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Deep neural network model with Bayesian hyperparameter optimization for prediction of NO_x at transient conditions in a diesel engine

机译:戴贝叶斯近达比特优化对柴油发动机瞬态条件下NO_X预测的深神经网络模型

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摘要

Owing to increasing interest in the environment, particularly on air quality, regulations in the automobile industry have become stricter. Test cycles have been substituted to simulate real driving conditions, and they offer opportunities for researchers to satisfy regulations and predict emissions using models. The objective of this study is to develop a deep neural network (DNNJ model, optimize its hyperparameters using the Bayesian optimization method, and use hidden-node determination logic to predict engine-out NO_x emissions by using the worldwide harmonized light vehicles test procedure (WLTP) of diesel engines. A DNN network learns the internal relationships between inputs and target outputs even though they are complicated. However, the hyperparameters of DNNs are typically determined by researchers before training, and they affected the accuracy of the model. In this study, the hyperparameters of the DNN model such as the number of hidden layers, number of nodes in each hidden layer, learning rate, learning rate decay, and batch size are automatically optimized using the Bayesian optimization method. Some logical equations are combined with the number of nodes in the first hidden layer and the number of hidden layers to realize the model's structure instead of using the number of hidden nodes in each hidden layer. Compared with grid search and random sampling, the Bayesian optimization method is a promising solution to optimize hyperparameters. In addition, a hidden-node determination logic further improved the accuracy of the model. The accuracy of the optimized model is indicated by an R2 value of 0.9675 with 14 input features. The result of cycle prediction shows that the mean absolute errors are approximately 16-17 ppm for four WLTP cycles, which are 1.6% of the maximum NO_x value. These results indicate that the accuracy of the model is comparable to that of a physical NO_x measurement device whose linearity is 1% of the full scale (5,000 ppm).
机译:由于对环境的兴趣越来越幅度,特别是在空气质量上,汽车工业的法规变得更加严格。测试周期已被替代以模拟实际驾驶条件,并为研究人员提供机会,以满足法规和使用模型预测排放。本研究的目的是开发一个深度神经网络(DNNJ型号,使用贝叶斯优化方法优化其近似参数,并使用隐藏节点确定逻辑通过使用全球统一的轻型车辆测试程序来预测发动机输出NO_X排放(WLTP )柴油发动机。一个DNN网络,即使它们是复杂的,DNN网络也会学习输入和目标输出之间的内部关系。然而,DNN的超级参数通常由研究人员确定,在训练之前,它们影响了模型的准确性。在这项研究中, DNN模型的超参数,如隐藏层的数量,每个隐藏层中的节点数,学习率,学习率衰减和批量大小通过贝叶斯优化方法自动优化。一些逻辑方程式与数量相结合第一个隐藏层中的节点和隐藏图层的数量,以实现模型的结构而不是使用HID的数量每个隐藏层中的节点。与网格搜索和随机采样相比,贝叶斯优化方法是优化HyperParameters的有希望的解决方案。此外,隐藏节点确定逻辑进一步提高了模型的准确性。优化模型的准确性由R2值为0.9675,具有14个输入功能。循环预测结果表明,对于四个WLTP周期,平均绝对误差约为16-17ppm,这是最大NO_X值的1.6%。这些结果表明模型的准确性与物理NO_X测量装置的准确性相当,其线性度为满量程的1%(5,000ppm)。

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