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首页> 外文期刊>International Journal of Control, Automation, and Systems >Implementation of Self-adaptive System using the Algorithm of Neural Network Learning Gain
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Implementation of Self-adaptive System using the Algorithm of Neural Network Learning Gain

机译:利用神经网络学习增益算法实现自适应系统

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摘要

The neural network is currently being used throughout numerous control system fields. However, it is not easy to obtain an input-output pattern when the neural network is used for the system of a single feedback controller and it is difficult to obtain satisfactory performance with when the load changes rapidly or disturbance is applied. To resolve these problems, this paper proposes a new mode to implement a neural network controller by installing a real object for control and an algorithm for this, which can replace the existing method of implementing a neural network controller by utilizing activation function at the output node. The real plant object for controlling of this mode implements a simple neural network controller replacing the activation function and provides the error back propagation path to calculate the error at the output node. As the controller is designed using a simple structure neural network, the input-output pattern problem is solved naturally and real-time learning becomes possible through the general error back propagation algorithm. The new algorithm applied neural network controller gives excellent performance for initial and tracking response and shows a robust performance for rapid load change and disturbance, in which the permissible error surpasses the range border. The effect of the proposed control algorithm was verified in a test that controlled the speed of a motor equipped with a high speed computing capable DSP on which the proposed algorithm was loaded.
机译:目前,神经网络正在整个控制系统领域中广泛使用。然而,当神经网络用于单个反馈控制器的系统时,不容易获得输入-输出模式,并且当负载快速变化或施加干扰时,难以获得令人满意的性能。为了解决这些问题,本文提出了一种通过安装用于控制的真实对象来实现神经网络控制器的新模式及其算法,该模式可以替代通过利用输出节点处的激活函数来实现的现有神经网络控制器方法。 。用于控制该模式的实际工厂对象实现了一个简单的神经网络控制器来代替激活功能,并提供了误差反向传播路径以计算输出节点处的误差。由于使用简单结构的神经网络设计了控制器,自然解决了输入输出模式问题,并且可以通过通用的误差反向传播算法进行实时学习。应用新算法的神经网络控制器在初始和跟踪响应方面具有出色的性能,并在快速的负载变化和干扰方面表现出强大的性能,其中允许的误差超过了范围边界。这项控制算法的效果已在一项测试中得到了验证,该测试控制了装有高速计算能力DSP的电机的速度,在该DSP上加载了该算法。

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