基于LM神经网络的车载机电BIT状态预测研究

Chuang Guo, Yin-Hui Li, Jian Wang
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引用次数: 1

摘要

研究了基于LM神经网络的状态预测方法及其性能。给出了应用于车载机电BIT状态预测的方法。滑块油压影响并反映了发动机的运行状态,并将其作为典型的试验数据,验证了LM神经网络的有效性。结果表明,结合动态和历史信息的状态预测与综合分析,可以克服传统BIT诊断能力低、虚警率高等缺点。预测精度高,收敛速度快。
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Investigation on the State Prediction of the On-board Electromechanical BIT Based on the LM Neural Network
The method and performance for the state prediction based on the LM neural network was investigated. The way applied to the state prediction of on-board electromechanical BIT was provided. The slide oil pressure affects and reflects the run state of engine, which is adopted as the typical test data to validate the availability of LM neural network. Result shows that the state prediction and integrative analysis with the dynamic and history information can conquer such shortcomings as the low diagnose ability and high false alarm rate etc in the traditional BIT. The prediction precision is high and convergence rate is quick.
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