BA-IKG: BiLSTM Embedded ALBERT for Industrial Knowledge Graph Generation and Reuse

Bin Zhou, Jinsong Bao, Yahui Liu, Dengqiang Song
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引用次数: 5

Abstract

As the industrial production mode is shifting towards digitalization and intelligence in the new era. Enterprises put forward higher requirements for efficient processing and utilization of accumulated unstructured data. At present, the knowledge and data contained in a large number of unstructured documents are scattered. The types of entities and relationships are diverse. And the constraints of production rules are complicated, which increases the difficulty of knowledge management and utilization. Therefore, this paper studies the semantic knowledge graph generation and reuse method for industrial documents, which can form standardized production resources, the knowledge related to the industry, and question and answer strategies for industrial processing. The challenge of the research is to explore a feasible process knowledge model and efficient industrial information extraction method to effectively provide structured knowledge of process documents. We build process knowledge representation models and information extraction models and algorithms based on process knowledge representation model and natural language processing. The entities and relations of the main production factors are extracted. The knowledge representation model associates the extracted entities and relations to form an industrial knowledge graph, which provides information support for processing knowledge retrieval and question answering methods. Finally, the approach is evaluated by employing the aerospace machining documents. And the proposed method can obtain valuable information in the document and improve utilization of industrial unstructured data.
基于BiLSTM嵌入式ALBERT的工业知识图生成与重用
随着新时代工业生产方式向数字化、智能化转变。企业对积累的非结构化数据的高效处理和利用提出了更高的要求。目前,大量非结构化文档中所包含的知识和数据是分散的。实体和关系的类型多种多样。生产规则约束复杂,增加了知识管理和利用的难度。因此,本文研究了工业文档的语义知识图生成和重用方法,可以形成标准化的生产资源、与工业相关的知识以及工业加工的问答策略。探索一种可行的过程知识模型和高效的工业信息提取方法,有效地提供过程文档的结构化知识是本研究的挑战。在过程知识表示模型和自然语言处理的基础上,建立了过程知识表示模型和信息提取模型及算法。提取了主要生产要素的实体和关系。知识表示模型将抽取的实体和关系关联起来,形成工业知识图,为处理知识检索和问答方法提供信息支持。最后,利用航空航天加工文献对该方法进行了评价。该方法可以从文档中获取有价值的信息,提高工业非结构化数据的利用率。
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