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何を書くのか

著者・論文タイトル・雑誌名・ページ数・発行年・doiなど。たとえば、アメリカ気象学会 (AMS)の記述様式の規定は下記となります。掲載誌によって、記述規定が異なります。必ず規定を確認しましょう。

具体例
Kotsuki, S., and Bishop, H. C. (2022): Implementing Hybrid Background Error Covariance into the LETKF with Attenuation-based Localization: Experiments with a Simplified AGCM. Mon. Wea. Rev., 150, 283-302. doi: 10.1175/MWR-D-21-0174.1


引用文献リストを収集しています。引用文献の書式はジャーナルにより異なりますが、ここではAMS (アメリカ気象学会)のジャーナルに掲載できる形にしています。
(研究室メンバーのみ:追加希望がありましたら、internalでお知らせください)


Abbreviations of Journals

  • Ann. Math. Statist. (The Annals of Mathematical Statistics)
  • Atmos. Environ. (Atmospheric Environment)
  • Atmos. Sci. (Atmospheric Science)
  • Atmos. Meas. Tech. (Atmospheric Measurement Techniques; AMT)
  • Boundary-Layer Meteorol. (Boundary-Layer Meteorology)
  • Bull. Am. Meteorol. Soc. (Bulletin of the American Meteorological Society; BAMS)
  • Clim. Dyn. (Climate Dynamics)
  • Comput. Geosci. (Computational Geosciences)
  • Earth’s Future
  • Ecol. Modell. (Ecological Modelling)
  • Environ. Res. Lett. (Environmental Research Letters; ERL)
  • Eur. J. Agron. (European Journal of Agronomy)
  • Fluid Dyn. Res. (Fluid Dynamics Research)
  • Geosci. Model Dev. (Geoscientific Model Development; GMD)
  • Geophys. Res. Lett. (Geophysical Research Letters; GRL)
  • Global Biogeochemical Cycles (Global Biogeochemical Cycles)
  • Hydrol. Earth Syst. Sci. (Hydrology and Earth System Sciences ; HESS)
  • Hydrol. Res. Lett. (Hydrological Research Letters; HRL)
  • IEEE Trans. Geosci. Remote Sens. (IEEE International Geoscience and Remote Sensing Symposium)
  • Int. J. Remote Sens. (International Journal of Remote Sensing)
  • J. Adv. Modeling Earth Syst. (Journal of Advances in Modeling Earth Systems; JAMES)
  • J. Am. Stat. Assoc. (Journal of the American Statistical association)
  • J. Appl. Meteor. Climatol. (Journal of Applied Meteorology and Climatology)
  • J. Atmos. Oceanic Technol. (Journal of Atmospheric and Oceanic Technology; JTECH)
  • J. Atmos. Sci. (Journal of the Atmospheric Sciences; JAS)
  • J. Comput. Phys. (Journal of Computational Physics; JCP)
  • J. Geophys. Res. (Journal of Geophysical Research; JGR)
  • J. Hydrometeoro. (Journal of Hydrometeorology)
  • J. Meteor. Soc. Japan (Journal of the Meteorological Society of Japan; JMSJ)
  • J. Meteor. Appl.
  • Mon. Wea. Rev. (Monthly Weather Review; MWR)
  • Nature
  • Nat. Clim. Chang. (Nature Climate Change)
  • Nat. Hazards Earth Sys. Sci. (Natural Hazards and Earth System Sciences; NHESS)
  • Nonlin. Processes Geophys. (Nonlinear Processes in Geophysics; NPG)
  • Phys. Rev. Lett. (Physical Review Letters; PRL)
  • Proc. Natl. Acad. Sci.
  • PLOS ONE
  • Prog. Earth Planet. Sci (Progress in Earth and Planetary Science; PEPS)
  • Q. J. R. Meteorol. Soc. (Quarterly Journal of the Royal Meteorological Society; QJRMS)
  • Science
  • Sci. Rep. (Scientific Reports)
  • SIAM J. Sci. Comput. (SIAM Journal on Scientific Computing)
  • Water Resour. Res. (Water Resources Research)
  • Wea. and Forecasting (Weather and Forecasting)

Edits from “APA” of google scholar

  1. “-” –> “–” : for page numbers
  2. & –> and : for list of authors
  3. (YYYY). –> (YYYY): for publication years

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参考サイト

 - 国立環境研究所・花崎直太氏のサイト "論文投稿"

 - 千葉大学・オンライン学習ポータル "文献を引用する"