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Non-linear model-based predictive control of gasoline engine air-fuel ratio

机译:基于非线性模型的汽油机空燃比预测控制

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Control developments allowing accurate regulation of airfuel ratio in gasoline engines are critical if legislative emissions levels are to be adhered to early in the next century. However, the task is far from straightforward with severe non-linearities and long/variable dead times challenging even the most sophisticated control algorithms. The availability of accurate models of the system can aid in overcoming these hurdles, Neural networks offer one modelling approach which enables rapid and accurate model formulation from system performance data. Whilst neural network models may provide the required accuracy, they do not easily fit within a control framework, particularly when there is a requirement for a rapid sampling frequency. This paper shows how a neural network model may be built and incorporated within a model predictive control framework and, with some approximations, may be implemented on a system requiring frequent sampling. Application to a simulation of a sophisticated car engine serves to demonstrate the potential of the approach.
机译:如果要在下个世纪初遵守立法排放水平,则控制技术的发展就必须对汽油发动机中的空燃比进行精确调节。但是,即使是最复杂的控制算法,该任务也远非简单易行,具有严重的非线性和较长/可变的死区时间。系统准确模型的可用性可以帮助克服这些障碍,神经网络提供了一种建模方法,该方法可以根据系统性能数据快速而准确地制定模型。尽管神经网络模型可以提供所需的精度,但它们不容易适应控制框架,特别是在需要快速采样频率的情况下。本文展示了如何建立神经网络模型并将其纳入模型预测控制框架中,以及如何近似地在需要频繁采样的系统上实施。在复杂的汽车发动机仿真中的应用证明了该方法的潜力。

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