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Neural Network Based Identification of Fuel Injection Rate Profiles for Diesel Engines

机译:基于神经网络的柴油机燃料喷射速率型材的识别

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The rate profile at which fuel is injected into an inter-nal combustion (IC) diesel engine is among the most important parameters affecting the engine performance and exhaust emissions. However, it is notoriously difficult to measure on-line in practice. This article studies the application of neural network based methods for identification of the diesel fuel in-jection rate profile from in-cylinder pressure data, for which measurements are easy to obtain online from a running en-gine. The proposed approach provides a prediction of the injection rate profile as a function of the crank angle, and an estimate of the uncertainty associated with the prediction. Among others, the results presented herein may be benefi-cial for real-time injector fault detection and also for devising novel optimal control strategies for minimizing exhaust emissions of diesel engines.
机译:将燃料喷射到NAL间燃烧(IC)柴油发动机中的速率曲线是影响发动机性能和废气排放的最重要的参数之一。但是,在实践中难以衡量在线难以衡量。本文研究了基于神经网络的应用,用于识别来自缸内压力数据的柴油燃料型速率曲线的识别,其中测量易于从运行的en-Gine上线上获得。所提出的方法提供了作为曲柄角的函数的喷射速率曲线的预测,以及与预测相关的不确定性的估计。其中,本文所呈现的结果可以是实时注射器故障检测的受益金,并且还用于设计用于最小化柴油发动机的废气排放的新颖最佳控制策略。

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