{"title":"1990 - 2019年中国3000万年土地覆被及其动态","authors":"Jie Yang, Xin Huang","doi":"10.5194/ESSD-2021-7","DOIUrl":null,"url":null,"abstract":"Abstract. Land cover (LC) determines the energy exchange, water and carbon cycle between Earth's spheres. Accurate LC information is a fundamental parameter for the environment and climate studies. Considering that the LC in China has been altered dramatically with the economic development in the past few decades, sequential and fine-scale LC monitoring is in urgent need. However, currently, fine-resolution annual LC dataset produced by the observational images is generally unavailable for China due to the lack of sufficient training samples and computational capabilities. To deal with this issue, we produced the first Landsat-derived annual China Land Cover Dataset (CLCD) on the Google Earth Engine (GEE) platform, which contains 30 m annual LC and its dynamics of China from 1990 to 2019. We first collected the training samples by combining stable samples extracted from China’s Land-Use/Cover Datasets (CLUD), and visually-interpreted samples from satellite time-series data, Google Earth and Google Map. Using 335,709 Landsat images on the GEE, several temporal metrics were constructed and fed to the random forest classifier to obtain classification results. We then proposed a post-processing method incorporating spatial-temporal filtering and logical reasoning to further improve the spatial-temporal consistency of CLCD. Finally, the overall accuracy of CLCD reached 79.31 % based on 5,463 visually-interpreted samples. A further assessment based on 5,131 third-party test samples showed that the overall accuracy of CLCD outperforms that of MCD12Q1, ESACCI_LC, FROM_GLC, and GlobaLand30. Besides, we intercompared the CLCD with several Landsat-derived thematic products, which exhibited good consistencies with the Global Forest Change, the Global Surface Water, and three impervious surface products. Based on the CLCD, the trends and patterns of China’s LC changes during 1985 and 2019 were revealed, such as expansion of impervious surface (+148.71 %) and water (+18.39 %), decrease of cropland (−4.85 %) and grassland (−3.29 %), increase of forest (+4.34 %). In general, CLCD reflected the rapid urbanization and a series of ecological projects (e.g., Gain for Green) in China and revealed the anthropogenic implications on LC under the condition of climate change, signifying its potential application in the global change research. The CLCD dataset introduced in this article is freely available at http://doi.org/10.5281/zenodo.4417810 (Yang and Huang, 2021).\n","PeriodicalId":326085,"journal":{"name":"Earth System Science Data Discussions","volume":"8 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-01-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"25","resultStr":"{\"title\":\"30 m annual land cover and its dynamics in China from 1990 to 2019\",\"authors\":\"Jie Yang, Xin Huang\",\"doi\":\"10.5194/ESSD-2021-7\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Abstract. Land cover (LC) determines the energy exchange, water and carbon cycle between Earth's spheres. Accurate LC information is a fundamental parameter for the environment and climate studies. Considering that the LC in China has been altered dramatically with the economic development in the past few decades, sequential and fine-scale LC monitoring is in urgent need. However, currently, fine-resolution annual LC dataset produced by the observational images is generally unavailable for China due to the lack of sufficient training samples and computational capabilities. To deal with this issue, we produced the first Landsat-derived annual China Land Cover Dataset (CLCD) on the Google Earth Engine (GEE) platform, which contains 30 m annual LC and its dynamics of China from 1990 to 2019. We first collected the training samples by combining stable samples extracted from China’s Land-Use/Cover Datasets (CLUD), and visually-interpreted samples from satellite time-series data, Google Earth and Google Map. Using 335,709 Landsat images on the GEE, several temporal metrics were constructed and fed to the random forest classifier to obtain classification results. We then proposed a post-processing method incorporating spatial-temporal filtering and logical reasoning to further improve the spatial-temporal consistency of CLCD. Finally, the overall accuracy of CLCD reached 79.31 % based on 5,463 visually-interpreted samples. A further assessment based on 5,131 third-party test samples showed that the overall accuracy of CLCD outperforms that of MCD12Q1, ESACCI_LC, FROM_GLC, and GlobaLand30. Besides, we intercompared the CLCD with several Landsat-derived thematic products, which exhibited good consistencies with the Global Forest Change, the Global Surface Water, and three impervious surface products. Based on the CLCD, the trends and patterns of China’s LC changes during 1985 and 2019 were revealed, such as expansion of impervious surface (+148.71 %) and water (+18.39 %), decrease of cropland (−4.85 %) and grassland (−3.29 %), increase of forest (+4.34 %). 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引用次数: 25
摘要
摘要土地覆盖(LC)决定了地球各圈之间的能量交换、水和碳循环。准确的LC信息是环境和气候研究的基本参数。由于近几十年来中国的土地利用状况随着经济的发展发生了巨大的变化,因此迫切需要对土地利用状况进行连续的、精细的监测。然而,由于缺乏足够的训练样本和计算能力,目前中国通常无法获得由观测图像生成的高分辨率年度LC数据集。为了解决这一问题,我们在谷歌地球引擎(GEE)平台上制作了第一个基于landsat的年度中国土地覆盖数据集(CLCD),该数据集包含了1990 - 2019年中国的30 m年度土地覆盖及其动态。首先,我们将中国土地利用/覆盖数据集(CLUD)提取的稳定样本与卫星时间序列数据、谷歌地球和谷歌地图的视觉解释样本相结合,收集训练样本。利用335709张陆地卫星遥感影像,构建了多个时间尺度,并将其输入随机森林分类器,得到分类结果。在此基础上,提出了一种结合时空滤波和逻辑推理的后处理方法,进一步提高了CLCD的时空一致性。最后,基于5463个目视解译样本,CLCD的总体准确率达到79.31%。基于5131个第三方测试样本的进一步评估表明,CLCD的整体准确性优于MCD12Q1、ESACCI_LC、FROM_GLC和GlobaLand30。此外,我们还将CLCD与多个landsat衍生专题产品进行了对比,结果表明CLCD与全球森林变化、全球地表水和三个不透水表面产品具有良好的一致性。基于CLCD,揭示了1985 - 2019年中国LC的变化趋势和格局,主要表现为不透水面(+ 148.71%)和水(+ 18.39%)的扩大,耕地(- 4.85%)和草地(- 3.29%)的减少,森林(+ 4.34%)的增加。总体而言,CLCD反映了中国快速城市化和一系列生态工程(如Gain for Green),揭示了气候变化条件下LC的人为影响,表明其在全球变化研究中的潜在应用价值。本文介绍的CLCD数据集可在http://doi.org/10.5281/zenodo.4417810免费获得(Yang and Huang, 2021)。
30 m annual land cover and its dynamics in China from 1990 to 2019
Abstract. Land cover (LC) determines the energy exchange, water and carbon cycle between Earth's spheres. Accurate LC information is a fundamental parameter for the environment and climate studies. Considering that the LC in China has been altered dramatically with the economic development in the past few decades, sequential and fine-scale LC monitoring is in urgent need. However, currently, fine-resolution annual LC dataset produced by the observational images is generally unavailable for China due to the lack of sufficient training samples and computational capabilities. To deal with this issue, we produced the first Landsat-derived annual China Land Cover Dataset (CLCD) on the Google Earth Engine (GEE) platform, which contains 30 m annual LC and its dynamics of China from 1990 to 2019. We first collected the training samples by combining stable samples extracted from China’s Land-Use/Cover Datasets (CLUD), and visually-interpreted samples from satellite time-series data, Google Earth and Google Map. Using 335,709 Landsat images on the GEE, several temporal metrics were constructed and fed to the random forest classifier to obtain classification results. We then proposed a post-processing method incorporating spatial-temporal filtering and logical reasoning to further improve the spatial-temporal consistency of CLCD. Finally, the overall accuracy of CLCD reached 79.31 % based on 5,463 visually-interpreted samples. A further assessment based on 5,131 third-party test samples showed that the overall accuracy of CLCD outperforms that of MCD12Q1, ESACCI_LC, FROM_GLC, and GlobaLand30. Besides, we intercompared the CLCD with several Landsat-derived thematic products, which exhibited good consistencies with the Global Forest Change, the Global Surface Water, and three impervious surface products. Based on the CLCD, the trends and patterns of China’s LC changes during 1985 and 2019 were revealed, such as expansion of impervious surface (+148.71 %) and water (+18.39 %), decrease of cropland (−4.85 %) and grassland (−3.29 %), increase of forest (+4.34 %). In general, CLCD reflected the rapid urbanization and a series of ecological projects (e.g., Gain for Green) in China and revealed the anthropogenic implications on LC under the condition of climate change, signifying its potential application in the global change research. The CLCD dataset introduced in this article is freely available at http://doi.org/10.5281/zenodo.4417810 (Yang and Huang, 2021).