基于像元尺度光谱匹配方法的江苏皂河灌区实际灌溉面积遥感监测

宋文龙, 林胜杰, 余琅, 仝道斌, 卢奕竹, 刘军, 刘宏洁, 陈敏

raybet体育在线 院报 ›› 2025, Vol. 42 ›› Issue (4) : 159-165.

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raybet体育在线 院报 ›› 2025, Vol. 42 ›› Issue (4) : 159-165. DOI: 10.11988/ckyyb.20231288
水利信息化

基于像元尺度光谱匹配方法的江苏皂河灌区实际灌溉面积遥感监测

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Remotely-sensed Monitoring of Irrigated Area in Zaohe Irrigation District of Jiangsu Province Based on Pixel-scale Spectral Matching Method

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摘要

灌溉面积是有效实施农业节水所需的基础性数据,传统调查统计方式已经不能满足当前灌溉面积监测需要。融合GF-1与Sentinel-2卫星影像,构建作物生育期的样本光谱,基于像元尺度光谱匹配方法协同提取江苏省宿迁市皂河灌区2017—2022年作物种植结构及实际灌溉面积。结果显示:皂河灌区的主要种植模式为水稻小麦轮作;灌区2017—2022年实际灌溉面积分别为85.11、91.91、103.65、95.85、97.72、88.24 km2。基于样本点利用混淆矩阵对提取的实际灌溉面积结果进行精度验证,总体精度为89.71%,Kappa系数为0.80,监测结果精度较高且提取效果优于目前公开产品中精度较高的IrriMap_Syn产品及IWMI产品。该方法适用于南方灌区实际灌溉面积提取,可为灌区管理部门日常监管、优化水资源配置等提供技术与数据支持。

Abstract

Irrigated area is the basic data required for effective agricultural water conservation, yet traditional survey and statistical methods no longer meet current monitoring needs. In this research, GF-1 and Sentinel-2 satellite images were fused to construct the sample spectrum of crop growth period. Based on the pixel-scale spectral matching method, the crop planting structure and actual irrigated area of Zaohe irrigation district in Suqian City, Jiangsu Province from 2017 to 2022 were synergistically extracted. Results show that the main planting pattern in Zaohe irrigation district is rice-wheat rotation. From 2017 to 2022, the actual irrigated area was 85.11 km2, 91.91 km2, 103.65 km2, 95.85 km2, 97.72 km2 and 88.24 km2. respectively. Validation using sample points and a confusion matrix yielded an overall accuracy of 89.71% and a Kappa coefficient of 0.80, indicating higher accuracy and better extraction effects compared to existing products like IrriMap_Syn and IWMI products. This method is suitable for extracting the irrigated area in south China, and can provide technical and data support for the daily supervision of management departments and the optimization of water resource allocation.

关键词

实际灌溉面积 / 种植结构 / 光谱匹配 / 遥感 / 皂河灌区

Key words

irrigated area / planting structure / spectral matching / remote-sensing / Zaohe irrigation district

引用本文

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宋文龙, 林胜杰, 余琅, . 基于像元尺度光谱匹配方法的江苏皂河灌区实际灌溉面积遥感监测[J]. raybet体育在线 院报. 2025, 42(4): 159-165 https://doi.org/10.11988/ckyyb.20231288
SONG Wen-long, LIN Sheng-jie, YU Lang, et al. Remotely-sensed Monitoring of Irrigated Area in Zaohe Irrigation District of Jiangsu Province Based on Pixel-scale Spectral Matching Method[J]. Journal of Changjiang River Scientific Research Institute. 2025, 42(4): 159-165 https://doi.org/10.11988/ckyyb.20231288
中图分类号: TP79 (遥感技术的应用)   

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摘要
在灌区用水管理中,灌溉面积及其空间分布信息非常重要。传统的灌溉面积提取手段耗费大量的人力物力和时间,已经不能满足灌区的现代化管理。自遥感技术应用于灌溉面积提取以来,经过几十年的发展,已经有很多的研究成果。但现今在应用于灌溉面积提取的遥感技术中,前沿的方法多数采用多个传感器数据或长时间序列的数据,且往往针对某一特定的区域,很难具体的应用在实际的灌区工作中。为了在灌区管理的实际应用中准确高效地提取灌溉面积和分布,开展了一种基于光学卫星多时相差值数据的神经网络算法的灌溉面积提取技术研究。以山东省淄博市桓台县的试验田为研究区域,首先利用随机森林对Sentinel-2卫星数据的所有波段以及一些与土壤水含量以及植被相关的指数进行重要性排序,不同地区的地情下重要性排序结果也不同,所以利用重要性排序可以快速的获取适合此地区的波段以及指数的组合。选取重要性较高的波段或指数作为神经网络模型输入层进行灌溉面积提取。然后根据实际样本田的数据对提取结果进行检验,所得到的总体灌溉面积提取精度达到了76.7%。Kappa系数为0.74。此外,对研究区域进行植被覆盖度分级,并分析了在不同植被覆盖度下的灌溉面积提取结果精度变化。其中,在中等和较高的植被覆盖度地区具有更高的精度。研究区大部分地区为农业地区,作物以冬小麦和夏玉米为主,使用数据为3月中下旬卫星影像,研究区此时期植被覆盖度较高,符合在此地情下进行灌溉面积提取在中等和较高植被覆盖度地区具有更高精度的结果。基于神经网络的多时相光学卫星数据差值提取灌溉面积研究可以在不同地区的地情下通过重要性排序获取适合该研究区波段的组合,得到更高的灌溉面积提取结果精度。
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Irrigation area and its spatial distribution information are very important in water management in irrigated areas. The traditional method of extracting irrigated area consumes a lot of manpower and material resources and time, which can not satisfy the modern management of irrigated area. Since the application of remote sensing technology in the study of irrigation area extraction, after decades of development, there have been a lot of research results. However, in the current remote sensing technology applied in irrigation area extraction, most of the cutting-edge methods adopt multiple sensor data or long time series data, which are often targeted at a specific area, and it is difficult to be specifically applied in the actual irrigation area. In order to extract irrigation area and distribution accurately and efficiently in the practical application of irrigation area management, a neural network algorithm based on multi-temporal difference data of optical satellites was developed in this paper. The experimental field in Huantai County, Zibo City, Shandong Province was taken as the study area. Firstly, random forest was used to sort the importance of all bands of Sentinel-2 satellite data and some indices related to soil water content and vegetation. The importance ranking results were different in different geographical conditions, so the combination of bands and indices suitable for this region could be quickly obtained by using importance ranking. In this study, the band or index with high importance was selected as the input layer of the neural network model to extract the irrigation area, and then the extraction results were tested according to the actual sample data, and the overall extraction accuracy of the irrigation area reached 76.7%. The Kappa coefficient was 0.74. In addition, the vegetation coverage of the study area was graded, and the precision changes of irrigation area extraction results under different vegetation coverage were analyzed. Among them, the accuracy is higher in medium and high vegetation coverage areas. Most of the study area is an agricultural area, with winter wheat and summer corn as the main crops. The data used are satellite images in mid-to-late March. The vegetation coverage of the study area is relatively high in this period, which accords with the result that the extraction of irrigated area has higher accuracy in the areas with medium and high vegetation coverage under the situation in this area. The research results of multi-temporal optical satellite data difference extraction of irrigation area proposed in this paper based on neural network can obtain the combination of bands suitable for the study area through importance ranking under different geographical conditions, and obtain higher accuracy of irrigation area extraction results.

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基金

江苏省水利科技项目(2021081)

责任编辑: 陈敏
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