首页> 外文期刊>International Journal of Automotive Technology >COMMON RAIL INJECTION SYSTEM ITERATIVE LEARNING CONTROL BASED PARAMETER CALIBRATION FOR ACCURATE FUEL INJECTION QUANTITY CONTROL
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COMMON RAIL INJECTION SYSTEM ITERATIVE LEARNING CONTROL BASED PARAMETER CALIBRATION FOR ACCURATE FUEL INJECTION QUANTITY CONTROL

机译:基于共同铁路喷射系统迭代学习控制的参数校准,用于精确的燃油喷射量控制

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摘要

This paper presents an accurate engine fuel injection quantity control technique for high pressure common rail (HPCR) injection systems by an iterative learning control (ILC)-based, on-line calibration method. Accurate fuel injection quantity control is of importance in improving engine combustion efficiency and reducing engine-out emissions. Current Diesel engine fuel injection quantity control algorithms are either based on pre-calibrated tables or injector models, which may not adequately handle the effects of disturbances from fuel pressure oscillation in HPCR, rail pressure sensor reading inaccuracy, and the injector aging on injection quantity control. In this paper, by using an exhaust oxygen fraction dynamic model, an on-line parameter calibration method for accurate fuel injection quantity control was developed based on an enhanced iterative learning control (EILC) technique in conjunction with HPCR injection system. A high-fidelity, GT-Power engine model, with parametric uncertainties and measurement disturbances, was utilized to validate such a methodology. Through simulations at different engine operating conditions, the effectiveness of the proposed method in rejecting the effects of uncertainties and disturbance on fuel injection quantity control was demonstrated.
机译:本文提出了一种基于迭代学习控制(ILC)的在线校准方法,用于高压共轨(HPCR)喷射系统的精确发动机燃油喷射量控制技术。精确的燃油喷射量控制对于提高发动机燃烧效率和减少发动机熄火排放至关重要。当前的柴油机燃油喷射量控制算法是基于预先校准的表格或喷射器模型,可能无法充分处理HPCR中燃油压力振荡,导轨压力传感器读数不准确以及喷射器老化对喷射量控制的干扰影响。 。在本文中,通过使用排气氧分数动态模型,基于增强的迭代学习控制(EILC)技术和HPCR喷射系统,开发了一种用于精确控制燃料喷射量的在线参数校准方法。利用具有参数不确定性和测量干扰的高保真GT-Power发动机模型来验证这种方法。通过在不同发动机工况下的仿真,证明了该方法在消除不确定性和扰动对燃油喷射量控制的影响方面的有效性。

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