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Atmospheric River Database for the Himalayas

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Mendeley Data2024-03-27 更新2024-06-28 收录
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https://zenodo.org/record/4451901
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资源简介:
Atmospheric Rivers (ARs) are long and narrow regions of intense moisture transport in the lower troposphere. The dataset comprises of Atmospheric Rivers that have happened over the Himalayan Basins from 1982 to 2018. It includes the dates and times, duration, intensity/magnitude, tracks, and categories of the ARs. File Names and description: 1. ERA5_Persistant_Database2000km: This file includes the date, times, average Integrated Water Vapor Transport (IVT) magnitude (kg.m^-1s^-1), starting IVT, maximum IVT, and duration of ARs. These terms are explained below in greater details. Column “Date”: Gives the date and time (in Coordinated Universal Time UTC) of each AR timestep. The IVT data used to identify ARs is 6-hourly (00UTC, 06UTC, 12UTC and 18UTC). Column “AR_ID”: Each identified persistent AR, lasting for at least 18 hours, is given a unique ID, which remains same for all timesteps of the AR. This column gives the ID of ARs. The ID of an AR is based on the year in which the AR occurred, the letters “AR”, and the occurrence serial of the AR in the year. For example, the first AR in 1990 has ID 1980AR1. If the AR lasted for 10 timesteps, all 10 timesteps will have the same ID. Column “Ind”: This column gives the python index of IVT data in 6-hour yearly data, giving the date and time of each AR timestep. This column can be ignored since the same information is more directly available in “Date” column. Column “AvgIVT”: This column gives the average IVT magnitude (kg.m^-1s^-1) along the AR major axis, i.e., the gridcells that have maximum IVT along the AR track. For example, the first value corresponds to the average of all values from column “0” to column “88”, which give the IVT magnitude at each gridcell of the major axis of the first timestep. Column “StartIVT”: This column gives the IVT magnitude (kg.m^-1s^-1) at the initial gridcell on the first timestep when AR condition was identified. Column “ARDuration”: This column gives duration of the AR in hours; for example, an AR lasting for three timesteps will have the duration of 18 hours, an AR lasting for four timesteps will have duration of 24 hours. Column “MaxIVT”: This column gives the maximum of all IVT values (kg.m^-1s^-1) at the starting gridcells on each timestep of an AR. Column “ARCat”: This column gives category of the AR, based on IVT magnitude and duration of the ARs. Six categories have been defined, Cat0 denoting the weakest AR and Cat5 denoting the strongest AR. More details on this can be found in the accompanying paper. Column “0” to the end. These columns give the IVT magnitude (kg.m^-1s^-1) at each gridcell of the major axis of each AR timestep. Note that the cyclone dates were not available before 1982, so AR dates for 1979 to 1981 includes cyclonic IVT structures. 2. ERA5_Persistant_Database_lats_2000km: The file gives the latitudes of grid points of maximum IVT, i.e., the latitude of major axes of ARs throughout their duration. Columns “Date”, “AR_ID”, “Ind”, “AvgIVT”, “StartIVT”, “ARDuration”, “MaxIVT”, “ARCat” are the same as given above for “ERA5_Persistant_Database2000km.csv” file. Column “0” to end. These columns give the latitude ( in degrees North) at each gridcell of the major axis of each AR timestep. 3. ERA5_Persistant_Database_lons_2000km: The file gives the longitudes of grid points of maximum IVT, i.e., the longitudes of major axes of ARs throughout their duration Columns “Date”, “AR_ID”, “Ind”, “AvgIVT”, “StartIVT”, “ARDuration”, “MaxIVT”, “ARCat” are the same as given above for “ERA5_Persistant_Database2000km.csv” file. Column “0” to end. These columns give the longitude (in degrees East) at each gridcell of the major axis of each AR timestep
创建时间:
2023-06-28
搜集汇总
数据集介绍
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背景与挑战
背景概述
该数据集提供了1982年至2018年喜马拉雅盆地上空发生的大气河流(ARs)详细信息,包括日期时间、持续时间、强度、轨迹和类别。数据集由三个文件组成,涵盖综合水汽输送(IVT)数据、纬度和经度坐标,支持对大气河流的时空分布和强度变化进行分析。
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