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利用基于实际驾驶数据训练的人工神经网络开发柴油车辆冷启动排放模型。

Development of a cold-start emission model for diesel vehicles using an artificial neural network trained with real-world driving data.

作者信息

Seo Jigu, Yun Boseop, Kim Juwon, Shin Myunghwan, Park Sungwook

机构信息

Graduate School of Hanyang University, 222 Wangwimni-ro, Seongdong-gu, Seoul 04763, Republic of Korea.

National Institute of Environmental Research, Hwangyong-ro 42, Seo-gu, Incheon 22689, Republic of Korea.

出版信息

Sci Total Environ. 2022 Feb 1;806(Pt 3):151347. doi: 10.1016/j.scitotenv.2021.151347. Epub 2021 Oct 30.

DOI:10.1016/j.scitotenv.2021.151347
PMID:34728203
Abstract

During the cold start and warm-up phase, modern vehicles emit considerable amounts of pollutants due to the incomplete combustion and deteriorated performance of aftertreatment devices. In terms of emission modeling, there have been many attempts to estimate cold start emission such as cold-hot conversion factor, regression model, and physis-based model. However, as the emission characteristic become complicated due to the adoption of aftertreatment devices and various emission control strategies for the strengthened emission regulations, the conventional cold start emission models do not always show satisfactory performances. In this study, artificial neural networks were used to predict the cold start emissions of carbon dioxide, nitrogen oxides, carbon monoxide, and total hydrocarbon of diesel passenger vehicles. We used real-world driving data to train neural networks as an emission prediction tool. Through machine leaning, numerous trainable variables of neural networks were properly adjusted to predict cold start emissions. For input variables of the ANN model, the velocity, vehicle specific power, engine speed, engine torque, and engine coolant temperature were used. The proposed ANN models accurately predicted sharp increases in carbon monoxide, hydrocarbon, and nitrogen oxides during the cold start phase. In addition to the quantitative estimations, the correlations between the operating variables and exhaust gas emissions were visually described in the form of emission maps. The emission map graphically showed the emission levels according to the vehicle and engine operating parameters.

摘要

在冷启动和暖机阶段,现代车辆由于燃烧不完全以及后处理装置性能下降,会排放大量污染物。在排放建模方面,已经有许多尝试来估算冷启动排放,如冷-热转换因子、回归模型和基于物理的模型。然而,由于采用了后处理装置以及针对强化排放法规的各种排放控制策略,排放特性变得复杂,传统的冷启动排放模型并不总是表现出令人满意的性能。在本研究中,人工神经网络被用于预测柴油乘用车的二氧化碳、氮氧化物、一氧化碳和总碳氢化合物的冷启动排放。我们使用实际驾驶数据来训练神经网络作为排放预测工具。通过机器学习,神经网络的众多可训练变量被适当调整以预测冷启动排放。对于人工神经网络模型的输入变量,使用了速度、车辆比功率、发动机转速、发动机扭矩和发动机冷却液温度。所提出的人工神经网络模型准确地预测了冷启动阶段一氧化碳、碳氢化合物和氮氧化物排放量的急剧增加。除了定量估计外,运行变量与废气排放之间的相关性以排放图的形式直观地呈现出来。排放图以图形方式显示了根据车辆和发动机运行参数的排放水平。

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