Dynamic neural networks for inverse dynamics based control of evaporator

V. Nanayakkara, Y. Ikegami, H. Uehara
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Abstract

This paper compares inverse dynamics identification for controlling an evaporator using dynamic neural networks developed in two different control strategies, namely, conventional direct mapping NN (DMNN) with RBF nonlinear static functions and RBF dynamic neural unit (DNU) neuronal models as perceptrons. In spite of their success, DMNN suffered from the problem of curse of dimensionality which involves parametric dimensionality and structural dimensionality. Hence this paper gives a novel NN architecture consisting of simple nonlinear dynamic blocks, termed DNUs as perceptrons to overcome this major problem and a comparison is done with a conventional DMNN to validate the proposed method. In the experimental plant, the evaporator heat flow rate and secondary fluid outlet temperature are to be controlled while keeping refrigerant superheat temperature in the range 4-7 K at the evaporator outlet by manipulating refrigerant and evaporator secondary fluid flow rates. Therefore a multi-input multi-output controller is required for its proper control. The effectiveness of the proposed novel dynamic NN controller is demonstrated through reduced number of activation functions with lesser calculation time and efficient error convergence in training. Again, the probability of error convergence to a global minimum is quite high when NN structure gets simple. Therefore, this kind of dynamic NN can handle real-world applications efficiently. The inverse dynamics identification was elaborated using experimental data from the ammonia refrigerant evaporator and the proposed NN architecture assures promising results.
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蒸发器逆动态控制的动态神经网络
本文比较了在两种不同控制策略下发展的动态神经网络在蒸发器控制中的逆动力学辨识,即具有RBF非线性静态函数的传统直接映射神经网络(DMNN)和作为感知器的RBF动态神经单元(DNU)神经元模型。DMNN在取得成功的同时,也存在着参数维数和结构维数的维数诅咒问题。因此,本文提出了一种由简单的非线性动态块组成的新型神经网络架构,称为dnu作为感知器来克服这一主要问题,并与传统的DMNN进行了比较以验证所提出的方法。在实验装置中,通过控制制冷剂和蒸发器二次流体流量,控制蒸发器热流速率和二次流体出口温度,同时保持蒸发器出口制冷剂过热度在4- 7k范围内。因此,需要多输入多输出控制器对其进行适当的控制。通过减少激活函数数量、减少计算时间和有效的训练误差收敛,证明了该动态神经网络控制器的有效性。同样,当神经网络结构变得简单时,误差收敛到全局最小值的概率非常高。因此,这种动态神经网络可以有效地处理实际应用。利用氨制冷剂蒸发器的实验数据详细阐述了反动力学辨识,所提出的神经网络结构保证了良好的结果。
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