论文标题
大规模功率故障的异质恢复
Heterogeneous recovery from large scale power failures
论文作者
论文摘要
从飓风到野火的几乎所有自然灾害都引起了大规模的电力故障。一个根本的问题是,政府政策的指导是否能够应对各种干扰的挑战。由于缺乏在运营能源网格上共享大规模的颗粒数据,揭示服务局限性的污名以及复杂的恢复以及政策和客户的复杂恢复,因此对此问题的先前研究很少。因此,对于极端事件,量化和第一手信息都缺乏能力和能源服务的基本限制。此外,指导恢复的政府政策通常会因事先研究而遥不可及。这项工作通过两个普遍采用的政策指导的恢复视角研究了基本问题。我们从非平稳数据中开发了有关无监督学习的数据分析。在过去的九年中,在纽约州和马萨诸塞州的两个服务区域的运营分配网格中,数据跨越中等到极端的失败事件。我们表明,在有利于大型故障的优先级策略下,恢复表现出令人惊讶的缩放属性,可以抵消基础设施漏洞的故障缩放。但是,随着故障事件的严重性,异质恢复扩大:无法优先考虑的大失败将客户中断时间增加47倍。而且,长时间的小失败占据了恢复的整个时间演变。
Large-scale power failures are induced by nearly all natural disasters from hurricanes to wild fires. A fundamental problem is whether and how recovery guided by government policies is able to meet the challenge of a wide range of disruptions. Prior research on this problem is scant due to lack of sharing large-scale granular data at the operational energy grid, stigma of revealing limitations of services, and complex recovery coupled with policies and customers. As such, both quantification and firsthand information are lacking on capabilities and fundamental limitation of energy services in response to extreme events. Furthermore, government policies that guide recovery are often sidelined by prior study. This work studies the fundamental problem through the lens of recovery guided by two commonly adopted policies. We develop data analysis on unsupervised learning from non-stationary data. The data span failure events, from moderate to extreme, at the operational distribution grid during the past nine years in two service regions at the state of New York and Massachusetts. We show that under the prioritization policy favoring large failures, recovery exhibits a surprising scaling property which counteracts failure scaling on the infrastructure vulnerability. However, heterogeneous recovery widens with the severity of failure events: large failures that cannot be prioritized increase customer interruption time by 47 folds. And, prolonged small failures dominate the entire temporal evolution of recovery.