智能微电网社区建筑聚类的多目标优化

Nafiseh Ghorbani-Renani, Philip Odonkor
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引用次数: 0

摘要

智能微电网社区是由建筑物和分布式能源(DERs)组成的小团体,它们共同努力,共同加强能源安全。作为一个集体系统,它们的能源绩效取决于组成建筑的能源消耗和发电特性。然而,在实践中,建筑物的地理邻近性通常被用作微电网的主要聚类标准。在这项研究中,我们提出了一个新的多目标公式,扩展了这一标准,以考虑聚类过程中建筑负荷分布的异质性和互补性。具体来说,所提出的模型通过(i)最小化整个建筑集群的净能量变化,以及(ii)最小化集群中建筑之间的物理距离来集群住户。该研究独特地利用增广ε约束方法在得到的权衡空间内有效地填充和分析Pareto最优解。为了说明该模型的应用,使用Pecan Street Inc.将其应用于纽约州伊萨卡市一个想象社区内的集群家庭。Dataport数据库。结果表明,所提出的模型能够有效地设计出平衡净能量和物理距离的建筑集群,从而提高DER资源的利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Objective Optimization for Clustering Buildings into Smart Microgrid Communities
Smart microgrid communities are small groups of buildings and distributed energy resources (DERs) that collectively work to jointly enhance energy security. As a collective system, their energy performance relies on the energy consumption and generation characteristics of constituent buildings. Yet, in practice, the geographical proximity of buildings is often used as the primary clustering criteria for microgrids. In this study, we proposed a novel multi-objective formulation that expands this criterion to consider the heterogeneity and complimentary nature of building load profiles in the clustering process. Specifically, the proposed model clusters households by (i) minimizing the variation in net-energy across the building cluster, and (ii) minimizing the physical distance between buildings contained in the cluster. The study uniquely leverages the augmented ε-constraint method to efficiently populate and analyze Pareto optimal solutions within the resulting tradeoff space. To illustrate the application of the model, it is applied to cluster households within an imagined neighborhood in Ithaca, New York using the Pecan Street Inc. Dataport database. The results illustrate the ability of the proposed model to efficiently design building clusters that balance net energy and physical distance, allowing for increased utilization of DER resources.
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