CMAC神经网络结构的自优化

Weiwei Yu, K. Madani, C. Sabourin
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引用次数: 2

摘要

CMAC神经网络已广泛应用于非线性系统的实时控制,如机器人控制、飞行器控制等。然而,随着CMAC输入维数的增加,所需的内存容量呈指数增长,这可能会给CMAC在线应用带来严重的计算挑战。本文采用实验协议来说明CMAC结构对近似质量和所需内存大小的影响。结果表明,该方法可以得到建模误差最小的最优结构。在不增加网络结构复杂度的前提下,利用自优化算法对CMAC神经网络的结构进行调整,使其在不增加网络结构复杂度的情况下,以最小的内存要求实现最小的建模误差。
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Self-optimizing for the Structure of CMAC neural network
CMAC neural network has been widely applied on the real-time control of the nonlinear systems, such as robot control, aerocraft control and etc. However, the required memory size increases exponentially with the input dimension of CMAC, it may conduct to serious computational challenges in its on-line application. In this paper, experimental protocol is used for illustrating how the structure of CMAC influence the approximation qualities and required memory size. It is found that an optimal structure carrying the minimum modeling error could be achieved. The self-optimizing algorithm is then developed to adjust the structure of CMAC neural network in order to accomplish the minimum modeling error with minimum required memory size, without increase the structure complexness of the network.
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