The Significance of Input Features for Domain Adaptation of Spacecraft Data

IF 0.6 4区 物理与天体物理 Q4 ASTRONOMY & ASTROPHYSICS
E. Z. Karimov, I. N. Myagkova, V. R. Shirokiy, O. G. Barinov, S. A. Dolenko
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引用次数: 0

Abstract

The problem of improving the neural network forecast of geomagnetic index Dst under conditions in which the input data for such a forecast are measured by two spacecraft, one of which is close to the end of its life cycle, and the data history of the other is not yet enough to construct a neural network forecast of the required quality. For an efficient transition from the data of one spacecraft to the data of another, it is necessary to use methods of domain adaptation. This paper tests and compares several data translation methods. Also, for each translated attribute, an optimal set of parameters for its translation were found, which further reduces the difference between domains. The paper shows that the use of domain adaptation methods with the selection of significant features can improve the forecast compared to the results of using untranslated data.

Abstract Image

输入特征对航天器数据域自适应的意义
摘要针对地磁指数Dst的神经网络预报输入数据是由两艘航天器测量的,其中一艘航天器已接近寿命周期,而另一艘航天器的数据历史还不足以构建所需质量的神经网络预报的情况下,如何改进该神经网络预报的问题。为了实现从一个航天器数据到另一个航天器数据的有效转换,需要使用域自适应方法。本文对几种数据翻译方法进行了测试和比较。此外,对于每个翻译的属性,找到了一组最优的翻译参数,这进一步减少了域之间的差异。研究表明,与使用未翻译数据的预测结果相比,使用选择显著特征的领域自适应方法可以提高预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cosmic Research
Cosmic Research 地学天文-工程:宇航
CiteScore
1.10
自引率
33.30%
发文量
41
审稿时长
6-12 weeks
期刊介绍: Cosmic Research publishes scientific papers covering all subjects of space science and technology, including the following: ballistics, flight dynamics of the Earth’s artificial satellites and automatic interplanetary stations; problems of transatmospheric descent; design and structure of spacecraft and scientific research instrumentation; life support systems and radiation safety of manned spacecrafts; exploration of the Earth from Space; exploration of near space; exploration of the Sun, planets, secondary planets, and interplanetary medium; exploration of stars, nebulae, interstellar medium, galaxies, and quasars from spacecraft; and various astrophysical problems related to space exploration. A chronicle of scientific events and other notices concerning the main topics of the journal are also presented.
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