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Reconstruction of cylinder pressure using crankshaft speed fluctuations

机译:利用曲轴速度波动重建气缸压力

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In this work a Recurrent Neural Network (RNN) is proposed for cylinder pressure reconstruction using crankshaft speed fluctuations. It is shown that single RNN is not capable of reconstructing pressure for complete operating domain of engine distributed over load torque and engine speed. The capability of RNN to estimate cylinder pressure with varying speed and load is enhanced by applying the interpolation on weight parameters. For, this a separate RNN is trained for each specific load and speed of the engine and the weights of RNN are mapped over operating domain of engine. The model is validated on a test rig consisting of single-cylinder engine coupled with eddy current dynamometer. It is shown that the method has potential to estimate cylinder pressure estimation which can be used for future engine controls and diagnostic purpose.
机译:在这项工作中,提出了一种递归神经网络(RNN),用于利用曲轴速度波动来重建气缸压力。结果表明,单个RNN不能针对分布在负载扭矩和发动机转速上的发动机的整个运行域重构压力。通过对重量参数进行插值,可以增强RNN估算随速度和负载变化而产生的气缸压力的能力。为此,针对发动机的每个特定负载和速度训练一个单独的RNN,并将RNN的权重映射到发动机的运行范围内。该模型在包含单缸发动机和涡流测功机的试验台上进行了验证。结果表明,该方法具有估计汽缸压力估计的潜力,该估计可用于将来的发动机控制和诊断目的。

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