Equipment Management and Unmanned Aerial Vehicle Engineering School, Air Force Engineering University, Xi'an 710051, China.
College of Equipment Management and Support, Engineering University of PAP, Xi'an 710086, China.
Sensors (Basel). 2023 Jun 2;23(11):5295. doi: 10.3390/s23115295.
Fault diagnosis is crucial for repairing aircraft and ensuring their proper functioning. However, with the higher complexity of aircraft, some traditional diagnosis methods that rely on experience are becoming less effective. Therefore, this paper explores the construction and application of an aircraft fault knowledge graph to improve the efficiency of fault diagnosis for maintenance engineers. Firstly, this paper analyzes the knowledge elements required for aircraft fault diagnosis, and defines a schema layer of a fault knowledge graph. Secondly, with deep learning as the main method and heuristic rules as the auxiliary method, fault knowledge is extracted from structured and unstructured fault data, and a fault knowledge graph for a certain type of craft is constructed. Finally, a fault question-answering system based on a fault knowledge graph was developed, which can accurately answer questions from maintenance engineers. The practical implementation of our proposed methodology highlights how knowledge graphs provide an effective means of managing aircraft fault knowledge, ultimately assisting engineers in identifying fault roots accurately and quickly.
故障诊断对于修复飞机并确保其正常运行至关重要。然而,随着飞机复杂性的提高,一些依赖经验的传统诊断方法变得不太有效。因此,本文探讨了构建和应用飞机故障知识图,以提高维修工程师故障诊断效率。首先,本文分析了飞机故障诊断所需的知识要素,并定义了故障知识图的模式层。其次,本文以深度学习为主,启发式规则为辅,从结构化和非结构化故障数据中提取故障知识,并构建了某型飞机的故障知识图。最后,开发了基于故障知识图的故障问答系统,能够准确回答维修工程师提出的问题。我们提出的方法的实际实现强调了知识图如何为管理飞机故障知识提供有效的手段,最终帮助工程师准确、快速地识别故障根源。