OLPD condition monitoring of complete networks for oil and gas: challenges and solutions explained through case studies

A. Polley, R. Giussani, D. Bhattacharya, M. Seltzer-Grant, M. Marcarelli
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引用次数: 6

Abstract

This paper provides an overview of the development and case studies from installations of On-line Partial Discharge (OLPD) Condition Monitoring (CM) systems for complete MV and HV networks in the Oil and Gas industry. The range and number of assets and geographical spread coupled with problems of restricted access and security present a particular set of challenges for the field installation of such systems. A solution based on OLPD sensors and monitors installed at strategic locations in the network is presented. It is important for OLPD monitoring to separate noise from PD and identify the different types of PD which can be detected. This is achieved by using multiple PD sensors and the monitoring system signal analysis software. A software architecture solution is presented explaining a client/server system that integrates with a SCADA network whilst maintaining the richness of data required to make diagnostic decisions. This allows to handle the large set of data and make the results easily accessible to maintenance engineers and asset managers.
油气完整网络的OLPD状态监测:挑战与解决方案
本文概述了在线局部放电(OLPD)状态监测(CM)系统在石油和天然气行业中完整的中压和高压网络中的发展和案例研究。资产的范围和数量以及地理分布,再加上进出和安全受到限制的问题,对现场安装这种系统提出了一系列特别的挑战。提出了一种基于OLPD传感器和监视器安装在网络中的战略位置的解决方案。从局部放电中分离噪声,识别可检测到的不同类型局部放电,是OLPD监测的重要内容。这是通过使用多个PD传感器和监测系统信号分析软件来实现的。提出了一个软件架构解决方案,解释了一个客户端/服务器系统,该系统与SCADA网络集成,同时保持诊断决策所需的数据丰富性。这允许处理大量数据,并使维护工程师和资产管理人员可以轻松访问结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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