基于超网络和深度结构化语义模型的核电反应堆冷却剂系统布局设计知识检索方法

Bin Wang, Bingtao Hu, Zhifeng Zhang, Yixiong Feng, Jianrong Tan
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引用次数: 0

摘要

核动力反应堆冷却剂系统布置图设计需要大量的知识,需要满足多个学科的要求,在设计过程中会浪费设计者大量的时间去检索相关知识。为了高效准确地获取知识,提出了一种基于超网络和深度结构化语义模型(DSSM)的知识检索方法。知识超网络模型由设计器子网络、设计任务子网络和设计知识资源子网络组成。每个子网络中的节点和不同子网络之间的节点通过特殊的边缘连接起来,这些边缘表示关联度信息。然后利用改进的DSSM模型在语义层面评估超网络中用户查询信息与知识元素之间的相关性。基于语义层面的相关性获得相关分数,分数较低的知识元素在此过程中被移除。最后,利用贝叶斯方法计算知识推荐概率,得到相关度最高的知识检索结果。根据计算出的概率,将知识检索结果由高到低排序。案例研究表明,该方法能够有效地捕获语义层面的相关性,支持高效、准确的知识检索服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Knowledge Retrieval Method for Layout Design of Nuclear Power Reactor Coolant System Based on Hypernetwork and Deep Structured Semantic Model
The layout design of nuclear power reactor coolant system requires a large amount of knowledge that satisfies many disciplines, which will waste designers a lot of time retrieving relevant knowledge in the design process. In order to obtain the knowledge efficiently and accurately, a knowledge retrieval method based on hypernetwork and deep structured semantic model (DSSM) was proposed. The knowledge hypernetwork model consisted of a designer sub-network, a design task subnetwork, and a design knowledge resource sub-network. Nodes in each sub-network and between different sub-networks were connected through special edges, which represented correlation degree information. Then an improved DSSM model was used to evaluate relevance at the semantic level between user query information and knowledge elements in hypernetwork. Correlation scores will be obtained based on relevance at the semantic level, and knowledge elements with lower scores will be removed during the process. Finally, the Bayesian method was used to calculate the knowledge recommendation probability to obtain the most relevant knowledge retrieval results. The knowledge retrieval results were sorted from high to low according to the calculated probability. A case study conducted in this work showed that the proposed approach was effective in capturing relevance at the semantic level and supporting efficient and accurate knowledge retrieval services.
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