Cokriging在小卫星热分析中的应用

Anastasios Kontaxoglou, S. Tsutsumi, Samir Khan, T. Shibukawa, S. Nakasuka
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引用次数: 0

摘要

在太空中,人为干预是不可能的,故障必须自主检测和纠正。不准确、延迟或干扰可能导致组件故障,从而导致灾难性故障。因此,动态系统仿真可以大大提高卫星的运行阶段。这项工作研究了用于模拟小卫星的多保真度框架,并将其与传统的回归方法进行了比较,特别是高斯过程和门控循环单元。该框架结合了计算成本低、保真度低的代理模型和精确的高保真度模型。在前者的情况下,递归神经网络,特别是门控递归单元被考虑。对于后者,采用有限元模型生成描述卫星状态的稀疏高保真数据。高保真仿真是昂贵的。然而,丰富的低保真度数据可以用来加快这一过程。因此,通过共克里格法,高保真度数据通过综合校正对低保真度数据进行校正,其中参数由高斯过程给出,提供不确定度量化。当一些新数据到达时,可以对模型进行调整,以实现最小的计算成本。利用NSPO-1卫星的热分析数据,通过一组模拟验证了该框架。NSPO-1是台湾空间组织(NSPO)的一颗6U立方体卫星,由东京大学智能空间系统实验室(ISSL)共同开发,打算在LEO轨道上运行,并且打算提供一个方便的验证平台来测试由NSPO开发的光学传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Cokriging for Thermal Analysis in Small Satellites
In space, where human intervention is not possible, faults must be autonomously detected and rectified. Inaccuracies, delays, or disturbances can cause component failures that can lead to catastrophic failure. In light of this, a dynamic system simulation can greatly enhance the operational phase of a satellite. This work investigates a multi-fidelity framework for the simulation of small satellites and compares it to traditional regression methods, in particular Gaussian processes and Gated Recurrent Units. The framework combines a computationally cheap, low fidelity surrogate model with an accurate high-fidelity model. In the case of the former, recurrent neural networks, particularly a Gated Recurrent Unit is considered. For the latter, a finite element model is used to produce sparse high-fidelity data describing the satellite's state. High fidelity simulations are expensive. However, abundant low fidelity data can be taken advantage of to speed up the process. Therefore, by means of cokriging, low fidelity data are corrected by high-fidelity data through a comprehensive correction, where the parameters are given by the use of Gaussian processes to provide uncertainty quantification. When some new data arrives, the model can be refitted for a minimal computation cost. The framework is demonstrated through a set of simulations, using thermal analysis data from the NSPO-1 satellite. NSPO-1 is a Taiwanese Space Organization's (NSPO) 6U cube satellite, co-developed by the Intelligent Space Systems Laboratory (ISSL) of the University of Tokyo, intended to orbit in LEO and is intended to provide a convenient validation platform to test optical sensors developed by the NSPO.
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