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Neural networks for real-time nonlinear control of a variable geometry turbocharged diesel engine

机译:神经网络用于可变几何涡轮增压柴油机的实时非线性控制

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摘要

New engines are submitted to emission standards that are becoming more and more restrictive. Diesel engines are typically equipped with variable geometry turbo-compressor, exhaust gas recirculation system, high-pressure common rail system and post-treatment devices in order to meet these legislative requirements. Consequently, the control of diesel engines becomes a very difficult task involving five to 10 control variables that interact with each other and that are highly nonlinear. Until the present day, the control schemes integrated in the engine's controller are all based on static maps identified by steady-state engine mapping. Afterward, these schemes are adjusted and calibrated in the vehicle using various control techniques in order to assure a better dynamic response of the engine under dynamic load. In this paper, we are interested in developing a mathematical optimization process that searches for the optimal control scheme under static and dynamic operating conditions. Firstly, we suggest modeling the engine and its emissions using mean value models which require limited experiments and are in good agreement with the experimental data. These models are then used in a dynamic optimization process based on the Broyden-Fletcher-Goldfarb-Shanno algorithm in order to find the optimal control scheme of the engine. The results show a reduction of the engine emissions without deteriorating its performance. Finally, we propose a practical control technique based on neural networks in order to apply these control schemes online to the engine. The results are promising. Copyright (C) 2007 John Wiley & Sons, Ltd.
机译:新发动机已提交给越来越严格的排放标准。柴油发动机通常配备可变几何涡轮压缩机,废气再循环系统,高压共轨系统和后处理装置,以满足这些法律要求。因此,柴油机的控制成为一项非常困难的任务,涉及五个到十个相互影响且高度非线性的控制变量。直到今天,集成在引擎控制器中的控制方案都基于由稳态引擎映射标识的静态映射。然后,使用各种控制技术在车辆中对这些方案进行调整和校准,以确保发动机在动态负载下具有更好的动态响应。在本文中,我们对开发一种数学优化过程感兴趣,该过程可在静态和动态操作条件下搜索最优控制方案。首先,我们建议使用均值模型对发动机及其排放进行建模,这些均值模型需要进行有限的实验并且与实验数据高度吻合。然后将这些模型用于基于Broyden-Fletcher-Goldfarb-Shanno算法的动态优化过程中,以便找到发动机的最佳控制方案。结果表明,在不降低发动机性能的情况下减少了发动机排放。最后,我们提出了一种基于神经网络的实用控制技术,以便将这些控制方案在线应用于引擎。结果令人鼓舞。版权所有(C)2007 John Wiley&Sons,Ltd.

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