人工智能和物联网在地震预测中的作用:回顾

Joshua Pwavodi , Abdullahi Umar Ibrahim , Pwadubashiyi Coston Pwavodi , Fadi Al-Turjman , Ali Mohand-Said
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引用次数: 0

摘要

地震是最具破坏性的自然灾害之一,可对环境、生命和财产造成灾难性影响。人们对地震预测和全面了解地震产生机制的兴趣与日俱增,然而地震是最无法预测的自然灾害。卫星数据、全球定位系统、干涉测量合成孔径雷达(InSAR)和地震仪(如微机电系统、地震仪、海底地震仪和分布式声学传感系统)都被用于预测地震,并取得了很大成功。尽管在地震波记录、存储和分析方面取得了进步,但地震时间、地点和震级预测仍然困难重重。另一方面,人工智能(AI)和物联网(IoT)的新发展已显示出提供更多见解和预测的巨大潜力。因此,本文回顾了人工智能驱动模型和物联网技术在地震预测中的应用、当前方法的局限性以及有待解决的研究问题。综述讨论了由于数据不足、不一致、地震前兆信号的多样性以及地球物理构成而导致的地震预测挫折。最后,本研究探讨了科学家可以采用的潜在方法或解决方案,以应对他们在地震预测中面临的挑战。分析基于人工智能和物联网在其他领域的成功应用。
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The role of artificial intelligence and IoT in prediction of earthquakes: Review

Earthquakes are classified as one of the most devastating natural disasters that can have catastrophic effects on the environment, lives, and properties. There has been an increasing interest in the prediction of earthquakes and in gaining a comprehensive understanding of the mechanisms that underlie their generation, yet earthquakes are the least predictable natural disaster. Satellite data, global positioning system, interferometry synthetic aperture radar (InSAR), and seismometers such as microelectromechanical system, seismometers, ocean bottom seismometers, and distributed acoustic sensing systems have all been used to predict earthquakes with a high degree of success. Despite advances in seismic wave recording, storage, and analysis, earthquake time, location, and magnitude prediction remain difficult. On the other hand, new developments in artificial intelligence (AI) and the Internet of Things (IoT) have shown promising potential to deliver more insights and predictions. Thus, this article reviewed the use of AI-driven Models and IoT-based technologies for the prediction of earthquakes, the limitations of current approaches, and open research issues. The review discusses earthquake prediction setbacks due to insufficient data, inconsistencies, diversity of earthquake precursor signals, and the earth's geophysical composition. Finally, this study examines potential approaches or solutions that scientists can employ to address the challenges they face in earthquake prediction. The analysis is based on the successful application of AI and IoT in other fields.

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