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A Novel Reference Model-Based Neural Network Approach to Temperature Control System

机译:基于基于参考模型的温度控制系统的神经网络方法

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With the continuous development of deep learning,neural network with its excellent self-learning performance obtains a series of a major breakthrough in target detection,image recognition and so on.In this paper,the temperature control system based on a neural network combined with I-PD compensation is proposed.To improve the neural network self-learning efficiency,the reference model is introduced for providing the teaching signal of neural network.The system simulations are carried out in MATLAB/SIMULINK environment to verify the control efficiency of the proposed reference model based neural network control system.The experiments are carried out on the DSP based temperature control system platform,the results are compared to the conventional I-PD control system to verify the control efficiency.
机译:随着深度学习的不断发展,神经网络具有出色的自学习性能,获得了一系列的目标检测,图像识别等重大突破。本文,基于神经网络的温度控制系统与我相结合 -PD补偿是提出的。为了提高神经网络自学习效率,引入了用于提供神经网络的教学信号的参考模型。系统模拟在Matlab / Simulink环境中进行,验证所提出的控制效率 基于模型的神经网络控制系统。实验在基于DSP的温度控制系统平台上进行,结果与传统的I-PD控制系统进行了比较,以验证控制效率。

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