Remarks on neural network controller using different sigmoid functions

T. Yamada, T. Yabuta
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引用次数: 9

Abstract

Many studies such as Kawato's work (1987) have been undertaken in order to apply both the flexibility and learning ability of neural networks to dynamic system controllers. Most of them used a fixed shape sigmoid function. We have confirmed that it is useful to change the sigmoid function shape to improve the nonlinear mapping capability of neural network controllers. This paper introduces the a new concept for autotuning sigmoid function shapes of neural network servo controllers. Three types of tuning method are proposed in order to improve the nonlinear mapping capability. The first type uses a uniform sigmoid function shape. With the second type, the sigmoid function shapes within one layer are the same and the shapes are tuned layer by layer is tuned. With the third type, the sigmoid function shape of each neuron is different and is tuned individually. Their characteristics are confirmed by simulation.<>
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使用不同s型函数的神经网络控制器评述
为了将神经网络的灵活性和学习能力应用于动态系统控制器,已经进行了许多研究,如Kawato的工作(1987)。它们大多使用固定形状的s型函数。结果表明,改变s型函数的形状有助于提高神经网络控制器的非线性映射能力。本文介绍了神经网络伺服控制器s型函数形状自整定的新概念。为了提高非线性映射能力,提出了三种调谐方法。第一种类型使用统一的s型函数形状。对于第二种类型,一层内的s型函数形状是相同的,并且形状是逐层调整的。对于第三种类型,每个神经元的s形函数形状是不同的,并且是单独调整的。通过仿真验证了它们的特性
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