Agricultural greenhouses datasets of 2010, 2016, and 2022 in China

Abstract China has built the world’s largest area of agricultural greenhouse to meet the requirements of climate change and dietary structure changes. Accurate and timely access to information on agricultural greenhouse space is crucial for effectively managing and improving the quality of agricultu...

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Main Authors: Yan Sun, Yuyun Zhang, Jian Hao, Jiang Li, Hengjun Ge, Feifei Jiang, Junna Liu, Xueqing Dong, Jiayuan Guo, Zhanbin Luo, Fu Chen
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Data
Online Access:https://doi.org/10.1038/s41597-025-05412-y
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author Yan Sun
Yuyun Zhang
Jian Hao
Jiang Li
Hengjun Ge
Feifei Jiang
Junna Liu
Xueqing Dong
Jiayuan Guo
Zhanbin Luo
Fu Chen
author_facet Yan Sun
Yuyun Zhang
Jian Hao
Jiang Li
Hengjun Ge
Feifei Jiang
Junna Liu
Xueqing Dong
Jiayuan Guo
Zhanbin Luo
Fu Chen
author_sort Yan Sun
collection DOAJ
description Abstract China has built the world’s largest area of agricultural greenhouse to meet the requirements of climate change and dietary structure changes. Accurate and timely access to information on agricultural greenhouse space is crucial for effectively managing and improving the quality of agricultural production. However, high-quality, high-resolution data on Chinese agricultural greenhouses are still lacking due to difficulties in identification and an insufficient number of representative training data. This study aimed to propose a method for identifying agricultural greenhouse spectral and texture information based on key growth stages using the Google Earth Engine (GEE) cloud platform, Landsat 7 remote sensing images, and combined field surveys and visual interpretation to collect a large number of samples. This method used a random forest classifier to extract spatial information from remote sensing data to create classification datasets of Chinese agricultural greenhouses in 2010, 2016, and 2022. The overall accuracy reached 97%, with a kappa coefficient of 0.82. This dataset may help researchers and decision-makers further develop research and management in facility agriculture.
format Article
id doaj-art-6912c8e896f242e4b0cc74c0d7a5cbb8
institution Kabale University
issn 2052-4463
language English
publishDate 2025-07-01
publisher Nature Portfolio
record_format Article
series Scientific Data
spelling doaj-art-6912c8e896f242e4b0cc74c0d7a5cbb82025-08-20T04:01:25ZengNature PortfolioScientific Data2052-44632025-07-0112112010.1038/s41597-025-05412-yAgricultural greenhouses datasets of 2010, 2016, and 2022 in ChinaYan Sun0Yuyun Zhang1Jian Hao2Jiang Li3Hengjun Ge4Feifei Jiang5Junna Liu6Xueqing Dong7Jiayuan Guo8Zhanbin Luo9Fu Chen10Hohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationHohai University, School of Public AdministrationAbstract China has built the world’s largest area of agricultural greenhouse to meet the requirements of climate change and dietary structure changes. Accurate and timely access to information on agricultural greenhouse space is crucial for effectively managing and improving the quality of agricultural production. However, high-quality, high-resolution data on Chinese agricultural greenhouses are still lacking due to difficulties in identification and an insufficient number of representative training data. This study aimed to propose a method for identifying agricultural greenhouse spectral and texture information based on key growth stages using the Google Earth Engine (GEE) cloud platform, Landsat 7 remote sensing images, and combined field surveys and visual interpretation to collect a large number of samples. This method used a random forest classifier to extract spatial information from remote sensing data to create classification datasets of Chinese agricultural greenhouses in 2010, 2016, and 2022. The overall accuracy reached 97%, with a kappa coefficient of 0.82. This dataset may help researchers and decision-makers further develop research and management in facility agriculture.https://doi.org/10.1038/s41597-025-05412-y
spellingShingle Yan Sun
Yuyun Zhang
Jian Hao
Jiang Li
Hengjun Ge
Feifei Jiang
Junna Liu
Xueqing Dong
Jiayuan Guo
Zhanbin Luo
Fu Chen
Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
Scientific Data
title Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
title_full Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
title_fullStr Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
title_full_unstemmed Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
title_short Agricultural greenhouses datasets of 2010, 2016, and 2022 in China
title_sort agricultural greenhouses datasets of 2010 2016 and 2022 in china
url https://doi.org/10.1038/s41597-025-05412-y
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