Determining the swarm parameters of gases considering ion kinetics by parallel genetic algorithm on GPU platform

Mai Hao, Boya Zhang, Xingwen Li, Peiqiong Liu, Yuyang Yao, Anthony B Murphy
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Abstract

In this work, a convenient and efficient method is proposed to determine swarm parameters considering ion kinetics from pulsed Townsend (PT) measurements. First, a physical model was presented to describe the development of PT discharge considering electron detachment and ion conversion reactions. A numerical solution to the model was also proposed. In order to assess the precision of our calculations, we presented the calculated electronic and ionic transients derived from our model for different cases. Then, a genetic algorithm (GA) was proposed to find a set of swarm parameters, under which the deviation between the simulated current waveform and the actual measured current waveform is minimum. It is time-consuming to simulate a single waveform, and since a large number of waveforms need to be simulated in the GA, graphic processing unit-based parallel computing is used to improve computing efficiency. Finally, the swarm parameters of dry air considering electron detachment and ion conversion processes using the method were obtained and they are in good agreement with those in references.
通过 GPU 平台上的并行遗传算法确定考虑离子动力学的气体群参数
在这项工作中,我们提出了一种便捷高效的方法,通过脉冲汤森(PT)测量来确定考虑到离子动力学的蜂群参数。首先,考虑到电子脱离和离子转换反应,提出了一个物理模型来描述 PT 放电的发展过程。此外,还提出了该模型的数值解决方案。为了评估计算的精确性,我们展示了根据模型计算出的不同情况下的电子和离子瞬态。然后,我们提出了一种遗传算法(GA)来寻找一组蜂群参数,在该参数下,模拟电流波形与实际测量电流波形之间的偏差最小。模拟单个波形耗时较长,由于在 GA 中需要模拟大量波形,因此采用了基于图形处理单元的并行计算来提高计算效率。最后,利用该方法得到了考虑了电子脱离和离子转换过程的干燥空气的蜂群参数,这些参数与参考文献中的参数非常一致。
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