five

Water Modelling-Palaeo Stochastic Climate Data-South Coast

收藏
Research Data Australia2024-12-21 收录
下载链接:
https://researchdata.edu.au/water-modelling-palaeo-south-coast/2017010
下载链接
链接失效反馈
官方服务:
资源简介:
This stochastic climate dataset relates to the __South Coast__ region.\r\n\r\nThe stochastic data are 10,000-year daily data sets of rainfall and potential evapotranspiration generated using observed data sets combined with palaeo-logical climate data. This work has been undertaken by researchers at University of Adelaide and University of Newcastle and used in Regional Water Strategies.\r\n\r\nThe climate for each climate variable is uploaded as a single ZIP file, which includes three files:\r\n\r\n1.\ta .csv file of daily climate data of 10,000 years (format: date, data; filename starts with station ID)\r\n2.\ta pdf file of the meta data of the climate data describing the geographic location of the climate station, data type, period of observed data used for generating stochastic data, a location map.\r\n3.\ta pdf file of the quality assurance information.\r\n\r\nThe climate variables include one or more of the following: rainfall, evapotranspiration (Mwet: Morton’s wet area potential evapotranspiration, Mlake: Morton’s lake evaporation, Penman-Monteith reference evapotranspiration (FAO56)), Maximum temperature, Minimum temperature. \r\n\r\nNote: Within each ZIP file, the number seen within the filename i.e. 9093_SILO_Rain.zip represents the Station ID Number 59093.

本随机气候数据集关联于南海岸(South Coast)区域。 该随机数据集为时长10000年的日尺度降雨与潜在蒸散发数据集,其生成过程融合了实测气象数据集与古气候数据。本数据集由阿德莱德大学与纽卡斯尔大学的研究人员构建,并已应用于区域水资源战略研究中。 每个气候变量的对应数据均以单个ZIP压缩包形式上传,每个压缩包内含三个文件: 1. 单份包含10000年日尺度气候数据的CSV文件(格式:日期,数据;文件名以站点ID作为前缀) 2. 气候数据元数据PDF文件,内容涵盖气候站点的地理位置、数据类型、用于生成随机数据集的实测数据时段,以及站点位置分布图 3. 质量保障信息PDF文件 本次涵盖的气候变量包含以下一项或多项:降雨、蒸散发(其中Mwet指莫顿湿区潜在蒸散发,Mlake指莫顿湖面蒸发量,彭曼-蒙特斯(Penman-Monteith)参考蒸散发采用FAO56标准)、最高气温、最低气温。 备注:每个ZIP压缩包的文件名中包含的编号,例如9093_SILO_Rain.zip,其对应的站点ID编号实际为59093。
提供机构:
data.nsw.gov.au
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作