1984-2020年中国夜间灯光数据集(PANDA-China)
收藏地球大数据科学工程2024-06-15 收录
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资源简介:
夜间灯光遥感(以下简称夜光)已经成为反映包括社会经济和能源消耗在内的人类活动的一个越来越重要的指标。现有夜光数据集(如美国国防气象卫星计划(DMSP)和国家极地轨道可见光红外成像辐射计(NPP))在时间范围和数据质量上都很有限。因此我们提出了一种夜间灯光卷积长短期记忆(NTLSTM)网络,并将该网络应用于生长出世界上第一套1984 - 2020年中国的人工夜间灯光数据集(PANDA)。模型与原始图像的模型评估显示,平均均方根误差(RMSE)达到0.73,决定系数(R2)达到0.95,像素级的线性斜率为0.99,表明生成产品的数据质量较高。模型结果可以很好地捕捉到新建成区的时间趋势。社会经济指标(建成区面积、国内生产总值、人口)与PANDA的相关性比现有的所有产品都更好,这表明它在寻找不同阶段夜间灯光变化的不同控制方面有更好的潜力。此外,PANDA描绘了不同的城市扩展类型,在代表道路网络方面胜过其他产品,并在早期提供了潜在的夜光景观。
Nighttime light remote sensing (hereafter referred to as nighttime lights, NTL) has become an increasingly important indicator reflecting human activities including socioeconomic development and energy consumption. Existing nighttime light datasets such as those from the Defense Meteorological Satellite Program (DMSP) and the National Polar-orbiting Partnership's Visible Infrared Imaging Radiometer Suite (NPP) have limitations in both temporal coverage and data quality. To address this gap, we propose a Nighttime Light Convolutional Long Short-Term Memory (NTLSTM) network, and apply it to generate the world's first artificial nighttime light dataset of China spanning 1984–2020, named PANDA. Model evaluations between the generated dataset and original imagery demonstrate that the mean root mean square error (RMSE) reaches 0.73, the coefficient of determination (R²) reaches 0.95, and the pixel-level linear slope is 0.99, confirming the high data quality of the produced dataset. The model results can effectively capture the temporal trends of newly developed built-up areas. Socioeconomic indicators including built-up area, gross domestic product (GDP), and population show stronger correlations with PANDA than all existing nighttime light products, demonstrating its better potential in identifying distinct driving factors of nighttime light changes across different development stages. Additionally, PANDA characterizes diverse urban expansion patterns, outperforms other products in representing road networks, and provides potential nighttime light landscapes for early periods.
提供机构:
可持续发展大数据国际研究中心
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集是中国首套1984-2020年长时间序列人工夜间灯光数据集,采用夜间灯光卷积长短期记忆网络生成,具有高数据质量(平均RMSE为0.73,R2为0.95)。它优于现有产品,能有效捕捉城市扩展趋势,并与建成区面积、GDP、人口等社会经济指标高度相关,适用于人类活动监测和可持续发展研究。
以上内容由遇见数据集搜集并总结生成



