电力公司服务管理建模的随机方法

Iochane Garcia Guimaraes, V. Garcia, Daniel Pinheiro Bernardon
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引用次数: 0

摘要

这项工作提出了一种基于历史数据的方法,对配电公司所覆盖的某些地区发生紧急订单的概率进行建模,以促进商业订单的进一步主动路由。提出的方法旨在减少平均服务时间,平均服务时间定义为旅行时间加上执行时间的总和。另一个问题是这类订单的优先级,与商业订单相比,紧急订单的优先级更高。通过首先对五个工作日(从周一到周五)的历史数据进行分层,可以进行与紧急服务相关的工作订单预测,从而进一步从所有可用团队的总工作日时间中扣除这些时间。一个给定的案例研究显示了如何应用这种方法来预测紧急秩序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic methodology for service management modeling in electric power utilities
This work proposes a methodology to modeling the probability of occurrences of emergency orders in certain regions covered by an electricity distribution utility based on the historical data, in order to promote a further pro-active routing of the commercial orders. The methodology proposed aims to reduce the average service time, which is defined as the sum of the travelling time plus the execution time. The other concern refers to the priority of this type of orders, being the emergency orders of high priority when compared to the commercial ones. By first stratifying the historical data over five week days, from Monday to Friday, one can conduct a work order forecasting related to emergency services, to further discount these amount of time from the total workday hours of all available teams. A given case study has shown how one could apply this methodology to predict emergency order.
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