基于hoeffding树学习的基于pmu的电压安全评估框架

Z. Nie, Duotong Yang, V. Centeno, Kevin D. Jones
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引用次数: 9

摘要

根据IEEE和CIGRE Task Force提出的电力系统稳定性的定义和分类,电压稳定性是指当系统受到给定运行条件(OC)的干扰时,电力系统中所有母线保持稳定电压幅值的稳定性。在电压不安全的情况下,电压崩溃引起的级联中断是很可能发生的。在这方面,快速响应和可靠的电压安全评估(VSA)对于系统在可想象的突发事件中生存是有效和不可或缺的。本文旨在建立一个利用同步相量和相量数据集中器(PDCs)的高速数据流进行电压安全评估的在线系统框架。定期更新决策树(DTs)已应用于电力系统安全评估的不同主题。然而,随着操作条件的训练数据集快速增长,重新训练和重构决策树成为一个耗时的过程。基于hoeffding -tree的方法构建了一个具有内存管理能力的学习器,可以在不保留完整的训练数据集的情况下实时处理流数据,保证了学习器的准确性。本文提出的基于快速决策树(VFDT)系统的电压安全评估方法在IEEE 118总线标准系统中进行了测试和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A PMU-based voltage security assessment framework using hoeffding-tree-based learning
According to the proposed definition and classification of power system stability addressed by IEEE and CIGRE Task Force, voltage stability refers to the stability of maintaining the steady voltage magnitudes at all buses in a power system when the system is subjected to a disturbance from a given operating condition (OC). Cascading outage due to voltage collapse is a probable consequence during insecure voltage situations. In this regard, fast responding and reliable voltage security assessment (VSA) is effective and indispensable for system to survive in conceivable contingencies. This paper aims at establishing an online systematic framework for voltage security assessment with high-speed data streams from synchrophasors and phasor data concentrators (PDCs). Periodically updated decision trees (DTs) have been applied in different subjects of security assessments in power systems. However, with a training data set of operating conditions that grows rapidly, re-training and restructuring a decision tree becomes a time-consuming process. Hoeffding-tree-based method constructs a learner that is capable of memory management to process streaming data without retaining the complete data set for training purposes in real-time and guarantees the accuracy of learner. The proposed approach of voltage security assessment based on Very Fast Decision Tree (VFDT) system is tested and evaluated by the IEEE 118-bus standard system.
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