Big Data in Geophysics and Other Earth Sciences

被引:0
作者
A. D. Gvishiani
M. N. Dobrovolsky
B. V. Dzeranov
B. A. Dzeboev
机构
[1] Geophysical Center,
[2] Russian Academy of Sciences,undefined
[3] Schmidt Institute of Physics of the Earth,undefined
[4] Russian Academy of Sciences,undefined
[5] Geophysical Institute,undefined
[6] Vladikavkaz Scientific Center,undefined
[7] Russian Academy of Sciences,undefined
来源
Izvestiya, Physics of the Solid Earth | 2022年 / 58卷
关键词
Big Data; Earth sciences; Earth’s remote sensing; meteorological observations; seismic monitoring; seismic exploration; geoecology; geomagnetic observations;
D O I
暂无
中图分类号
学科分类号
摘要
Abstract—The term “Big Data” has become very popular over the past decade. The frequency of its use in the research papers, reports, and broad press has been steadily increasing. This work describes the origin and development of the theory and practice of Big Data as a scientific discipline, outlines the main characteristics and methods for Big Data processing and analysis, discusses the formalism and family of Big Data V-characteristics, and presents the examples of the sources of the growing Big Data which have fundamental effect on the development of geophysics and related Earth sciences. The examples of the sources of Big Data in the Earth sciences are remote sensing, meteorology, geoecology (in terms of the global hierarchical network SMEAR (Stations Measuring Earth surfaces and Atmosphere Relations)), and seismic exploration. Besides, we discuss seismic monitoring data which can become Big Data when combined with other geophysical information and consider geomagnetic data which are not Big Data but nevertheless have a great scientific value.
引用
收藏
页码:1 / 29
页数:28
相关论文
共 325 条
  • [1] Ammon C.J.(2010)Great earthquakes and Global Seismic Network Seismol. Res. Lett. 81 965-971
  • [2] Lay T.(2019)An Integrated Data Analytics Platform Front. Mar. Sci. 6 354-353
  • [3] Simpson D.W.(2018)Fast statistical outlier removal based method for large 3D point clouds of outdoor environments IFAC-PapersOnLine 51 348-352
  • [4] Armstrong E.M.(1975)Recommended standards for digital tape formats Geophysics 40 344-104
  • [5] Bourassa M.A.(2011)Photo and film technology on board domestic manned spacecraft (1961– 2000) Vopr. Istor. Estestvozn. Tekh. 32 87-29
  • [6] Cram T.A.(2016)Big Data Analytics for Earth Sciences: the EarthServer approach Int. J. Digital Earth 9 3-1323
  • [7] DeBellis M.(2010)A generalized regression-based model for forecasting winter wheat yields in Kansas and Ukraine using MODIS data Remote Sens. Environ. 114 1312-4445
  • [8] Elya J.(2016)Hydrometeor classification through statistical clustering of polarimetric radar measurements: a semi-supervised approach Atmos. Meas. Tech. 9 4425-852
  • [9] Greguska F.R.(2014)Modern approaches to processing large hyperspectral and multispectral aerospace data flows Izv., Atmos. Ocean. Phys 50 840-663
  • [10] Huang T.(2013)Natural Disaster Monitoring with Wireless Sensor Networks: A Case Study of Data-intensive Applications upon Low-Cost Scalable Systems Mobile Networks Appl 18 651-2219