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Dynamic Mapping of Diesel Engine through System Identification

机译:通过系统识别动态映射柴油机

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From a control design point of view, modern diesel engines are dynamic, nonlinear, MIMO systems. This paper presents a method to find low-complexity black-box dynamic models suitable for model predictive control (MPC) of NO_x and soot emissions based on on-line emissions measurements. A four-input-five-output representation of the engine is considered, with fuel injection timing, fuel injection duration, exhaust gas recirculation (EGR) and variable geometry turbo (VGT) valve positions as inputs, and indicated mean effective pressure, combustion phasing, peak pressure derivative, NO_x emissions, and soot emissions as outputs. Experimental data were collected on a six-cylinder heavy-duty engine at 30 operating points. The identification procedure starts by identifying local linear models at each operating point. To reduce the number of dynamic models necessary to describe the engine dynamics, Wiener models are introduced and a clustering algorithm is proposed. A resulting set of two to five dynamic models is shown to be able to predict all outputs at all operating points with good accuracy.
机译:从控制设计的角度来看,现代柴油机是动态的,非线性的MIMO系统。本文提出了一种基于在线排放测量结果来寻找适用于NO_x和烟尘排放模型预测控制(MPC)的低复杂度黑箱动态模型的方法。考虑了发动机的四输入五输出表示,以燃料喷射正时,燃料喷射持续时间,排气再循环(EGR)和可变几何涡轮(VGT)气门位置为输入,并指示了平均有效压力,燃烧定相,峰值压力导数,NO_x排放量和烟尘排放量作为输出。在30个工作点的六缸重型发动机上收集了实验数据。识别过程首先在每个工作点识别局部线性模型。为了减少描述发动机动力学所需的动力学模型的数量,引入了Wiener模型并提出了聚类算法。结果显示,由两到五个动态模型组成的一组模型能够很好地预测所有操作点的所有输出。

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