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ANN-based Virtual Sensor for On-line Prediction of In-cylinder Pressure in a Diesel Engine

机译:基于ANN的虚拟传感器用于柴油机缸内压力的在线预测

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This study presents the process design and tune-up of robust artificial neural networks (ANN) to be used as virtual sensors for the diagnosis of a three-cylinder Diesel engine operating at various conditions. Particularly, a feed-forward neural network based on radial basis functions (RBF) is employed. The use of different radial basis functions, and their relevant parameters, is investigated in detail, with their effect on the network accuracy. The RBF network is validated using data not included in training, showing good correspondence between measured and reconstructed pressure signal. The accuracy of the predicted pressure signals is analyzed in terms of mean square error and in terms of a number of pressure-derived parameters. Results are promising in terms of performance and accuracy, both for the predicted pressure signals and for the pressure-derived engine parameters that can be used in a closed loop engine control system.
机译:这项研究提出了鲁棒的人工神经网络(ANN)的过程设计和调试,将其用作诊断在各种条件下运行的三缸柴油机的虚拟传感器。特别地,采用基于径向基函数(RBF)的前馈神经网络。详细研究了不同径向基函数及其相关参数的使用,以及它们对网络精度的影响。使用训练中未包含的数据对RBF网络进行了验证,该数据显示了测得的压力信号与重建的压力信号之间的良好对应关系。根据均方误差和许多压力衍生参数来分析预测压力信号的准确性。无论是在预测压力信号还是在闭环发动机控制系统中使用的基于压力的发动机参数方面,结果在性能和准确性方面都是令人鼓舞的。

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