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A Methodology to Enhance Design and On-Board Application of Neural Network Models for Virtual Sensing of NO_x Emissions in Automotive Diesel Engines

机译:一种提高神经网络模型的设计和载载在汽车柴油机NO_X排放的虚拟传感中的应用

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The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at estimating NO_x emissions at the exhaust of automotive Diesel engines. The proposed methodologies particularly aim at meeting the conflicting needs of feasible on-board implementation of advanced virtual sensors, such as neural network, and satisfactory prediction accuracy. Suited identification procedures and experimental tests were developed to improve RNN precision and generalization in predicting engine NO_x emissions during transient operation. NO_x measurements were accomplished by a fast response analyzer on a production automotive Diesel engine at the test bench. Proper post-processing of available experiments was performed to provide the identification procedure with the most exhaustive information content. The comparison between experimental results and predicted NO_x values on several engine transients, exhibits high level of accuracy.
机译:本文介绍了开发经常性神经网络(RNN)的适用方法,旨在估算汽车柴油发动机排气的NO_X排放。拟议的方法尤其旨在满足可行的载载于先进虚拟传感器的矛盾需求,例如神经网络,以及令人满意的预测准确性。开发了适用的识别程序和实验测试,以提高RNN精度和泛化在瞬态操作期间预测发动机NO_X排放。在测试台上的生产汽车柴油发动机上的快速响应分析仪完成了NO_X测量。进行适当的可用实验后处理,以提供具有最详尽的信息内容的识别过程。实验结果与若干发动机瞬变的预测值之间的比较表现出高水平的精度。

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