Spiking PID Control Applied in the Van de Vusse Reaction

C. A. Márquez-Vera, Z. Yakoub, Marco Antonio Márquez Vera, A. Ma’arif
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引用次数: 1

Abstract

Artificial neural networks (ANN) can approximate signals and give interesting results in pattern recognition; some works use neural networks for control applications. However, biological neurons do not generate similar signals to the obtained by ANN.  The spiking neurons are an interesting topic since they simulate the real behavior depicted by biological neurons. This paper employed a spiking neuron to compute a PID control, which is further applied to the Van de Vusse reaction. This reaction, as the inverse pendulum, is a benchmark used to work with systems that has inverse response producing the output to undershoot. One problem is how to code information that the neuron can interpret and decode the peak generated by the neuron to interpret the neuron's behavior. In this work, a spiking neuron is used to compute a PID control by coding in time the peaks generated by the neuron. The neuron has as synaptic weights the PID gains, and the peak observed in the axon is the coded control signal. The neuron adaptation tries to obtain the necessary weights to generate the peak instant necessary to control the chemical reaction. The simulation results show the possibility of using this kind of neuron for control issues and the possibility of using a spiking neural network to overcome the undershoot obtained due to the inverse response of the chemical reaction.
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峰值PID控制在Van de Vusse反应中的应用
人工神经网络(ANN)在模式识别中可以近似信号并给出有趣的结果;有些作品使用神经网络进行控制应用。然而,生物神经元产生的信号与人工神经网络所获得的信号不同。脉冲神经元是一个有趣的话题,因为它们模拟了生物神经元所描述的真实行为。本文采用尖峰神经元计算PID控制,并将其进一步应用于Van de Vusse反应。这种反应,就像倒摆一样,是一个基准,用于处理具有反向响应的系统,产生低于目标的输出。一个问题是如何对神经元可以解释的信息进行编码,并解码神经元产生的峰值来解释神经元的行为。在这项工作中,尖峰神经元被用来计算PID控制,通过及时编码由神经元产生的峰值。神经元的突触权重为PID增益,在轴突观察到的峰值为编码控制信号。神经元自适应试图获得必要的权重,以产生控制化学反应所需的峰值瞬间。仿真结果表明,在控制问题上使用这种神经元是可行的,并且可以利用尖峰神经网络来克服由于化学反应的逆响应而产生的欠冲。
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