发电机组自动发电控制性能评估的数据挖掘方法

Zijiang Yang, Jiandong Wang, Song Gao, X. Pang
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引用次数: 0

摘要

发电机组自动发电控制(AGC)的目的是使已产生的有功功率对电网中心调度的所需有功功率作出满意的响应。本文提出了一种数据挖掘方法来估计评价发电机组AGC性能的响应延迟、快速和准确三个指标。该方法由两部分组成。第一部分是通过矩阵剖面技术从期望和产生的有功功率的长期数据样本中选择数据段。第二部分是根据期望有功功率和生成有功功率之间的动态模型估计性能指标,其中该模型是通过根据所选数据段的系统识别技术构建的。提出的方法解决了一个主要的挑战,即性能指标是为阶跃响应定义的,但实际所需的有功功率以各种形式变化,其中许多形式不适合进行性能评估。给出了一个工业实例来支持所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-mining Method to Assess Automatic Generation Control Performance of Power Generation Units
Automatic generation control (AGC) of power generation units aims at providing a satisfactory response of generated active power to desired active power dispatched from a power grid center. This paper proposes a data-mining method to estimate three metrics assessing the AGC performance of power generation units in terms of response latency, rapidity and accuracy. The proposed method is composed by two parts. The first part is to select data segments via a matrix profile technique from long-term data samples of the desired and generated active powers. The second part is to estimate performance metrics from a dynamic model between the desired and generated active powers, where the model is built by a system identification technique from the selected data segments. The proposed method resolves a major challenge that the performance metrics are defined for step responses, but the desired active power in practice changes in various forms, many of which are not suitable for performance assessments. An industrial example is provided to support the proposed method.
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