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Predicting the transient NOx emissions of the diesel vehicle based on LSTM neural networks

机译:基于LSTM神经网络预测柴油车的瞬态NOx排放

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Nitrogen oxide (NOx) emissions play an important role in the study of diesel engine pollutant emissions. This study introduces the long short-term memory (LSTM) neural network to estimate the transient NOx emissions of diesel vehicles. The LSTM deep neural network is used to build the prediction model to ensure the stability as well as the accuracy of the model. The results show that the model has better predictive performance and stability than the two commonly used benchmark models, and the following conclusions are drawn: (1) LSTM has better learning and prediction ability for transient changes in NOx emissions. Compared to prediction with random forest (RF) and support vector regression (SVR), the mean absolute deviation and root mean square error of LSTM are reduced by about 23.6% and 8.3% at least, which also indicated that the input parameters selection method was effective. (2) LSTM is a general estimation approach for time series data, which can reduce the suppression effect of transient data changes on model prediction, and has high prediction accuracy, and can be employed for real road NOx emission analysis.
机译:氮氧化物(NOX)排放在柴油发动机污染物排放研究中起着重要作用。本研究介绍了长期内存(LSTM)神经网络来估计柴油车辆的瞬态NOx排放。 LSTM深神经网络用于构建预测模型,以确保稳定性以及模型的准确性。结果表明,该模型具有比两种常用的基准模型更好的预测性能和稳定性,并绘制了以下结论:(1)LSTM具有更好的学习和预测能力,对NOx排放的瞬态变化。与随机森林(RF)的预测相比,支持向量回归(SVR),LSTM的平均绝对偏差和根均方误差至少减小了约23.6%和8.3%,这也表明输入参数选择方法是有效的。 (2)LSTM是时间序列数据的一般估计方法,可以降低瞬态数据变化对模型预测的抑制效果,并且具有高预测精度,并且可以用于真正的道路NOx排放分析。

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