Self-learning FNN (SLFNN) with optimal on-line tuning for water injection control in a turbo charged automobile

Chi-Hsu Wang, Jung-Sheng Wen
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引用次数: 1

Abstract

This paper proposes a new architecture of self-learning fuzzy-neural-network (SLFNN) for water injection control in a turbo-charged automobile. The major advantage of SLFNN is that no off-line training is needed for initialization. The SLFNN will initialize itself with a random set of initial weighting factors (normally zeros) and a specifically designed on-line optimal training algorithm is invoked immediately after the engine of the automobile is turn on. The on-line optimal training can guarantee that the weighting factors will be directed toward a maximum-error-reduced direction. Although this SLFNN can also be used as a controller for fuel injection, we adopt the SLFNN as the water injection controller to reduce the knocking effects of a turbo-charged engine and therefore the emission is cleaner with less petrol consumption. Real implementation has been performed in a Saab NG 900 (1994 -1998) automobile with excellent results.
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基于最优在线整定的自学习模糊神经网络(SLFNN)用于涡轮增压汽车注水控制
提出了一种用于涡轮增压汽车注水控制的自学习模糊神经网络(SLFNN)结构。SLFNN的主要优点是初始化不需要离线训练。SLFNN将使用一组随机的初始加权因子(通常为零)初始化自身,并且在汽车发动机启动后立即调用专门设计的在线最优训练算法。在线最优训练可以保证权重因子向误差减小最大的方向运动。虽然该SLFNN也可以用作燃油喷射控制器,但我们采用SLFNN作为注水控制器来减少涡轮增压发动机的爆震效应,因此排放更清洁,汽油消耗更少。在Saab NG 900(1994 -1998)汽车上进行了实际实施,取得了良好的效果。
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