首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Feedback error learning neural networks for spark advance control using cylinder pressure
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Feedback error learning neural networks for spark advance control using cylinder pressure

机译:利用汽缸压力进行火花提前控制的反馈误差学习神经网络

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摘要

This paper presents a spark advance control strategy based on the location of peak pressure (LPP) in spark ignition engines using artificial neural networks. The well-known problems of the LPP-based spark advance control method are that many samples of data are required and there is a problem detecting the combustion phasing owing to hook-back during lean burn operation. In order to solve these problems, a feedforward multilayer perceptron network (MLPN) is introduced in this study. The LPP and hook-back are estimated using the MLPN, which needs only five samples of output voltage from the cylinder pressure sensor. The estimated LPP can be regarded as an index for combustion phasing and can also be used as a minimum spark advance for best torque (MBT) control parameter. The performance of the spark advance controller is improved by adding a feedforward controller which reflects the abrupt changes of the engine operating conditions such as engine speed and manifold absolute pressure. The feedforward controller consists of the radial basis function network, and the feedback error learning method is used for the training of the network. In addition, the proposed control algorithm does not need sensor calibration and pegging (bias calculation) procedures because the MLPN estimates the LPP from the raw sensor output voltage. The feasibility of this methodology to control spark advances is closely examined through steady and transient engine operations. The experimental results have revealed that the LPP shows favourable agreement with the optimal value even during the transient operation of the engine.
机译:本文提出了一种基于神经网络的火花点火发动机中基于峰值压力(LPP)位置的火花提前控制策略。基于LPP的火花提前控制方法的众所周知的问题是需要许多数据样本,并且由于在稀薄燃烧操作期间的回钩而存在检测燃烧定相的问题。为了解决这些问题,本研究引入了前馈多层感知器网络(MLPN)。使用MLPN估计LPP和后向挂钩,该MLPN仅需要从气缸压力传感器获得的五个输出电压样本即可。估计的LPP可以视为燃烧相位的指标,也可以用作最佳转矩(MBT)控制参数的最小火花提前量。通过添加前馈控制器来改善火花提前控制器的性能,该前馈控制器可反映发动机工况的突然变化,例如发动机转速和歧管绝对压力。前馈控制器由径向基函数网络组成,反馈误差学习方法用于网络的训练。此外,由于MLPN根据原始传感器输出电压估算LPP,因此所提出的控制算法不需要传感器校准和固定(偏置计算)过程。通过稳定和瞬态的发动机操作,仔细研究了此方法控制火花提前的可行性。实验结果表明,即使在发动机瞬态运行期间,LPP与最佳值也显示出良好的一致性。

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