Research and development in hypersonics have progressed significantly in recent years, with various military and commercial applications being demonstrated increasingly. Public and private organizations in several countries have been investing in hypersonics, with the aim to overtake their competitors and secure/improve strategic advantage and deterrence. For these organizations, being able to identify emerging technologies in a timely and reliable manner is paramount. Recent advances in information technology have made it possible to analyze large amounts of data, extract hidden patterns, and provide decision-makers with new insights. In this study, we focus on scientific publications about hypersonics within the period of 2000-2020, and employ natural language processing and machine learning to characterize the research landscape by identifying 12 key latent research themes and analyzing their temporal evolution. Our publication similarity analysis revealed patterns that are indicative of cycles during two decades of research. The study offers a comprehensive analysis of the research field and the fact that the research themes are algorithmically extracted removes subjectivity from the exercise and enables consistent comparisons between topics and between time intervals.
翻译:近年来,超声波研究与开发取得了显著进展,各种军事和商业应用日益得到展示,一些国家的公共和私营组织一直在投资于超音速学,目的是超越竞争者,保障/改善战略优势和威慑;对于这些组织来说,至关重要的是能够及时可靠地查明新兴技术;信息技术的近期进步使得能够分析大量数据,提取隐藏模式,为决策者提供新的见解;在本研究中,我们侧重于2000-2020年期间关于超声波的科学出版物,并采用自然语言处理和机器学习,通过确定12个关键潜在研究主题和分析其时间演变来描述研究领域的特点;我们的出版物相似性分析揭示了20年研究周期的模式;研究对研究领域进行了全面分析,研究主题从逻辑学上提取,从而得以在研究过程中消除主题性,并在时间间隔之间进行一致的比较。