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用于灌溉耕地制图的特征变量优选
引用本文:刘莹,朱秀芳,徐昆.用于灌溉耕地制图的特征变量优选[J].农业工程学报,2022,38(3):119-127.
作者姓名:刘莹  朱秀芳  徐昆
作者单位:1. 北京师范大学遥感科学国家重点实验室,北京 100875; 3. 北京师范大学地理科学学部遥感科学与工程研究院,北京 100875; 4. 山东黄河河务局山东黄河信息中心,济南 250013;;1. 北京师范大学遥感科学国家重点实验室,北京 100875; 2. 北京师范大学环境演变与自然灾害教育部重点实验室,北京 1008751; 3. 北京师范大学地理科学学部遥感科学与工程研究院,北京 100875;
基金项目:国家自然科学基金项目(42192583);国家重点研发计划资助(2021YFB3901201)
摘    要:灌溉耕地制图可以为粮食安全、水资源管理和气候变化等相关研究提供数据基础.构建和选择表征灌溉耕地信息的特征变量是灌溉耕地制图最重要的环节之一.该研究选择有良好灌溉信息数据基础的美国内布拉斯加州为研究区,基于已有灌溉耕地空间分布图和灌溉信息数据,提取灌溉耕地和雨养耕地的样本,计算了样本的4类82个特征变量,利用随机森林对比...

关 键 词:随机森林  灌溉  土壤  特征变量  特征选择  灌溉耕地制图
收稿时间:2021/8/15 0:00:00
修稿时间:2022/10/10 0:00:00

Optimizing the feature variables for irrigated farmland mapping
Liu Ying,Zhu Xiufang,Xu Kun.Optimizing the feature variables for irrigated farmland mapping[J].Transactions of the Chinese Society of Agricultural Engineering,2022,38(3):119-127.
Authors:Liu Ying  Zhu Xiufang  Xu Kun
Institution:1. State Key Laboratory of Remote Sensing Science, Beijing Normal University, Beijing 100875, China; 3. Institute of Remote Sensing Science and Engineering, Faculty of Geographical Science, Beijing Normal University, Beijing 100875, China; 4. Yellow River Information Center, Shandong Yellow River Bureau, Jinan 250013, China;;1. State Key Laboratory of Remote Sensing Science, Beijing Normal University, Beijing 100875, China; 2. Key Laboratory of Environmental Change and Natural Disaster, Ministry of Education, Beijing Normal University, Beijing 100875, China; 3. Institute of Remote Sensing Science and Engineering, Faculty of Geographical Science, Beijing Normal University, Beijing 100875, China;
Abstract:Irrigation has been one of the most important land management in modern agriculture.Accurate mapping of irrigated arable land can provide more available data for food security, water resources, and climate change. Among them, the selection of feature variables has been one of the most important steps to represent the information of irrigated farmland during mapping. Therefore, this study aims to optimize the feature variables for mapping an irrigated farmland using the spatial distribution map and irrigation information data. Nebraska State in America with an excellent irrigation database was taken as the research area. The samples were first extracted from the irrigated and rain-fed farmlands in the database. Four types of 82 feature variables in the samples were calculated, including the monthly mean of precipitation, normalized difference vegetation index (NDVI), enhanced vegetation index (EVI), greenness index (GI), normalized difference water index (NDWI), daily land surface temperature (LST day), night land surface temperature (LS Tnight), the land surface temperature difference between day and night (LST difference), crop water deficit index (CWDI), and crop water stress index (CWSI), while, the total precipitation, the mean NDVI, NDWI, LS Tday, LST night, LST difference, CWDI, CWSI, as well as the Irrigation Probability Index (IPI), and Water-adjusted green index (WGI) in the growing season. Random forest was utilized to determine the importance of 82 feature variables to the identification of irrigated farmland. The results show that the contribution to the identification of irrigated farmland was ranked in the order of the comprehensive > vegetation > soil > meteorological feature variables. As such, the 16 best feature variables were selected, including eight comprehensive, seven vegetations and one soil feature variable, but there was no meteorological feature variable. The CWSI, IPI, vegetation index, and LST difference were the sensitive characteristic variables to distinguish the irrigated farmland from the rain-fed farmland. There were also some differences in the best phase to identify the irrigated farmland with different feature variables. There was high sensitivity to irrigation for the CWSI in almost every month and the whole growing season. In the vegetation index, the more sensitive phase to distinguish the irrigated farmland from rain-fed farmland was concentrated in the later stage of the growing season. In the LST difference, September was the most sensitive month to distinguish the irrigated farmland from rain-fed farmland. The top four feature variables of importance ranking included the CWSI in April and May, the EVI in July, and IPI in the growing season. There was the highest overall classification accuracy (88.44%) for the first 16 important feature variables. Consequently, it infers that the remote sensing classification features have a great impact on the recognition accuracy of targets to be classified. The finding can also provide a strong reference for the selection of feature variables in the follow-up research on irrigation farmland mapping.
Keywords:random forest  feature variables  soils  feature selection  irrigation farmland mapping
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