适和食品安全的前提下,该控制器实现了12%的年电力成本节约和34%的峰值需求减少。现场测试还证明了MPC控制器能够使用相同的优化框架,提供多种电网服务,包括实时定价、需求限制、减载、负载转移和负载跟踪。
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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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