ML自给自足的可持续能源弹性管理系统:停电预测,分类和恢复与维护指标的所有类型的停电

Susan Oluropo Adedokun, Zhenhua Luo, Patrick Luk, N. Balta-Ozkan, Mohammad Farhan Khan, Xin Zhang
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引用次数: 0

摘要

电力系统弹性研究主要集中在运行规划、优化和控制策略上,以恢复极端事件和自然灾害造成的停电后的关键负荷,这些事件具有高影响、低概率事件的特征。对其他事件(包括高影响、高概率的停电)的弹性研究缺乏,这些研究将技术故障分类。然而,停电比例最高的是设备故障和技术相关故障。很少有机器学习研究涵盖停电预测和恢复,包括所有类型停电的弹性方法。本研究提出了一个弹性管理系统框架,结合维护指标,适用于不同事件造成的所有类型的停电,特别是在发展中国家,高达60%的停电与技术相关。采用了一种新颖的框架,结合机器学习分类和回归。该模型以尼日利亚四个州的实际历史负荷流和停电中断情况进行了验证。研究结果揭示了不同地点因不同原因造成的复杂多重停电。继电器目标指示值为91.8%,停电类型分类准确率为85%,启动时间回归(R)值为1,表明可以准确预测所有类型停电的发生,包括可以使用自给自足、可持续的能源资源来增强电力系统弹性的维护目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ML Self-Sufficient Sustainable Energy Resiliency Management System: Outage Forecasting, Classification and Restoration with Maintenance Indicators for All Types of Power Outages
Power systems resiliency studies focus largely on operational planning, optimization, and control strategies to restore critical loads, after blackouts from extreme incidents, and natural disasters, which characterize high-impact, low-probability events. There is a lacuna of resiliency studies of other events, including blackouts with high-impact, high-probability, which classify technical faults. However, the highest percentage of blackouts are from equipment failure technical related faults. Few ML studies cover both outage forecasting and restoration, including resiliency methods for all types of power outages. This study presents a resiliency management system framework, incorporating maintenance indicators, for all types of outages from different events, particularly in developing countries, where up to 60% of blackouts are technical related. A novel framework, with machine learning classification and regression is applied. The model is validated with real historic load flows and outage interruptions of four Nigeria states. Results reveal complex multiple power outages due to different causes at different locations. A relay target indication of 91.8%, an outage type classification accuracy of 85%, and a start time regression (R) value of one, signify that the onset of all types of power outages can be predicted accurately, including indication of maintenance targets where self-sufficient, sustainable energy resources can be applied to enhance power system resilience.
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