面向电力通信网现场可穿戴运维作业工单调度优化方法
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TN915.853

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面向电力通信现场的可穿戴运维技术研究与示范应用(070000KK52170008)项目资助


Method of work scheduling optimization for field operation and maintenance in electric power communication network
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    摘要:

    电力通信网现场可穿戴运维对于电力通信网以及智能电网的稳定和有效运营至关重要,为了保证电力通信网现场可穿戴运维作业质量和提高运维作业效率,本文提出了一种电力通信网现场可穿戴运维作业工单调度优化方法,促进现场可穿戴运维作业的高效实施。针对目前电力通信网现场工单调度业务特征,结合运维人员技能、作业资源等特点,描述并建立多资源约束下的现场可穿戴运维作业技能最大化与时间最优工单调度模型,然后使用改进病毒遗传算法进行求解。本文提供了对提出算法的实验评估,并通过数值算例验证了该算法在多资源约束下的现场可穿戴运维作业工单调度中的有效性和可行性。

    Abstract:

    The field operation and maintenance of power communication network is very important for the stable and effective operation of power communication network and smart grid. In order to ensure the quality of operation and maintenance of power communication network and improve the operation and maintenance operation efficiency, this paper presents a field of power communication network. The operation and maintenance work order scheduling optimization method promotes the efficient implementation of on-site operation and maintenance operations. Aiming at the characteristics of onsite work order dispatching in power communication networks, combined with the characteristics of operation and maintenance personnel and operating resources, a mathematical model for on-site operation and maintenance work order scheduling under multi-resource constraints is described and established, and then a virus genetic algorithm is used to solve the problem. This paper provides an experimental evaluation of the proposed algorithm and verifies the effectiveness and feasibility of the proposed algorithm in field job maintenance scheduling under multi-resource constraints.

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林密,洪杰,于祝芳,何书毅,张阳,吴伟明.面向电力通信网现场可穿戴运维作业工单调度优化方法[J].电子测量技术,2019,42(6):123-128

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  • 在线发布日期: 2021-08-03
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