基于LSTM RNN的柴油氧化催化剂上下游废气温度建模

M. Elhag, M. Selçuk Arslan
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引用次数: 1

摘要

由于对高性能和低排放的需求日益增加,传感器在动力总成工程和排气后处理系统中至关重要。在柴油氧化催化剂中,上游和下游温度传感器通常安装在车辆上,直到它们的模型被校准,然后在最终用户版本中移除。建模过程既奢侈又耗时,因为它需要发动机和底盘测功机。事实上,这些温度模型用于监测CO排放水平,并作为计算其他排气后处理系统组件效率的输入。本文的目的是通过生成柴油氧化催化剂上游和下游温度的模型来研究长短期记忆网络在汽车行业的使用。从车辆上记录发动机传感器和执行器位置反馈的测量结果,并将其用作训练和验证数据。经过充分的训练后,利用该模型对模拟的氧化催化剂上下游温度进行评价和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Diesel Oxidation Catalyst Upstream and Downstream Exhaust Gas Temperatures Using LSTM RNN
Sensors are essential in powertrain engineering and exhaust aftertreatment systems due to the increasing need for high performance and fewer emissions. Mostly in diesel oxidation catalysts, the upstream and downstream temperature sensors are attached to the vehicle until their models get calibrated then removed in the end-user version. The modeling process is both extravagant and time-consuming as it requires engine and chassis dynamometers. In fact, these temperature models are used in the monitoring of CO emission level and as inputs to calculate the other exhaust aftertreatment system components' efficiencies. The purpose of this paper is to investigate the use of long short-term memory networks in the automotive sector by generating a model for the diesel oxidation catalyst upstream and downstream temperatures as an example. Measurements from engine sensors and actuators position feedback were recorded from a vehicle and used as training and validation data. After sufficient training, the model was utilized to evaluate and predict the modeled oxidation catalyst upstream and downstream temperatures.
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