利用局部放电数据分析旋转机械资产维修需求的方法

R. Kuppuswamy
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引用次数: 0

摘要

在线局部放电(PD)测量一直是评估发电机和电动机定子绕组状态的有效手段。管理这类资产的人有责任将服务中断的风险降至最低。有效的管理方法是将维护资金只分配给需要立即关注的资产,而延迟或跳过其他资产的维护。列出表现最差资产的常见做法是使用基于PD脉冲幅度、其重复率或其衍生物的预设标准。这些指标是不可靠的,因为电绝缘内部的PD活动可以在不改变电绝缘物理条件的情况下加速或减速。使用它们来筛选表现最差的资产通常会导致错误的识别,并浪费时间和资源来调查错误的资产。因此,需要一种更好的方法来识别和分析资产的维护需求。本文描述了一种利用PD测量数据识别船队中表现最差的资产并确定是否需要采取维护行动的方法。车队筛选工具是基于对PD活动中电气绝缘吸收的破坏性能量采样的估计,并将其长期累积值与基本分布进行比较,基本分布实际上是大量类似资产实际耗电量年平均值的历史数据库。这个工具提供了一个快速和可用的结果:人口中有多少类似的资产遭受了比任何给定资产更大的损害。这使得资产所有者可以对资产进行优先维护,并将服务中断的风险降至最低。给出了实现的一个示例。
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Method to Profile the Maintenance Needs of a Fleet of Rotating Machine Assets using Partial Discharge Data
Online partial discharge (PD) measurements have long been used as an effective means to evaluate the condition of the stator windings of generators and motors. Those who manage a fleet of such assets have the responsibility to minimize the risk of disruption in service. The efficient way of managing is to allocate maintenance funds only to the asset(s) that needs immediate attention and to delay or skip maintenance for the rest in the population. The common practice to shortlist the worst performing assets is to use preset criteria based on PD pulse magnitude, its repetition rate or its derivatives. These metrics are unreliable as PD activity inside electrical insulation can accelerate or decelerate without a change in the physical condition of the electric insulation. Using them to shortlist the worst performing assets often results in incorrect identification and wastage of time and resources investigating the wrong bunch. Therefore, a better method to identify and profile the maintenance needs of an asset is needed. In the paper, a method to identify the worst performing assets in a fleet and determine if maintenance action is needed using PD measurement data is described. The fleet screening tool is based on the estimation of a sampling of destructive energy absorbed by the electrical insulation from PD activity and comparing its longterm accumulated values against a base distribution which is effectively a historical database of annual averages of actual power dissipated by a large population of similar assets. This tool provides a quick and usable result: what percent of similar assets in the population have suffered more damage than any given asset. This allows the asset owner to prioritize the asset for maintenance and minimize the risk of disruption in service. An example of the implementation is illustrated.
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