Inicio  /  Applied Sciences  /  Vol: 9 Par: 13 (2019)  /  Artículo
ARTÍCULO
TITULO

Construction of an Industrial Knowledge Graph for Unstructured Chinese Text Learning

Mingxiong Zhao    
Han Wang    
Jin Guo    
Di Liu    
Cheng Xie    
Qing Liu and Zhibo Cheng    

Resumen

The industrial 4.0 era is the fourth industrial revolution and is characterized by network penetration; therefore, traditional manufacturing and value creation will undergo revolutionary changes. Artificial intelligence will drive the next industrial technology revolution, and knowledge graphs comprise the main foundation of this revolution. The intellectualization of industrial information is an important part of industry 4.0, and we can efficiently integrate multisource heterogeneous industrial data and realize the intellectualization of information through the powerful semantic association of knowledge graphs. Knowledge graphs have been increasingly applied in the fields of deep learning, social network, intelligent control and other artificial intelligence areas. The objective of this present study is to combine traditional NLP (natural language processing) and deep learning methods to automatically extract triples from large unstructured Chinese text and construct an industrial knowledge graph in the automobile field.