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Neural network approach to control system identification with variable activation functions

机译:具有可变激活功能的神经网络方法来控制系统识别

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Human beings epitomize the concept of "intelligent control." Despite its apparent computational advantage over humans, no machine or computer has come close to achieving the level of sensor-based control which humans are capable of. Thus, there is a clear need to develop computational methods which can abstract human decision-making processes based on sensory feedback. Neural networks offer one such method with their ability to map complex nonlinear functions. In this paper, we examine the potential of an efficient neural network learning architecture to the problems of system identification and control. The cascade two learning architecture dynamically adjusts the size of the network as part of the learning process. As such, it allows different units to have different activation functions, resulting in faster learning, smoother approximations, and fewer required hidden units. We use the methods discussed here towards identifying human control strategy.
机译:人类是“智能控制”概念的缩影。尽管其在计算上比人类具有明显的优势,但是没有机器或计算机能够接近人类所能达到的基于传感器的控制水平。因此,显然需要开发可以基于感官反馈来抽象人类决策过程的计算方法。神经网络提供了一种映射复杂非线性函数的能力。在本文中,我们研究了有效的神经网络学习体系结构对系统识别和控制问题的潜力。级联两个学习体系结构作为学习过程的一部分,动态调整网络的大小。这样,它允许不同的单元具有不同的激活功能,从而导致更快的学习,更平滑的近似和更少的所需隐藏单元。我们使用此处讨论的方法来确定人为控制策略。

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