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A meta-heuristic optimization based residential load pattern clustering approach using improved Gravitational Search Algorithm

机译:一种使用改进的重力搜索算法的基于元型优化的住宅负载模式聚类方法

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More in-depth understanding about the load pattern clustering (LPC) can enhance the knowledge on end-users' electricity consumption behavior characteristics to improve the design of demand-side response schemes and service level for utility companies. However, traditional clustering methods such as K-means only take the compactness of the formed clusters into account without considering the separation, which makes the clustering results unreasonable. Moreover, K-means is sensitive to the initial centroids and easy to trap into local optimum. To address these issues, a meta-heuristic optimization based residential LPC approach is proposed in this paper. First, the density based spatial clustering of applications with noises (DBSCAN) is adopted to remove the outlier load profiles and obtain typical load patterns. Second, LPC is formulated as an optimization problem which considers both compactness and separation of the formed clusters. Then an improved Gravitational Search Algorithm (IGSA) is proposed to solve it. To improve the global search capabilities of the standard GSA, memory management strategies from PSO and multi-mutation/crossover/selection mechanisms from difference evolution are modified and adopted in this research. Finally, a case study is carried out to verify the feasibility and effectiveness of the proposed method, in which IGSA is compared with three other well-known clustering methods including K-means, PSO and GSA. The simulation results indicate that IGSA shows better performance in terms of the clustering quality.
机译:更深入地了解负载模式聚类(LPC)可以增强关于最终用户的电力消耗行为特征的知识,以改善公用事业公司需求侧响应方案和服务水平的设计。然而,诸如K-Means的传统聚类方法仅考虑所形成的群集的紧凑性而不考虑分离,这使得聚类结果不合理。此外,K-Means对初始质心敏感,易于陷入局部最佳。为解决这些问题,本文提出了一种基于元启发式优化的住宅LPC方法。首先,采用具有噪声(DBSCAN)的基于密度的空间聚类来删除异常负载配置文件并获得典型的负载模式。其次,LPC被配制成优化问题,其考虑形成的簇的紧凑和分离。然后提出改进的重力搜索算法(IGSA)来解决它。为了改善标准GSA的全球搜索能力,在本研究中修改和采用了来自PSO和多突变/交叉/选择机制的存储器管理策略。最后,进行案例研究以验证所提出的方法的可行性和有效性,其中将IGSA与三种其他公知的聚类方法进行比较,包括K-Mean,PSO和GSA。仿真结果表明,IGSA在聚类质量方面表现出更好的性能。

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