Convolutional Neural Networks for Determining the Ion Beam Impact on a Space Debris Object

IF 0.6 Q3 MULTIDISCIPLINARY SCIENCES Science and innovation Pub Date : 2023-12-22 DOI:10.15407/scine19.06.019
M. Redka, C. Khoroshylov
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Abstract

Introduction. Space debris is a serious problem that significantly complicates space activity. This problem can be mitigated by active space debris removal. The ion beam shepherd (IBS) concept assumes the contactless removal of a space debris object (SDO) by the plume of an ion thruster (IT). Techniques for determining the force impact from the IT to the SDO are of crucial importance for implementing the IBS concept.Problem Statement. A launcher’s upper stage, approximated by a cylinder, is considered an SDO deorbited by the plume of the IT. The SDO can change its orientation and position relative to the shepherd satellite. The shepherd satellite shall be able to determine the force transmitted to the SDO by the IT, using only SDO’s images as the input information.Purpose. The study aims to develop a neural net model that can map an SDO image to the force transmitted by an IT plume to this object and estimate the accuracy of such models.Material and Methods. Plasma physics methods are used to obtain ground truth values of the ion beam force. The deep learning methodology is applied to create neural net models.Results. Three different approaches for end-to-end ion force determination have been investigated. The first model uses a single convolutional neural net (CNN). The second model is an ensemble network consisting of four sub-models, and a classifier is used to pick the correct sub-model. The last model is similar to the first one but is trained on all images used for the second model. After training, all three models’ accuracy and computational complexity are estimated. These estimates demonstrate the acceptable performance of CNN-based models.Conclusions. This paper demonstrates that CNNs can be used to determine the force impact without knowledge about the SDO position and orientation and significantly faster than the previous methods.
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用于确定离子束对空间碎片物体影响的卷积神经网络
导言。空间碎片是一个严重问题,使空间活动大为复杂。主动清除空间碎片可以缓解这一问题。离子束牧羊人(IBS)概念假定通过离子推进器(IT)的羽流对空间碎片物体(SDO)进行非接触式清除。确定离子推进器对空间碎片物体的作用力的技术对于实施 IBS 概念至关重要。发射装置的末级近似于一个圆柱体,被视为被离子推进器羽流脱附的 SDO。SDO 可以改变其相对于牧羊卫星的方向和位置。牧羊人卫星应能仅利用 SDO 的图像作为输入信息,确定 IT 传递给 SDO 的力。本研究旨在开发一种神经网络模型,该模型可将 SDO 图像映射为 IT 羽流传递给该天体的力,并估算此类模型的准确性。利用等离子物理学方法获取离子束力的地面真实值。应用深度学习方法创建神经网络模型。研究了三种不同的端到端离子力测定方法。第一个模型使用单个卷积神经网络(CNN)。第二个模型是由四个子模型组成的集合网络,使用分类器挑选正确的子模型。最后一个模型与第一个模型类似,但在第二个模型使用的所有图像上进行训练。训练完成后,对所有三个模型的准确性和计算复杂度进行了估算。这些估算结果表明,基于 CNN 的模型的性能是可以接受的。本文证明了 CNN 可用于在不了解 SDO 位置和方向的情况下确定力的影响,而且比以前的方法快得多。
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Science and innovation
Science and innovation MULTIDISCIPLINARY SCIENCES-
CiteScore
1.10
自引率
0.00%
发文量
55
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