基于知识图谱和改进FP-Growth的电力技能培训知识库构建

Jiabing Han, Yukai Li, Quan Wang, Meng Yang, Jun Zhao, Jinhui Zhao
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引用次数: 0

摘要

本文在分析电网技能培训特点的基础上,设计了基于知识映射的电力技能培训知识库模型,该模型包括两个层次和四个基本要素。提出了一种考虑兴趣值系数的改进FP-Growth算法,该算法可以过滤掉频繁项中的无效学习访问。本文初步建立了电力技能培训知识库。选择知识库中部分学员的学习数据更新资源关联关系。更新后的培训知识库丰富了资源关联关系,实现了多岗位、多能力之间的资源挖掘与整合。电力技能培训知识库可以为电力技术人员提供智能化、个性化的技能培训平台,提高员工的技能水平,进一步保障电网的安全可靠运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power skill training knowledge base construction based on knowledge map and improved FP-Growth
This paper designs the power skill training knowledge base model based on the knowledge mapping, which includes two levels and four basic elements, based on the analysis of the characteristics of power grid skill training. An improved FP-Growth algorithm considering interest value coefficient is proposed, which can filter the invalid learning access out of the frequent items. In this paper, the power skill training knowledge base is preliminarily established. The learning data of some trainees in the knowledge base are selected to update the resource association relationship. The updated training knowledge base enriches the resource association relationship, realizing the resource mining and integration among multiple posts and capabilities. The power skill training knowledge base can provide an intelligent and personalized skill training platform for power technical staff, to improve the skill level of staff, and further ensure the safe and reliable operation of the power grid.
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