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A sliding mode strategy for adaptive learning in Adalines

机译:Adalines中自适应学习的滑模策略

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A dynamical sliding mode control approach is proposed for robust adaptive learning in analog Adaptive Linear Elements (Adalines), constituting basic building blocks for perceptron-based feedforward neural networks. The zero level set of the learning error variable is regarded as a sliding surface in the space of learning parameters. A sliding mode trajectory can then be induced, in finite time, on such a desired sliding manifold. Neuron weights adaptation trajectories are shown to be of continuous nature, thus avoiding bang-bang weight adaptation procedures. Sliding mode invariance conditions determine a least squares characterization of the adaptive weights average dynamics whose stability features may be studied using standard time-varying linear systems results. Robustness of the adaptative learning algorithm, with respect to bounded external perturbation signals, and measurement noises, is also demonstrated. The article presents some simulation examples dealing with applications of the proposed algorithm to forward and inverse plant dynamics identification
机译:提出了一种动态滑模控制方法,用于模拟自适应线性元素(Adalines)中的鲁棒自适应学习,该方法构成了基于感知器的前馈神经网络的基本构建块。学习误差变量的零级集合被视为学习参数空间中的滑动表面。然后可以在有限的时间上在这种期望的滑动歧管上诱发出滑动模式轨迹。神经元权重适应轨迹显示为连续性的,因此避免了权重适应程序。滑模不变条件确定自适应加权平均动力学的最小二乘特征,其稳定性特征可以使用标准时变线性系统结果进行研究。还证明了自适应学习算法在有限的外部扰动信号和测量噪声方面的鲁棒性。本文提供了一些仿真示例,说明了该算法在植物动力学正向和逆向识别中的应用

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