The European Space Agency is well known as a powerful force for scientific discovery in numerous areas related to Space. The amount and depth of the knowledge produced throughout the different missions carried out by ESA and their contribution to scientific progress is enormous, involving large collections of documents like scientific publications, feasibility studies, technical reports, and quality management procedures, among many others. Through initiatives like the Open Space Innovation Platform, ESA also acts as a hub for new ideas coming from the wider community across different challenges, contributing to a virtuous circle of scientific discovery and innovation. Handling such wealth of information, of which large part is unstructured text, is a colossal task that goes beyond human capabilities, hence requiring automation. In this paper, we present a methodological framework based on artificial intelligence and natural language processing and understanding to automatically extract information from Space documents, generating value from it, and illustrate such framework through several case studies implemented across different functional areas of ESA, including Mission Design, Quality Assurance, Long-Term Data Preservation, and the Open Space Innovation Platform. In doing so, we demonstrate the value of these technologies in several tasks ranging from effortlessly searching and recommending Space information to automatically determining how innovative an idea can be, answering questions about Space, and generating quizzes regarding quality procedures. Each of these accomplishments represents a step forward in the application of increasingly intelligent AI systems in Space, from structuring and facilitating information access to intelligent systems capable to understand and reason with such information.
翻译:众所周知,欧洲航天局是众多空间相关领域科学发现的一个强大力量,欧空局执行的不同飞行任务所创造的知识数量之多,深度之广,对科学进步的贡献之大,涉及大量文件,如科学出版物、可行性研究、技术报告和质量管理程序等。通过开放空间创新平台等举措,欧空局还充当了来自更广泛的社会、不同挑战的新想法的中心,有助于科学发现和创新的良性循环。处理这类丰富的信息,其中很大一部分是未经结构化的文本,是一项超越人类能力的艰巨任务,因此需要自动化。在本文件中,我们提出了一个基于人工智能和自然语言处理和理解的方法框架,以便自动从空间文件中提取信息,从中产生价值,并通过在欧空局不同职能领域开展的若干案例研究,包括飞行任务设计、质量保证、长期数据保护以及开放空间创新平台,展示了这些技术在从不费力地搜索和建议空间信息到自动决定空间信息处理和理解如何自动地从空间文件自动提取信息、从空间数据获取到智能应用的每个阶段的价值。解说,关于空间应用的每个阶段都能够理解和智能应用的系统。