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首页> 外文期刊>IBM Journal of Research and Development >Asset health management using predictive and prescriptive analytics for the electric power grid
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Asset health management using predictive and prescriptive analytics for the electric power grid

机译:使用预测性和规范性分析进行电网资产健康管理

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摘要

Electric utilities make up an asset-intensive industry with a broad geographical spread of assets, such as poles, transformers, cables, and switchgear. The utilities face a backlog of aging assets that are pending replacement. Increasingly, a consensus has been reached on moving away from time-based maintenance planning of assets to developing a proactive and smarter asset health management program to meet the competing constraints of reducing customer downtimes, meeting regulatory standards, and managing ever-expanding infrastructure within budget. Incomplete information, fragmented data, and a diversity of asset classes collectively make a holistic assessment of the grid extremely challenging. Working with DTE Energy and Alliander N.V., IBM Research has developed advanced analytics to model asset health and network reliability by predicting the aging of assets, identifying the remaining lifecycle, and computing the network robustness. The analytics exploit data from multiple systems such as enterprise asset management, work management, geographic information systems, supervisory control and data acquisition systems, advanced metering infrastructure, weather systems, and outage management systems. The algorithms systematically evaluate asset health and prioritize preventive, proactive, and corrective maintenance strategies for all asset classes in the electrical network. We describe outcomes, summarizing an overall health score and risk ranking along with a suggested optimal maintenance strategy considering budgetary constraints.
机译:电力公用事业是资产密集型行业,其资产的地域分布广泛,例如电线杆,变压器,电缆和开关设备。该实用程序面临着待更换的老化资产的积压。越来越多的人达成共识,从基于时间的资产维护计划转变为制定主动,更智能的资产健康管理程序,以满足减少客户停机时间,满足监管标准以及在预算范围内管理不断扩展的基础架构的竞争性约束。 。信息不完整,数据零散以及资产类别的多样性共同使对网格的整体评估极具挑战性。 IBM Research与DTE Energy和Alliander N.V.合作,开发了先进的分析工具,可通过预测资产的老化,识别剩余的生命周期并计算网络的健壮性来对资产运行状况和网络可靠性进行建模。分析利用来自多个系统的数据,例如企业资产管理,工作管理,地理信息系统,监督控制和数据采集系统,高级计量基础设施,天气系统和停电管理系统。该算法系统地评估资产健康状况,并为电网中的所有资产类别确定预防,主动和纠正性维护策略的优先级。我们描述了结果,总结了总体健康评分和风险等级,以及考虑预算限制的建议最佳维护策略。

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