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Estimating Soot Emission in Diesel Engines Using Gated Recurrent Unit Networks

机译:使用门控递归单元网络估算柴油机中的烟尘排放

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摘要

In this paper, a new data-driven modeling of a diesel engine soot emission formation using gated recurrent unit (GRU) networks is proposed. Different from the traditional time series prediction methods such as nonlinear autoregressive with exogenous input (NARX) approach, GRU structure does not require the determination of the pure time delay between the inputs and the output, and the number of regressors does not have to be chosen beforehand. Gates in a GRU network enable to capture such dependencies on the past input values without any prior knowledge. As a design of experiment, 30 different points in engine speed - injected fuel quantity plane are determined and the rest of the input channels, i.e., rail pressure, main start of injection, equivalence ratio, and intake oxygen concentration are excited with chirp signals in the intended regions of operation. Experimental results show that the prediction performances of GRU based soot models are quite satisfactory with 77% training and 57% validation fit accuracies and normalized root mean square error (NRMSE) values are less than 0.038 and 0.069, respectively. GRU soot models surpass the traditional NARX based soot models in both steady-state and transient cycles.
机译:在本文中,提出了一种新的基于数据驱动的使用门控循环单元(GRU)网络的柴油机烟灰排放形成模型。与传统的时间序列预测方法(例如带有外部输入的非线性自回归方法)不同,GRU结构不需要确定输入和输出之间的纯时间延迟,并且不必选择回归器的数量预先。 GRU网络中的Gates无需任何先验知识即可捕获对过去输入值的此类依赖性。作为实验的设计,确定发动机转速-喷油量平面上的30个不同点,并通过线性调频信号激发其余的输入通道,即轨道压力,主喷射开始,当量比和进气氧浓度。预期的操作区域。实验结果表明,基于GRU的烟尘模型的预测性能非常令人满意,其中77%的训练和57%的验证拟合精度以及标准化的均方根误差(NRMSE)值分别小于0.038和0.069。在稳态和瞬态周期中,GRU烟灰模型均优于基于NARX的传统烟灰模型。

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