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An LPV Adaptive Observer for Updating a Map Applied to an MAF Sensor in a Diesel Engine

机译:LPV自适应观察器,用于更新应用于柴油机MAF传感器的地图

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In this paper, a new method for mass air flow (MAF) sensor error compensation and an online updating error map (or lookup table) due to installation and aging in a diesel engine is developed. Since the MAF sensor error is dependent on the engine operating point, the error model is represented as a two-dimensional (2D) map with two inputs, fuel mass injection quantity and engine speed. Meanwhile, the 2D map representing the MAF sensor error is described as a piecewise bilinear interpolation model, which can be written as a dot product between the regression vector and parameter vector using a membership function. With the combination of the 2D map regression model and the diesel engine air path system, an LPV adaptive observer with low computational load is designed to estimate states and parameters jointly. The convergence of the proposed algorithm is proven under the conditions of persistent excitation and given inequalities. The observer is validated against the simulation data from engine software enDYNA provided by Tesis. The results demonstrate that the operating point-dependent error of the MAF sensor can be approximated acceptably by the 2D map from the proposed method.
机译:本文提出了一种新的方法来补偿由于柴油机的安装和老化而引起的质量空气流量(MAF)传感器误差补偿和在线更新误差图(或查找表)。由于MAF传感器误差取决于发动机工作点,因此误差模型表示为带有两个输入(燃料质量喷射量和发动机转速)的二维(2D)映射。同时,表示MAF传感器误差的2D图被描述为分段双线性插值模型,可以使用隶属函数将其写为回归向量和参数向量之间的点积。结合二维地图回归模型和柴油机风道系统,设计了具有低计算负荷的LPV自适应观测器,以共同估算状态和参数。在持续激励和给定不等式条件下证明了该算法的收敛性。根据Tesis提供的引擎软件enDYNA的模拟数据对观察者进行了验证。结果表明,MAF传感器的工作点相关误差可以通过所提出方法的2D映射近似地接受。

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