Optimization algorithm of power system line loss management using big data analytics

Q2 Energy Energy Informatics Pub Date : 2024-12-04 DOI:10.1186/s42162-024-00434-z
Yang Li, Danhong Zhang, Ming Tang
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Abstract

As global energy demand continues to rise and renewable energy sources develop rapidly, the operational efficiency and stability of power systems have emerged as primary challenges in energy management. Line loss within these systems is a critical factor for both energy efficiency and economic performance. This study leverages an electric energy data management platform that facilitates the sharing of archival information, the development of line loss calculation models, and the automated computation of electricity and line loss formulas. This ensures accurate and real-time calculations of line losses in the power grid, supporting multi-time scale analyses and providing timely, comprehensive data for effective line loss management. The platform utilizes theoretical line loss values to identify anomalies, which are categorized into five types: topological relationships, archival information, data collection, electricity metering, and consumption behavior. In response to the abnormal monthly power imbalance rate of 220 kV and 110 KV stations, and the − 3.684% exceeding the − 1% assessment limit, the designed line loss management system service layer does not need to go deep into the bottom layer of the power system. It hides the complexity of the power grid through middleware and provides data, application, and security services.

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基于大数据分析的电力系统线损管理优化算法
随着全球能源需求的持续增长和可再生能源的快速发展,电力系统的运行效率和稳定性已成为能源管理的主要挑战。这些系统中的线路损耗是影响能源效率和经济性能的关键因素。本研究利用电能数据管理平台,促进档案信息共享,开发线损计算模型,自动计算电力和线损公式。这确保了电网中线损的准确和实时计算,支持多时间尺度分析,并为有效的线损管理提供及时、全面的数据。该平台利用理论线损值来识别异常,将其分为拓扑关系、档案信息、数据收集、电量计量和消费行为五种类型。针对220kv和110kv站月功率不平衡率异常,超过- 1%考核限值的- 3.684%,所设计的线损管理系统服务层不需要深入电力系统底层。它通过中间件隐藏电网的复杂性,并提供数据、应用程序和安全服务。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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