The Performance Parameter Fault Diagnosis for Automobile Engine Based on ANFIS

Jianhua Zhang, Li-fang Kong, Z. Tian, Wei Hao
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引用次数: 5

Abstract

In order to solve the fault diagnosis problem of performance Parameter, Adaptive Neuro-Fuzzy inference system (ANFIS) was applied to build a fault diagnosis model of automobile engine and induce cloud model of fan-out, outputting results are continued. Through verification of the built diagnosis model with data of engine tests, it has been found that the recognition accuracy increase from 84.38% to 98.81%, training error falling from 0.001683 to 0.0011526. Simulation results show that the fitting ability, convergence speed and recognition accuracy of improved ANFIS model are all superior to ANFIS. So a contingent fault of automobile engine can be identified effectively. Moreover, it can effectively detect the performance parameter failure for the automobile engine.
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基于ANFIS的汽车发动机性能参数故障诊断
为了解决性能参数的故障诊断问题,应用自适应神经模糊推理系统(ANFIS)建立了汽车发动机的故障诊断模型,并引入了扇出云模型,输出结果进行了延续。通过对建立的诊断模型与发动机试验数据的验证,发现识别准确率从84.38%提高到98.81%,训练误差从0.001683下降到0.0011526。仿真结果表明,改进后的ANFIS模型的拟合能力、收敛速度和识别精度均优于ANFIS。这样可以有效地识别汽车发动机的偶然故障。此外,该方法还能有效地检测汽车发动机的性能参数故障。
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