Conceptual design of a decision knowledge service model integrating a multi-agent supply relationship diagram for electric power emergency equipment.

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Frontiers in Big Data Pub Date : 2025-06-06 eCollection Date: 2025-01-01 DOI:10.3389/fdata.2025.1603106
Jiandong Si, Chang Liu, Jingxian Ye, Jianfeng Wu, Jianguo Wang, Kairui Hu, Chunhua Ju, Qianwen Cao
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引用次数: 0

Abstract

Introduction: The decision regarding the supply of emergency equipments for power emergencies requires timeliness, efficiency, and accuracy. The multi-agent supply relationship graph, based on complex data fusion, enables the comprehensive exploration of interconnections among key entities in power emergency supplies.

Methods: This approach enhances decision-making efficiency and quality by uncovering multiple relationships between main bodies involved. The present study focuses on the decision-making process for power emergency equipments supply and aims to enhance its professionalization. To achieve this goal, multi-modal data regarding power emergency equipments supply is collected from both internal and external power enterprises. Subsequently, a decision support knowledge base is established, along with a four-dimensional relationship graph that integrates events, time, equipments, and suppliers based on the knowledge graph. This enables the mining of multidimensional relationships pertaining to the main body. Finally, supported by the graph, the platform can offer intelligent assistance in decision-making, supplier recommendation, optimization of emergency equipment scheduling for electric power supply, and provides effective information and guidance for decision-making in electric power emergency equipment supply.

Results: After conducting a comparative analysis, the decision support system based on the knowledge graph proposed in this study demonstrates superior effectiveness and precision. By integrating the four-dimensional relationship graph with data mining algorithms, precise decision support can be provided for power emergency response. After verification through case studies, the model developed in this study was utilized to recommend suppliers of power emergency equipment, and the recommendation results demonstrated a closer alignment with actual procurement outcomes.

Conclusion and recommendation: This system proposed by this study delivers multidimensional knowledge guidance and optimized decision pathways for emergency supply management.

集成多智能体供电关系图的电力应急设备决策知识服务模型概念设计。
导论:电力应急设备供应的决策要求时效性、高效性和准确性。基于复杂数据融合的多智能体供电关系图,可以全面探索电力应急供电中关键实体之间的互联关系。方法:通过揭示决策主体之间的多重关系,提高决策效率和决策质量。本文主要研究电力应急设备供应决策过程,旨在提高其专业化程度。为了实现这一目标,从电力企业内部和外部收集电力应急设备供应的多模态数据。建立了决策支持知识库,并在此基础上构建了事件、时间、设备、供应商的四维关系图。这使得挖掘与主体相关的多维关系成为可能。最后,在图形的支持下,平台可以在供电应急设备的决策、供应商推荐、优化调度等方面提供智能辅助,为电力应急设备的供电决策提供有效的信息和指导。结果:经过对比分析,本研究提出的基于知识图谱的决策支持系统具有较好的有效性和准确性。将四维关系图与数据挖掘算法相结合,为电力应急响应提供精确的决策支持。通过案例研究验证,将本研究建立的模型用于电力应急设备供应商推荐,推荐结果与实际采购结果更加吻合。结论与建议:本研究提出的系统为应急供应管理提供了多维度的知识指导和优化的决策路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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