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基于A-Workflow的电力仓储化资产盘活方法研究 被引量:3

Research on the method of revitalizing power storage assets based on A-Workflow
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摘要 近年来,随着电力体制改革各项举措稳步推进,电网智能化设备更换频率加快,导致电力仓储化固定资产闲置问题凸显,给电力企业流动资金正常运转造成了压力。传统的采购部门私有化使用和人工工单式管理方法无法解决目前电力大批量资产闲置问题。文章拟攻破电力仓储化资产孤岛封闭形势,以交叉、共需、共享的调整思路,结合大数据和信息化手段,实现电力资产数据共知共享的能力。提出一种A-Workflow自适应工作流的数据管理模型,辅以中间件模块流程关系引擎功能,实现资产自动化分配过程,选择扩展性较强的XML标记编辑语言,便于过程数据修改和解析,进一步提升管理模型的鲁棒性。以设计的模型可为电力企业降本增效提供有效策略。 In recent years,with the steady progress of various measures of power system reform and the acceleration of the replacement frequency of intelligent equipment in various fields of power grid,the problem of idle fixed assets of power warehousing has become prominent,which has put pressure on the normal operation of working capital of power enterprises.The traditional private use of purchasing department and manual work order management method can not solve the problem of large amount of idle power assets.This paper intends to break through the closed situation of the isolated island of electric power storage assets,and realize the ability of sharing electric power assets data by means of cross,common demand and sharing adjustment ideas,combined with big data and information technology means.In this paper,a data management model of a-workflow adaptive workflow is designed,which is supported by the function of process relation engine of middleware module to realize the asset automatic allocation process.XML markup editing language with strong expansibility is selected to facilitate the process data modification and analysis,and further improve the robustness of the management model.The model designed in this paper can provide an effective strategy for power enterprises to reduce costs and increase efficiency.
作者 张侃 张浩海 顾新桥 邝华树 李强 Zhang Kan;Zhang Haohai;Gu Xinqiao;Kuang Huashu;Li Qiang(Ningxia state owned Assets Investment Group Co.,Ltd.,Yinchuan 750004,China;Beijing Zhongdian Puhua Information Technology Co.,Ltd.,Beijing 100192,China)
出处 《粘接》 CAS 2021年第5期164-168,共5页 Adhesion
关键词 工作流 数据 管理 电力 Workflow data management power
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