首页> 外文会议>Emerging Technologies and Factory Automation, 1999. Proceedings. ETFA '99. 1999 7th IEEE International Conference on >A hybrid training procedure for artificial neural networks leading to parametric stability and cost minimization
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A hybrid training procedure for artificial neural networks leading to parametric stability and cost minimization

机译:人工神经网络的混合训练过程,可实现参数稳定性和成本最小化

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This paper presents a novel training algorithm for artificial neural networks. The algorithm combines the gradient descent technique with variable structure systems approach. The combination is performed by expressing the conventional weight update rule in continuous time and application of sliding mode control method to the gradient based training procedure. The proposed combination therefore exhibits a degree of robustness with respect to the unmodeled multivariable internal dynamics of gradient descent. With conventional training procedures, the excitation of this dynamics during a training cycle can lead to instability, which may be difficult to alleviate due to the multidimensionality of the solution space and the ambiguities on the free design parameters, such as learning rate or momentum coefficient. This paper demonstrates that a computationally intelligent system can be trained such that the adjustable parameter values are forced to settle down (parameter stabilization) while minimizing an appropriate cost function (cost optimization). The proposed approach is applied to the control of a robotic arm using feedforward neural networks.
机译:本文提出了一种新的人工神经网络训练算法。该算法将梯度下降技术与可变结构系统方法结合在一起。通过在连续时间内表达常规权重更新规则并将滑模控制方法应用于基于梯度的训练过程来执行组合。因此,所提出的组合相对于未建模的梯度下降多变量内部动力学表现出一定程度的鲁棒性。在常规训练过程中,在训练周期中激发这种动力会导致不稳定,由于解空间的多维性和自由设计参数(例如学习率或动量系数)的含糊不清,可能难以缓解这种不稳定。本文证明,可以训练一个计算智能系统,以使可调参数值被迫稳定下来(参数稳定),同时最小化适当的成本函数(成本优化)。所提出的方法被应用到使用前馈神经网络的机械臂的控制中。

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