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Reconstruction of Cylinder Pressure of I.C. Engine Based on Neural Networks

机译:重建I.C的气缸压力。引擎基于神经网络

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In this paper, the characteristics of the excitations and the vibration responses of cylinder head are analyzed in detail. The methods of reconstructing cylinder pressures are investigated. To avoid some shortcomings of traditional linear methods, a new reconstructing cylinder pressure method by using ANN is presented in this paper. A standard BP neural network was trained with the measured cylinder head vibration signals as the input and with the measured cylinder pressures as the ideal output of the NN. To solve the problem of converging at slow velocity, it adopts the varying-step algorithm, which adopts a larger step at the beginning of the algorithm, and gradually decreases step as the converging of process. The comparison results are presented when the test engine operates with different loads and at different speed. The results show that the trained network can reconstruct cylinder pressures effectively when the engine operates at different operation states. It is of good repeatability and of good resolution to identify cylinder pressure with NN.
机译:本文详细分析了激励的特征和气缸盖的振动响应。研究了重建气缸压力的方法。为避免传统线性方法的一些缺点,本文提出了一种新的重建气缸压力方法。标准BP神经网络用测量的气缸盖振动信号培训作为输入,并且测量的汽缸压力作为NN的理想输出。为了解决在慢速下会聚的问题,它采用变化步长算法,该算法在算法开始时采用较大的步骤,并逐渐减少步骤作为过程的融合。当测试引擎以不同的负载和不同的速度运行时,提出了比较结果。结果表明,当发动机在不同的操作状态下操作时,训练网络可以有效地重建气缸压力。它具有良好的重复性和良好的分辨率,以识别NN气缸压力。

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