HVAC energy cost minimization in smart grids: A cloud-based demand side management approach with game theory optimization and deep learning

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-04-05 DOI:10.1016/j.egyai.2024.100362
Rahman Heidarykiany, Cristinel Ababei
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Abstract

In this paper, we present a novel cloud-based demand side management (DSM) optimization approach for the cost reduction of energy usage in heating, ventilation and air conditioning (HVAC) systems in residential homes at the district level. The proposed approach achieves optimization through scheduling of HVAC energy usage within permissible bounds set by house users. House smart home energy management (SHEM) devices are connected to the utility/aggregator via a dedicated communication network that is used to enable DSM. Each house SHEM can predict its own HVAC energy usage for the next 24 h using minimalistic deep learning (DL) prediction models. These predictions are communicated to the aggregator, which will then do day ahead optimizations using the proposed game theory (GT) algorithm. The GT model captures the interaction between aggregator and customers and identifies a solution to the GT problem that translates into HVAC energy peak shifting and peak reduction achieved by rescheduling HVAC energy usage. The found solution is communicated by the aggregator to houses SHEM devices in the form of offers via DSM signals. If customers’ SHEM devices accept the offer, then energy cost reduction will be achieved. To validate the proposed algorithm, we conduct extensive simulations with a custom simulation tool based on GridLab-D tool, which is integrated with DL prediction models and optimization libraries. Results show that HVAC energy cost can be reduced by up to 36% while indirectly also reducing the peak-to-average (PAR) and the aggregated net load by up to 9.97%.

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智能电网中的暖通空调能源成本最小化:基于云的需求侧管理方法:博弈论优化和深度学习
在本文中,我们提出了一种基于云的新型需求侧管理(DSM)优化方法,用于降低小区住宅供暖、通风和空调(HVAC)系统的能源使用成本。所提出的方法通过在住宅用户设定的允许范围内安排暖通空调系统的能源使用来实现优化。住宅智能家庭能源管理(SHEM)设备通过专用通信网络连接到公用事业公司/汇集器,用于实现 DSM。每个家庭的智能家居能源管理(SHEM)设备都能使用最小化深度学习(DL)预测模型预测自己未来 24 小时的暖通空调能源使用情况。这些预测结果将传送给聚合器,然后聚合器将使用所提出的博弈论(GT)算法进行日优化。GT 模型可捕捉聚合器与客户之间的互动,并确定 GT 问题的解决方案,通过重新安排暖通空调能源使用,实现暖通空调能源峰值转移和峰值降低。找到的解决方案由聚合器通过 DSM 信号以报价的形式传达给房屋的 SHEM 设备。如果客户的 SHEM 设备接受该提议,则可实现能源成本的降低。为了验证所提出的算法,我们使用基于 GridLab-D 工具的定制模拟工具进行了大量模拟,该工具集成了 DL 预测模型和优化库。结果表明,暖通空调能源成本最多可降低 36%,同时也间接降低了峰均值(PAR)和总净负荷达 9.97%。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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