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Data mining for detection of sensitive buses and influential buses in a power system subjected to disturbances

机译:数据挖掘,用于检测受干扰的电力系统中的敏感母线和有影响力的母线

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Many kinds of major disturbances in the power system could lead to system load reduction. It is very challenging and useful for the system dispatcher to grasp the knowledge about whether some substations exist whose load reductions resulting from the disturbances are consistently more serious than others. In this paper, the data-mining technique is applied to a power system in Hong Kong to detect the substations most sensitive to the disturbances. Two indexes are defined to measure the severity of load reduction. By statistical analysis, the most sensitive substations can be discovered, which are confirmed to be the case by the experts working in the power system. Furthermore, based on the voltage-profile correlation analysis, the influential buses where the most effective voltage adjustment may be strategically applied to assist a sensitive bus to recover from the severe voltage fluctuation arising from the disturbance can be deduced.
机译:电力系统中的许多主要干扰都可能导致系统负载降低。对于系统调度员来说,掌握有关是否存在某些变电站的知识是非常具有挑战性和实用的,这些变电站由于干扰而导致的负荷降低始终比其他变电站更为严重。本文将数据挖掘技术应用于香港的电力系统,以检测对干扰最敏感的变电站。定义了两个指标来衡量减轻负载的严重性。通过统计分析,可以发现最敏感的变电站,这是由电力系统专家确认的。此外,基于电压分布相关性分析,可以推断出可以有效地调节最有效电压以帮助敏感总线从干扰引起的严重电压波动中恢复的有影响力的总线。

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