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Adaptive Learning Control for Finite Interval Tracking Based on Constructive Function Approximation and Wavelet

机译:基于构造函数逼近和小波的有限区间跟踪自适应学习控制

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摘要

Using a constructive function approximation network, an adaptive learning control (ALC) approach is proposed for finite interval tracking problems. The constructive function approximation network consists of a set of bases, and the number of bases can evolve when learning repeats. The nature of the basis allows the continuous adaptive learning of parameters when the network undergoes any structural changes, and consequently offers the flexibility in tuning the network structure. The expandability of the bases guarantees precision of the function approximation and avoids the trial-and-error procedure in structure selection for any fixed structure network. Two classes of unknown nonlinear functions, namely, either global ${cal L}^{2}$ or local ${cal L}^{2}$ with a known bounding function, are taken into consideration. Using the Lyapunov method, the existence of solution and the convergence property of the proposed ALC system are discussed in a rigorous manner. By virtue of the celebrated orthonormal and multiresolution properties, wavelet network is used as the universal function approximator, with the weights tuned by the proposed adaptive learning mechanism.
机译:使用构造函数逼近网络,提出了一种自适应学习控制(ALC)方法,用于有限间隔跟踪问题。构造函数逼近网络由一组基数组成,并且当学习重复时,基数会发生变化。基础的性质允许在网络发生任何结构变化时连续自适应学习参数,因此可以灵活地调整网络结构。基数的可扩展性保证了函数逼近的精度,并且避免了在任何固定结构网络的结构选择中反复试验的过程。考虑两类未知的非线性函数,即具有已知边界函数的全局$ {cal L} ^ {2} $或局部$ {cal L} ^ {2} $。使用李雅普诺夫方法,严格讨论了所提出的ALC系统的解的存在性和收敛性。凭借着名的正交和多分辨率特性,小波网络被用作通用函数逼近器,其权重由所提出的自适应学习机制进行调整。

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