Skip Navigation Links.
Collapse <span class="m110 colortj mt20 fontw700">Volume 12 (2024)</span>Volume 12 (2024)
Collapse <span class="m110 colortj mt20 fontw700">Volume 11 (2023)</span>Volume 11 (2023)
Collapse <span class="m110 colortj mt20 fontw700">Volume 10 (2022)</span>Volume 10 (2022)
Collapse <span class="m110 colortj mt20 fontw700">Volume 9 (2021)</span>Volume 9 (2021)
Collapse <span class="m110 colortj mt20 fontw700">Volume 8 (2020)</span>Volume 8 (2020)
Collapse <span class="m110 colortj mt20 fontw700">Volume 7 (2019)</span>Volume 7 (2019)
Collapse <span class="m110 colortj mt20 fontw700">Volume 6 (2018)</span>Volume 6 (2018)
Collapse <span class="m110 colortj mt20 fontw700">Volume 5 (2017)</span>Volume 5 (2017)
Collapse <span class="m110 colortj mt20 fontw700">Volume 4 (2016)</span>Volume 4 (2016)
Collapse <span class="m110 colortj mt20 fontw700">Volume 3 (2015)</span>Volume 3 (2015)
Collapse <span class="m110 colortj mt20 fontw700">Volume 2 (2014)</span>Volume 2 (2014)
Collapse <span class="m110 colortj mt20 fontw700">Volume 1 (2013)</span>Volume 1 (2013)
Journal of Business and Management Sciences. 2019, 7(3), 112-120
DOI: 10.12691/JBMS-7-3-2
Original Research

Blockchain Technology Helps the Development of Meteorological Informatization

Guanghui Wang1,

1Center for Meteorological data Analysis and Application, Chinese Academy of Meteorological Sciences, Beijing 100081, China

Pub. Date: September 05, 2019

Cite this paper

Guanghui Wang. Blockchain Technology Helps the Development of Meteorological Informatization. Journal of Business and Management Sciences. 2019; 7(3):112-120. doi: 10.12691/JBMS-7-3-2

Abstract

With the impact of the Internet, the application of information technology promotes the continuous change and development of meteorological field. Based on the intrinsic motivation of the development and change of meteorological field, the impetus of blockchain technology to meteorological informatization is discussed in this paper. Firstly, the application status and development opportunities of information technology in meteorological field are analyzed. Then, the new requirements of meteorological information business development driven by information technology are presented. Finally, the paper deals with the role of blockchain technology in promoting the modernization of meteorological information and points out that the combination of blockchain technology with artificial intelligence and big data will further develop and improve meteorological information technology in many aspects.

Keywords

blockchain, big data, artificial intelligence, cloud computing, meteorological information

Copyright

Creative CommonsThis work is licensed under a Creative Commons Attribution 4.0 International License. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/

References

[1]  Shen Wenhai, Constructing a complete Meteorological data Management system. China's information technology, 2, 82-91, Feb. 2017.
 
[2]  Yuan yong, Wang fei-yue, Blockchain: The Satate of the Art and Future Trends. Acta Automation Sicnica, 42(4), 481-494, April 2016.
 
[3]  YU Li'na, ZHANG Guofeng, et al, “Modern Agricultural Product Supply Chain Based on Block Chain Technology”. Transaction of the Chinese Society for Agricultural Machinery, 48(Supplement), 387-393, Dec. 2017.
 
[4]  He Pu, Yuge, et al, “Survey on Blockchain Technology and Its Application Prospect”. Computer Science, 44(4), 1-7, Apr. 2017.
 
[5]  Boukabara S A., E. Maddy, K. Ide, K. Garrett, E. Jones, K. Kumar, N. Shahroudi, and A. Neiss, 2018: “Exploring Using Artificial Intelligence (AI) for NWP and Situational Awareness Applications,” Austin, Texas, Amer. Meteor. Soc., Available: https://ams.confex.com/ams/98Annual/webprogram/Paper330911.html.
 
[6]  Heye A. D., J. Cain, K. Venkatesan, A. Kommaraju, C. George, and P. Brown, 2018: “Precipitation Nowcasting Leveraging Deep Learning and HPC Systems to Optimize the Data Pipeline,” Austin, Texas, Amer. Meteor. Soc., Available: https://ams.confex.com/ams/98Annual/webprogram/Paper327679.html.
 
[7]  Collins W, M. Prabhat, E. Racah, Y. Liu, K. Kashinath, C. Pal, J. C. Biard, K. E. Kunkel, M. Wehner, and T. O'Brien, 2018: “Deep Learning for Detecting Extreme Weather and Climate Patterns,” Austin, Texas, Amer. Meteor. Soc., Available: https://ams.confex.com/ams/98Annual/webprogram/Paper328029.html.
 
[8]  Wang Xijin, “Analysis on the Future Application Service trend of Meteorological Big Data,” Information & Comunications, 172(4), 290-291, 2017.
 
[9]  Shen Wenhai, Meteorological Informatization and Management in Cloud era, Electronic industry publishing house, Aug. 2017.
 
[10]  Gu Yan, “Block chain + Big data: ‘Stamp’, ‘encrypt’ for Data,” Chinese, Observation,” 38-40. Available: http://www.cnki.net.