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A Belief Rule Based Expert System for Fault Diagnosis of Marine Diesel Engines

机译:基于信念规则的船用柴油机故障诊断专家系统

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摘要

Abstract:This paper proposes a new belief rule-based (BRB) expert system for fault diagnosis of marine diesel engines. The expert system is the first of its kind that consists of multiple concurrently activated BRB subsystems, in which each subsystem has its distinctive outputs and uses the evidential reasoning approach for inference. This novel modeling approach can be applied to identify fault modes that may co-exist. In essence, the group of BRB subsystems is used to model the nonlinear relationships between the fault features and the fault modes in marine diesel engines. The initial BRB expert system can be established by using expert experience and then optimized by using the data samples accumulated during the operation of marine diesel engines. Due to limitations in knowledge and data collected, ignorance is also considered in some BRB subsystems. The proposed BRB expert system is applied to abnormal wear detection for a kind of marine diesel engine. The performance of the BRB expert system is investigated in comparison with that of artificial neural network (ANN) models, support vector machine (SVM) models, and binary logistic regression model with fivefold cross-validation. The results show that the BRB expert system can be used for fault diagnosis of marine diesel engines in a probabilistic manner, which outperforms the ANN models, SVM models, and the binary logistic regression model in terms of accuracy and stability, and can effectively identify concurrent faults.
机译:摘要:本文提出了一种新的基于信念规则的专家系统,用于船用柴油机故障诊断。专家系统是此类系统中的第一个,它由多个同时激活的BRB子系统组成,其中每个子系统都有其独特的输出并使用证据推理方法进行推理。这种新颖的建模方法可以应用于识别可能共存的故障模式。本质上,BRB子系统组用于对船用柴油机故障特征与故障模式之间的非线性关系进行建模。最初的BRB专家系统可以通过使用专家经验来建立,然后通过使用船用柴油机运行期间积累的数据样本进行优化。由于知识和所收集数据的限制,在某些BRB子系统中也考虑了无知。提出的BRB专家系统被应用于一种船舶柴油机的异常磨损检测。与人工神经网络(ANN)模型,支持向量机(SVM)模型和具有五重交叉验证的二进制逻辑回归模型相比,对BRB专家系统的性能进行了研究。结果表明,BRB专家系统可以概率性地用于船用柴油机故障诊断,在准确性和稳定性方面优于ANN模型,SVM模型和二元Logistic回归模型,可以有效地识别并发故障。故障。

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