Knowledge Modeling in Troubleshooting

IF 0.1 Q4 ENGINEERING, MULTIDISCIPLINARY Engineering Technologies and Systems Pub Date : 2021-09-30 DOI:10.15507/2658-4123.031.202103.364-379
V. Dimitrov, L. Borisova
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Abstract

Introduction. The article describes the approach to solving the problem of complex technical system troubleshooting based on expert knowledge modeling. Intelligent information systems are widely used to solve the problems of diagnostics of multilevel systems including combine harvesters. The formal description of the subject domain knowledge is the framework for building the knowledge base of these systems. The sequence of creating an expert system knowledge base in accordance with production rules is considered. Materials and Methods. The approach is founded on the fault function table. As the object of diagnostics, one of the subsystems of the combine harvester electric equipment “opening the hopper roof flaps” is considered. The basis for constructing a sequence of elementary checks is a system of logical equations describing both the serviceable and possible faulty states of the subsystem. Results. A structural logic model is developed. As a result of analyzing the fault function table, the sets of elementary checks are determined. Four criteria have been used to analyze the weight of these checks. The authors have determined optimal sequence of checks and have developed a decision tree, which allows finding the cause of the malfunction and is the basis for creating the knowledge base of an intelligent information system. A fragment of the knowledge base is given. Discussion and Conclusion. The proposed approach of expert knowledge modelling increases the efficiency of the unit for troubleshooting of the intelligent decision support system. It makes possible to structure the base of expertise and establishing the optimal sequence of elementary checks. This allows determining the optimal sequence of application of the knowledge base production rule that makes it possible to reduce the time of restoring the serviceability of combines.
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故障排除中的知识建模
介绍。本文介绍了一种基于专家知识建模的复杂技术系统故障排除方法。智能信息系统被广泛应用于解决包括联合收割机在内的多级系统的诊断问题。学科领域知识的形式化描述是构建这些系统知识库的框架。考虑了按照生产规则创建专家系统知识库的顺序。材料与方法。该方法建立在故障函数表的基础上。以联合收割机电气设备的子系统之一“打开料斗顶盖”为诊断对象。构造一系列基本检查的基础是一个描述子系统的可用状态和可能的故障状态的逻辑方程系统。建立了结构逻辑模型。通过对故障功能表的分析,确定了初级检查的集合。使用了四个标准来分析这些检查的权重。作者确定了最优的检查顺序,并建立了一个决策树,可以找到故障的原因,是创建智能信息系统知识库的基础。给出了知识库的一个片段。讨论与结论。提出的专家知识建模方法提高了智能决策支持系统故障排除单元的效率。这使得构建专业知识库和建立最优的初级检查顺序成为可能。这样就可以确定知识库生产规则的最佳应用顺序,从而可以缩短联合收割机恢复使用能力的时间。
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来源期刊
Engineering Technologies and Systems
Engineering Technologies and Systems ENGINEERING, MULTIDISCIPLINARY-
自引率
33.30%
发文量
29
审稿时长
12 weeks
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