Analysis of distribution network reliability based on distribution automation technology

Q2 Energy
Liao Qinglong, Wu Xiaodong, Xie Song, Xaio Xiang, Peng Bo
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引用次数: 0

Abstract

The growing complexity and need for electricity in contemporary grids have resulted in an increased dependence on Distribution Automation Technology (DAT) to improve the effectiveness and reliability of distribution networks. Automation technologies, like smart sensors and fault detection systems, are critical for enhancing operational efficiency and lowering power outages in distribution networks. This study investigates the influence of distribution automation on the dependability of electricity networks, concentrating on important functional metrics and their relationship with network efficiency. Objectives: The main objective of this research is to examine the factors that influence the reliability of distribution networks, with a focus on distribution automation technology. This study uses a variety of efficiency indicators, like automation coverage, fault detection time, and consumer complaints, to discover the primary factors of network reliability. This paper introduced the Reliability-Optimized Meta-Learning Ensemble (ROME) algorithm, which seeks to predict the reliability category of various areas using these indicators. Methodology: This study utilizes the Distribution Network Reliability Dataset, which includes several areas with a variety of characteristics such as network age, automation coverage, smart sensor installation, power outages, fault detection time, and other operational metrics. The ROME algorithm is used, which integrates numerous base models (SVM, Random Forest, MLP) and a meta-learner (Gradient Boosting) to predict each region’s Reliability Category (High, Medium, Low). The dataset is thoroughly preprocessed, which includes mean and mode imputation, label encoding, standardization, and SMOTE balancing. Recursive Feature Elimination (RFE) is used for feature selection. Results: The findings show a strong correlation between automation coverage, fault detection time, and reliability category. When compared to traditional classification techniques, the ROME algorithm surpassed SVM, RF, MLP, and GB models with 94.7% accuracy, 0.18 Log-Loss, 91.2% Jaccard Index, 0.08% fall-out, and 95.3% specificity. Conclusion: This research emphasizes the value of distribution automation in improving network reliability. Utilities and grid operators can use the ROME algorithm to better predict and enhance network reliability. The results highlight the requirement for targeted investments in automation technologies, particularly in regions with lower reliability scores, to guarantee sustainable and effective electricity distribution.

基于配电自动化技术的配电网可靠性分析
现代电网日益增长的复杂性和对电力的需求导致越来越依赖于配电自动化技术(DAT)来提高配电网络的有效性和可靠性。自动化技术,如智能传感器和故障检测系统,对于提高配电网络的运行效率和降低停电率至关重要。本研究探讨了配电自动化对电网可靠性的影响,重点讨论了重要的功能指标及其与电网效率的关系。目的:本研究的主要目的是研究影响配电网可靠性的因素,重点是配电网自动化技术。本研究采用自动化覆盖率、故障检测时间、消费者投诉等多种效率指标来发现影响网络可靠性的主要因素。本文介绍了可靠性优化元学习集成(ROME)算法,该算法旨在利用这些指标预测各个领域的可靠性类别。方法:本研究利用配电网络可靠性数据集,其中包括几个具有各种特征的领域,如网络年龄、自动化覆盖范围、智能传感器安装、停电、故障检测时间和其他操作指标。使用ROME算法,该算法集成了许多基本模型(SVM, Random Forest, MLP)和元学习器(Gradient Boosting)来预测每个区域的可靠性类别(高,中,低)。对数据集进行了全面的预处理,包括均值和模式输入、标签编码、标准化和SMOTE平衡。递归特征消除(RFE)用于特征选择。结果:研究结果显示自动化覆盖率、故障检测时间和可靠性类别之间存在很强的相关性。与传统的分类技术相比,ROME算法的准确率为94.7%,Log-Loss为0.18,Jaccard Index为91.2%,fallout为0.08%,特异性为95.3%,优于SVM、RF、MLP和GB模型。结论:本研究强调了配电自动化对提高电网可靠性的价值。公用事业和电网运营商可以使用ROME算法更好地预测和提高网络可靠性。研究结果强调了对自动化技术进行有针对性投资的需求,特别是在可靠性得分较低的地区,以保证可持续和有效的电力分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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