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首页> 外文期刊>Journal of Intelligent & Robotic Systems: Theory & Application >Neural Modelling and Control of a Diesel Engine with Pollution Constraints
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Neural Modelling and Control of a Diesel Engine with Pollution Constraints

机译:具有污染约束的柴油机的神经建模与控制

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摘要

The paper describes a neural approach for modelling and control of a turbocharged Diesel engine. A neural model, whose structure is mainly based on some physical equations describing the engine behaviour, is built for the rotation speed and the exhaust gas opacity. The model is composed of three interconnected neural submodels, each of them constituting a nonlinear multi-input single-output error model. The structural identification and the parameter estimation from data gathered on a real engine are described. The neural direct model is then used to determine a neural controller of the engine, in a specialized training scheme minimising a multivariable criterion. Simulations show the effect of the pollution constraint weighting on a trajectory tracking of the engine speed. Neural networks, which are flexible and parsimonious nonlinear black-box models, with universal approximation capabilities, can accurately describe or control complex nonlinear systems, with little a priori theoretical knowledge. The presented work extends optimal neuro-control to the multivariable case and shows the flexibility of neural optimisers. Considering the preliminary results, it appears that neural networks can be used as embedded models for engine control, to satisfy the more and more restricting pollutant emission legislation. Particularly, they are able to model nonlinear dynamics and outperform during transients the control schemes based on static mappings.
机译:本文介绍了一种用于涡轮增压柴油机建模和控制的神经方法。针对转速和废气的不透明度,建立了一个神经模型,其结构主要基于描述发动机性能的一些物理方程式。该模型由三个相互连接的神经子模型组成,每个子模型都构成一个非线性多输入单输出误差模型。描述了从实际引擎上收集的数据进行的结构识别和参数估计。然后,在使多变量标准最小化的专门训练方案中,将神经直接模型用于确定发动机的神经控制器。仿真显示了污染约束加权对发动机转速的轨迹跟踪的影响。神经网络是具有通用逼近能力的灵活且简约的非线性黑匣子模型,几乎不需要先验的理论知识就能准确地描述或控制复杂的非线性系统。提出的工作将最优神经控制扩展到多变量情况,并显示了神经优化器的灵活性。考虑到初步结果,似乎可以将神经网络用作发动机控制的嵌入式模型,以满足越来越严格的污染物排放法规。特别是,他们能够基于静态映射对非线性动力学建模,并在瞬态过程中优于控制方案。

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