霍尔效应推进器的时间分辨数据驱动替代物

Adrian S Wong, Christine M Greve, Daniel Q Eckhardt
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引用次数: 0

摘要

将霍尔效应推进器视为非线性动力学系统,是理解和分析从推进器获取的数据的一个新视角。高速数据的获取可以解析这些推进器的高频振荡特征,从而对这些推进器进行更多层次的分类。值得注意的是,这些信号可以作为系统全部状态的独特指标,有助于推进器的数字描述和推进器动力学预测。在这项工作中,我们探索了一种存储计算框架,以根据霍尔效应推进器的实验时间序列测量结果建立代理模型。这种框架在预测流维混沌动力学系统的行为方面显示出巨大的前景。特别是,水库计算框架创建的代用模型既能预测推进器的观测行为,又能根据其他测量值估计某些测量值,即所谓的推理。
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Time-Resolved Data-Driven Surrogates of Hall-effect Thrusters
The treatment of Hall-effect thrusters as nonlinear, dynamical systems has emerged as a new perspective to understand and analyze data acquired from the thrusters. The acquisition of high-speed data that can resolve the characteristic high-frequency oscillations of these thruster enables additional levels of classification in these thrusters. Notably, these signals may serve as unique indicators for the full state of the system that can aid digital representations of thrusters and predictions of thruster dynamics. In this work, a Reservoir Computing framework is explored to build surrogate models from experimental time-series measurements of a Hall-effect thruster. Such a framework has shown immense promise for predicting the behavior of low-dimensional yet chaotic dynamical systems. In particular, the surrogates created by the Reservoir Computing framework are capable of both predicting the observed behavior of the thruster and estimating the values of certain measurements from others, known as inference.
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