2021-2023年京津冀蔬菜产销监测数据集
收稿日期: 2025-02-13
录用日期: 2025-04-03
网络出版日期: 2025-06-23
基金资助
2024年农产品市场信息采集分析项目;北京市乡村振兴农业科技项目(NY2502270125)
Monitoring Dataset of Vegetable Production and Sales in Beijing- Tianjin-Hebei Region (2021-2023)
Received date: 2025-02-13
Accepted date: 2025-04-03
Online published: 2025-06-23
蔬菜是农民增收致富的“钱袋子”,也是城市居民餐桌上的“菜篮子”。京津冀协同发展下,动态监测蔬菜产销信息对于稳固区域蔬菜供应、提升农业资源配置效率、增加农民收入以及推动区域一体化发展具有重要意义。本数据集汇聚了京津冀地区2021—2023年108种蔬菜的产销数据,包括种植面积、种植方式、销售价格、销售数量、销售去向、销售渠道等。数据涵盖京津冀地区83个区县,415个微观生产主体监测点,涉及蔬菜种植大户、家庭农场、合作社和企业。本数据集可为该区域蔬菜种植规划、产量与价格预测、市场供需等研究等提供数据支撑。
数据摘要:
| 项目 | 描述 |
|---|---|
| 数据库(集)名称 | 2021—2023年京津冀蔬菜产销监测数据集 |
| 所属学科 | 农业科学 |
| 研究主题 | 蔬菜生产销售 |
| 数据时间范围 | 2021-2023年 |
| 时间分辨率 | 日 |
| 数据地理空间覆盖 | 北京、天津、河北 |
| 空间分辨率 | 监测点 |
| 数据类型与技术格式 | .xlsx |
| 数据库(集)组成 | 表格文件1个,包含2021-2023年京津冀415个蔬菜产销监测点蔬菜生产、销售数据。 |
| 数据量 | 91.5 MB |
| 主要数据指标 | 种植品种、种植面积、定植日期、品质、种植方式、上市日期、销售日期、销量、销售价格、销售去向、销售渠道 |
| 数据可用性 | CSTR:sciencedb.agriculture.00193; https://cstr.cn/17058.11.sciencedb.agriculture.00193 DOI:10.57760/sciencedb.agriculture.00193; |
| 经费支持 | 2024年农产品市场信息采集分析项目;北京市乡村振兴农业科技项目(NY2502270125) |
陈丽 , 王剑 , 赵安平 , 王晓东 , 刘娟 , 王诗睿 , 宁晓涵 , 王增飞 , 杨唯佳 . 2021-2023年京津冀蔬菜产销监测数据集[J]. 农业大数据学报, 2025 , 7(2) : 276 -280 . DOI: 10.19788/j.issn.2096-6369.100054
Vegetables are one of the important supporting industries for agriculture and rural economy, and also an important component of the "vegetable basket" for urban and rural residents. Under the coordinated development of the Beijing-Tianjin-Hebei region, dynamic monitoring of vegetable production and sales information is of great significance for stabilizing regional vegetable supply, improving agricultural resource allocation efficiency, increasing farmers' income, and promoting regional integration development. This dataset gathers the production and sales data of 108 types of vegetables in the Beijing-Tianjin-Hebei region from 2021 to 2023, including data indicators such as planting area, planting method, sales price, sales quantity, sales destination, sales channels, etc. The data covers 83 districts and counties in the Beijing-Tianjin-Hebei region, with 415 micro production entities selected as monitoring points, including vegetable growers, family farms, cooperatives, and enterprises. This dataset can provide data support for vegetable planting planning, yield and price forecasting, market supply and demand research, etc. in the region.
Data summary:
| Items | Description |
|---|---|
| Dataset name | Monitoring Dataset of Vegetable Production and Sales in Beijing-Tianjin-Hebei Region (2021-2023) |
| Specific subject area | Agricultural Science |
| Research Topic | Vegetable production and sales |
| Time range | 2021-2023 |
| Temporal resolution | Day |
| Geographical scope | Beijing, Tianjin, Hebei |
| Spatial resolution | Monitoring point |
| Data types and technical formats | .xlsx |
| Dataset structure | This dataset comprises a single tabular file that contains vegetable production and sales data collected from 415 monitoring points in the Beijing-Tianjin-Hebei region, covering the period from 2021 to 2023. |
| Volume of dataset | 91.5 MB |
| Key index in dataset | Cultivated variety, planting area, transplanting date, quality, planting method, market availability date, sales date, sales volume, sales price, sales destination, sales channel |
| Data accessibility | CSTR:sciencedb.agriculture.00193; https://cstr.cn/17058.11.sciencedb.agriculture.00193 DOI:10.57760/sciencedb.agriculture.00193; |
| Financial support | 2024 Agricultural Product Market Information Collection and Analysis Project; Beijing Rural Revitalization Agricultural Science and Technology Project(NY2502270125) |
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