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Remote Sensing Mapping of Cage and Floating-raft Aquaculture in China's Offshore Waters Using Machine Learning Methods and Google Earth Engine

机译:利用机器学习方法和谷歌地球引擎对中国近海网箱和浮筏养殖进行遥感制图

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Cage and floating-raft aquaculture (CFRA) in China’s offshore waters has been rapidly expanding. Mapping the spatial distribution of such large-scale CFRA is the basis for studying and controlling impacts of aquaculture on the environment, and further optimizing CFRA spatial arrangement. Supporting by Google Earth Engine (GEE) platform, this paper took China’s coastal areas as study region, and applied machine learning methods to extract CFRA from Sentine1-2 remote sensing big data. Firstly, according to the characteristics of CFRA, images with cloud-free in April, 2020 were selected and the sea area within 30 kilometers away from the coastline was determined as study area. Secondly, the random forest (RF) and support vector machine (SVM) classification algorithms were utilized to extract CFRA with sample set. Finally, on the basis of accuracy test, spatial distribution characteristics of CFRA were analyzed in ArcMap. The results show: (1) Compared with SVM, RF can obtain higher classification accuracies with 0.945 of overall accuracy and 0.904 of Kappa coefficient; (2) Large-scale CFRA are distributed in the bays of Liaoning, Shandong and Fujian Province, as well as around the islands of Zhejiang, Fujian Province; (3) Large-scale CFRA are often distributed around small islands in the south while around ports in the north; (4) The CFRA areas in Fujian and Shandong rank first and second, occupying 29% and 23%, respectively, of the total CFRA area.
机译:中国近海水域的网箱和浮筏养殖(CFRA)正在迅速扩张。绘制此类大规模CFRA的空间分布图是研究和控制水产养殖对环境的影响以及进一步优化CFRA空间布局的基础。本文在Google Earth Engine(GEE)平台的支持下,以中国沿海地区为研究区域,应用机器学习方法从Sentine1-2遥感大数据中提取CFRA。首先,根据CFRA的特点,选取2020年4月的无云图像,确定距海岸线30公里以内的海域为研究区。其次,利用随机森林(RF)和支持向量机(SVM)分类算法提取样本集的CFRA。最后,在精度检验的基础上,在ArcMap中分析了CFRA的空间分布特征。结果表明:(1)与支持向量机相比,RF能获得更高的分类精度,总体精度为0.945,Kappa系数为0.904;(2) 大规模CFRA分布在辽宁、山东和福建省的海湾,以及浙江、福建省的岛屿周围;(3) 大规模的CFRA通常分布在南部的小岛周围,而北部的港口周围;(4) 福建和山东的CFRA面积分别占CFRA总面积的29%和23%,排名第一和第二。

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