循环神经模糊网络用于发动机AFR估计和控制的实验验证

F. Barghi, A. Safavi
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引用次数: 2

摘要

准确的空气燃料比(AFR)动力学模型对于高质量的发动机AFR控制至关重要。由于进气歧管空气-燃料流动的动力学是严重非线性和多变量的,这些建模和控制问题是非常敏感的。本文主要研究了循环神经模糊网络(RNFN)对发动机AFR非线性动力学的估计和控制。首先,采用带有外生输入的非线性自回归模型(NARX)对燃油喷射系统的AFR非线性动力学进行建模。然后,采用基于RNFN的策略对模型参数进行微调。设计了基于逆模型的控制器。控制方案的目标是通过提供适当的燃油喷射指令来保持AFR约束条件。该策略是在实时车载实验测试获得的信息数据集上执行的。通过与ECU性能的比较,对所提出方法的有效性进行了评估和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental validation of recurrent Neuro-Fuzzy Networks for AFR estimation and control in SI engines
An accurate model of Air to Fuel Ratio (AFR) dynamics is critical for high-quality AFR control in SI engines. These modeling and control problems are very sensitive because the dynamics of intake manifold air-fuel flow is severely nonlinear and multivariable. This study focuses on Recurrent Neuro-Fuzzy Network (RNFN) estimation and control of AFR nonlinear dynamics in SI engines. First, a nonlinear autoregressive with exogenous inputs (NARX) model is chosen for modeling the AFR nonlinear dynamics in the fuel injection system. Then, the strategy based on RNFN, is employed to fine-tune the model parameters. A controller is also designed based on inverse model-based method. The objective of control scheme is to keep the AFR constraint conditions by providing the proper fuel injection commands. This strategy is performed on an informative data-set obtained by a real-time in-vehicle experimental test. The effectiveness of the proposed approach is evaluated and validated by the resulting improvement in comparison with ECU performance.
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