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Neural network models for multi-step ahead prediction of air-fuel ratio in SI engines

机译:神经网络模型用于SI发动机空燃比的多步超前预测

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摘要

The non-linear dynamics present in SI engine combined with transport delay, limits the performance of the engine controller. Identifying the air-fuel ratio, few steps in advance can help the engine controller to take care of these. In the present work, various neural network models are evaluated for multi-step ahead prediction of air-fuel ratio. Neural network models are trained and validated using uncorrelated data generated from engine simulations in Matlab/Simulink~© environment. It is shown that a neural network autoregressive model with exogenous inputs (NNARX) and a neural network autoregressive moving average model with exogenous input (NNARMAX) are able to predict engine simulations with reasonably good accuracy.
机译:SI发动机中存在的非线性动力学与运输延迟相结合,限制了发动机控制器的性能。识别空燃比时,提前几个步骤可以帮助发动机控制器解决这些问题。在目前的工作中,评估了各种神经网络模型,用于空燃比的多步提前预测。在Matlab / Simulink〜©环境中,使用引擎仿真生成的不相关数据对神经网络模型进行训练和验证。结果表明,具有外部输入的神经网络自回归模型(NNARX)和具有外部输入的神经网络自回归移动平均模型(NNARMAX)能够以相当好的精度预测发动机仿真。

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