A general backpropagation algorithm for feedforward neural networks learning 论文
2002IEEE Transactions on Neural Networks引用 218
Neural Networks and ApplicationsControl Systems and IdentificationFault Detection and Control Systems
摘要
A general backpropagation algorithm is proposed for feedforward neural network learning with time varying inputs. The Lyapunov function approach is used to rigorously analyze the convergence of weights, with the use of the algorithm, toward minima of the error function. Sufficient conditions to guarantee the convergence of weights for time varying inputs are derived. It is shown that most commonly used backpropagation learning algorithms are special cases of the developed general algorithm.