Chairez Isaac
Professional Interdisciplinary Unit of Biotechnology at the Instituto Politecnico Nacional, Av. Acueducto de Guadalupe sn, Col. Barrio La Laguna, Del. Gustavo A. Madero, Mexico, D.F., Mexico.
Neural Netw. 2014 Feb;50:175-82. doi: 10.1016/j.neunet.2013.10.004. Epub 2013 Nov 6.
This paper addresses the design of a discontinuous finite time convergent learning law for neural networks with continuous dynamics. The neural network was used here to obtain a non-parametric model for uncertain systems described by a set of ordinary differential equations. The source of uncertainties was the presence of some external perturbations and poor knowledge of the nonlinear function describing the system dynamics. A new adaptive algorithm based on discontinuous algorithms was used to adjust the weights of the neural network. The adaptive algorithm was derived by means of a non-standard Lyapunov function that is lower semi-continuous and differentiable in almost the whole space. A compensator term was included in the identifier to reject some specific perturbations using a nonlinear robust algorithm. Two numerical examples demonstrated the improvements achieved by the learning algorithm introduced in this paper compared to classical schemes with continuous learning methods. The first one dealt with a benchmark problem used in the paper to explain how the discontinuous learning law works. The second one used the methane production model to show the benefits in engineering applications of the learning law proposed in this paper.
本文研究了具有连续动力学的神经网络的非连续有限时间收敛学习律的设计。这里使用神经网络来获得由一组常微分方程描述的不确定系统的非参数模型。不确定性的来源是存在一些外部扰动以及对描述系统动力学的非线性函数了解不足。一种基于非连续算法的新自适应算法被用于调整神经网络的权重。该自适应算法是通过一个在几乎整个空间中下半连续且可微的非标准李雅普诺夫函数推导出来的。在识别器中包含了一个补偿项,以使用非线性鲁棒算法来抑制一些特定的扰动。两个数值例子展示了本文所引入的学习算法相较于采用连续学习方法的经典方案所取得的改进。第一个例子处理了本文中用于解释非连续学习律如何工作的一个基准问题。第二个例子使用甲烷生产模型来展示本文所提出的学习律在工程应用中的优势。