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Reconstruction of cylinder pressure for SI engine using recurrent neural network

机译:基于递归神经网络的SI发动机气缸压力重构

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摘要

Cylinder pressure based engine control systems use variables deduced from cylinder pressure as a feedback input. Monitoring of cylinder pressure is possible through various intrusive and nonintrusive sensors but cost of these sensors limits their use in the engines of on-road vehicles. In the present work, a recurrent neural network (RNN) is proposed which can reconstruct cylinder pressure of spark ignition engine. The network uses instantaneous crankshaft speed and motored pressure as inputs. Initially, parameters of two-zone model are tuned at limited number of experimental points, so that cylinder pressure predicted by model matches to that of experimental results. Further, the tuned model is used to generate large number of training data. Validation has been carried out using experimental as well as simulated pressure trace. It has been found that RNN can reconstruct cylinder pressure with reasonably good accuracy.
机译:基于气缸压力的发动机控制系统使用从气缸压力得出的变量作为反馈输入。汽缸压力的监测可以通过各种侵入式和非侵入式传感器进行,但是这些传感器的成本限制了它们在公路车辆发动机中的使用。在目前的工作中,提出了一种可重构火花点火发动机气缸压力的递归神经网络(RNN)。该网络使用瞬时曲轴转速和电动压力作为输入。最初,在有限的实验点上调整两区模型的参数,以使模型预测的气缸压力与实验结果相匹配。此外,调整后的模型用于生成大量训练数据。已使用实验以及模拟压力跟踪进行了验证。已经发现,RNN可以以相当好的精度重建气缸压力。

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