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Neurofuzzy State Estimators and Their Applications

机译:神经模糊状态估计器及其应用

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Neurofuzzy algorithms have been extensively developed in recent years for the real time/online identification of nonlinear a priori unknown dynamical processes. As with all rule base paradigms they suffer from the curse of dimensionality, restricting their practical use to low dimensional control problems. This paper shows how adaptive construction algorithms based on additive decomposition techniques can overcome this problem, to produce parsimonious neurofuzzy models which retain their transparency or interpretability. Not only does this approach extend the applicability of neurofuzzy algorithms, it also enables low complexity controllers and estimators to be derived. In this context neurofuzzv state estimators are derived, which automatically parameterise a Kalman filter for a process state estimate reconstruction from any input/output data source. This approach avoids pitfalls of the extended Kalman filter, and is optimal for local models. The paper discusses real world applications of this new theory of modelling and estimation to helicopter guidance, intelligent driver warning system, communication antennas, autonomous underwater vehicles, ship collision avoidance guidance, and an IFAC benchmark problem.
机译:近年来,神经模糊算法已被广泛开发,用于实时/在线识别非线性先验未知的动力学过程。与所有规则库范式一样,它们也遭受着维数的诅咒,从而将其实际应用限制在低维控制问题上。本文展示了基于加法分解技术的自适应构造算法如何克服此问题,从而产生保留其透明度或可解释性的简约神经模糊模型。这种方法不仅扩展了神经模糊算法的适用性,而且还可以导出低复杂度的控制器和估计器。在这种情况下,导出了神经模糊状态估计器,该函数自动为来自任何输入/输出数据源的过程状态估计重建参数化卡尔曼滤波器。这种方法避免了扩展卡尔曼滤波器的缺陷,并且对于局部模型是最佳的。本文讨论了这种新的建模和估计理论在直升机制导,智能驾驶员预警系统,通信天线,自动驾驶水下航行器,避碰船舶制导以及IFAC基准测试问题上的实际应用。

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