基于人工智能的国际空间站和空间数据技术

P. Pant, A. Rajawat, S. Goyal, A. Potgantwar, P. Bedi, M. Răboacă, Neagu Bogdan Constantin, Chaman Verma
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引用次数: 1

摘要

数十亿的星系、恒星、太阳系、行星和其他未被发现的神秘物体存在于不断膨胀的空间中。当国际空间站被部署到地球较低的轨道以更好地了解太空时,人类向前迈出了一大步。本研究的重点是在国际空间站部署的基于人工智能的技术和潜在的模型。该研究提出了一些可以在国际空间站部署的机器学习模型和技术,以提高其效率并为机组人员提供安全保障。本文提出了强大且趋势的机器学习/深度学习算法,如ANN和聚类算法,以从空间收集的数据中获得见解,并促进工业自动化。对美国宇航局为国际空间站设计的“机器人宇航员”的要求、运行和构造进行了详细的说明。这篇论文还介绍了小行星探测系统ATLAS。还着重介绍了向机组人员提供医疗援助、碎片及其影响、分析数据和利用机器学习从空间研究数据中提取见解的方法。研究了如何将空间探索中使用的技术用于国际空间站以提高其性能,并概述了国际空间站(ISS)中部署的一些现有基于人工智能的技术。
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AI based Technologies for International Space Station and Space Data
Billions of galaxies, stars, solar systems, planets, and other undiscovered mysterious objects are present in the continuously expanding space. Humans took a giant step forward when the International Space Station was deployed into Earth's lower orbit for a better understanding of space. This research focuses of the Artificial Intelligence based technologies that are deployed in the International Space Station and potential models. The study proposes some Machine Learning models and technologies that could be deployed in the International Space Station to increase its efficiency and provide security to the crew. Powerful and trending Machine Learning/Deep Learning Algorithms like ANN and Clustering algorithms are suggested by the paper to get insights from the data gathered from the space and to promote the Industry Automation. A detailed explanation of the requirement, operation, and construction of NASA's “Robonauts” designed for the International Space Station is discussed in the research. The paper also put light on the ATLAS, an asteroid detecting system. The methods for providing medical aid to the crew, debris and its influence, analyzing data and extracting insight from space research data using machine learning are also highlighted. Investigation on how technologies used in space exploration could be used in the ISS to improve its performance and an overview of some of the existing AI-based technologies deployed in the International Space Station (ISS) is discussed.
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