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Neuromorphic learning of continuous-valued mappings from noise-corrupted data

机译:从噪声损坏的数据中连续值映射的神经形态学习

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摘要

The effect of noise on the learning performance of the backpropagation algorithm is analyzed. A selective sampling of the training set is proposed to maximize the learning of control laws by backpropagation, when the data have been corrupted by noise. The training scheme is applied to the nonlinear control of a cart-pole system in the presence of noise. The neural computation provides the neurocontroller with good noise-filtering properties. In the presence of plant noise, the neurocontroller is found to be more stable than the teacher. A novel perspective on the application of neural network technology to control engineering is presented.
机译:分析了噪声对反向传播算法学习性能的影响。当数据已被噪声破坏时,建议对训练集进行选择性采样,以通过反向传播最大化对控制律的学习。该训练方案应用于存在噪声的车杆系统的非线性控制。神经计算为神经控制器提供了良好的噪声过滤特性。在存在植物噪音的情况下,发现神经控制器比老师更稳定。提出了关于神经网络技术在控制工程中的应用的新观点。

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