1 |
Zeng Chao, Zeng Zhen, Cao Zhenyu, et al. Forest fire dynamic monitoring based on time series and multi-source satellite images: A case study of the muli county forest areas in Sichuan province[J]. Remote Sensing Technology and Application. 2021, 36(3): 521-532.曾超, 曾珍, 曹振宇, 等. 多源时序国产卫星影像的森林火灾动态监测——以四川省木里县及其周边林区为例[J]. 遥感技术与应用, 2021, 36(3): 521-532.
|
2 |
Rao Yueming, Wang Chuan, Huang Huaguo. Forest fire Monitoring based on multisensor remote sensing techniques in Muli county,Sichuan province[J].Journal of Remote Sensing, 2020, 24(5): 559-570.
|
2 |
饶月明, 王川, 黄华国. 联合多源遥感数据监测四川木里县森林火灾[J]. 遥感学报, 2020, 24(5): 559-570.
|
3 |
Wang Weiguo, Pan Jinghu, Feng Yaya, et al. Model and zoning of fire risk in Gansu province based on GWLR and MODIS imagery[J]. Remote Sensing Technology and Application, 2017, 32(3): 514-523.
|
3 |
王卫国, 潘竟虎, 冯娅娅, 等. 基于MODIS数据和GWLR的甘肃省火灾风险模型与区划[J]. 遥感技术与应用, 2017, 32(3): 514-523.
|
4 |
Cheng Yuting, Liu Zhaohua, Lu Linlin, et al. Spatio-temporal dynamics of surface urban heat island in coastal Mega cities along the Belt and Road from remote sensing data[J]. Remote Sensing Technology and Application,2020,35(5):1197-1205.
|
4 |
程雨婷, 刘昭华, 鹿琳琳, 等. 一带一路沿海超大城市热岛时空特征遥感分析[J]. 遥感技术与应用, 2020, 35(5): 1197-1205.
|
5 |
Lin Zhongli, Xu Hanqiu. Comparative study on the urban heat island effect in "Stove Cities" during the last 20 years[J]. Remote Sensing Technology and Application,2019,34(3): 521-530.
|
5 |
林中立, 徐涵秋. 近20年来新旧“火炉城市”热岛状况对比研究[J]. 遥感技术与应用, 2019, 34(3): 521-530.
|
6 |
Yin Cuijing, Feng Kai, Wang Qi, et al. Analysis of influence factors of urban heat island effect based on remote sensing[J]. Remote Sensing Technology and Application, 2021, 36(3): 673-681.
|
6 |
尹翠景, 封凯, 王奇, 等. 遥感城市热岛提取的影响因素分析[J]. 遥感技术与应用, 2021, 36(3): 673-681.
|
7 |
Cheng Tong, Zhu Shanyou, Zhang Guixin, et al. Seasonal variation of PM2.5 in the Beijing-Tianjin-Hebei region in 2018 and its relationship with land surface temperature[J]. Remote Sensing Technology and Application,2020,35(6): 1457-1466.
|
7 |
成通, 祝善友, 张桂欣, 等. 2018年京津冀地区PM2.5季节变化及其与地表温度的关系分析[J]. 遥感技术与应用, 2020, 35(6):1457-1466.
|
8 |
Tian Huihui, Feng Li, Zhao Menmen, et al. Analysis of meticulous features of urban surface temperature based on UAV thermal thermography[J]. Remote Sensing Technology and Application, 2019, 34(3): 553-563.
|
8 |
田慧慧, 冯莉, 赵璊璊, 等. 无人机热红外城市地表温度精细特征研究[J]. 遥感技术与应用, 2019, 34(3): 553-563.
|
9 |
Yang Yuting, Tang Jiafa, Bian Jinhu,et al. Seasonal variations in the relationship between land surface temperature and impervious surface percentage in Kolkata[J]. Remote Sensing Technology and Application, 2021, 36(1): 79-89.
|
9 |
杨玉婷, 汤家法, 边金虎, 等. 加尔各答市地表温度与不透水面比例季相相关性研究[J]. 遥感技术与应用, 2021, 36(1): 79-89.
|
10 |
Li Zaijun, Hu Meijuan, Zhou Nianxing. The spatial pattern and influencing factors of industrial eco-efficiency in Chinese prefecture-level cities[J].Ecomonic Geography,2018,38(12): 126-134.
|
10 |
李在军,胡美娟,周年兴.中国地级市工业生态效率空间格局及影响因素[J]. 经济地理,2018,38(12):126-134.
|
11 |
Du Zhiwei, Lachang Lü, Huang Ru. Spatial pattern of industrial innovation efficiency for Chinese cities at prefecture level and above[J]. Geographical Science, 2016, 36(3): 321-327.
|
11 |
杜志威, 吕拉昌, 黄茹. 中国地级以上城市工业创新效率空间格局研究[J]. 地理科学, 2016, 36(3): 321-327.
|
12 |
Liu Youjin, Zeng Xiaoming. China's industrial spatial pattern evolution and the concentration difference-based on the EDSA and urban panel data of spatial econometrics[J]. Regional Economic Review, 2016(1):80-88.
|
12 |
刘友金, 曾小明. 中国工业空间格局的演变与集聚差异——基于EDSA和城市面板数据的空间计量研究[J]. 区域经济评论, 2016(1):80-88.
|
13 |
Jeff D. A method for satellite identification of surface temperature fields of subpixel resolution[J]. Elsevier,1981,11(none):221-229. DOI: .
doi: 10.1016/0034-4257(81)90021-3
|
14 |
Kaufman Y J, Justice C O, Flynn L P, et al. Potential global fire monitoring from EOS‐MODIS[J]. Journal of Geophysical Research: Atmospheres,1998,103(D24). DOI: @10.1002/(ISSN)2169-8996.EOSAM1.
doi: 10.1029/98JD01644
|
15 |
Ge Qiang, Shen Wenju, Li Ran, et al. Research on the temporal and spatial cistribution characteristics of thermal anomalies in China from 2001 to 2018[J]. Remote Sensing Technology and Application, 2022, 37(1): 73-84.
|
15 |
葛强, 沈文举, 李冉, 等. 2001—2018年我国热异常点时空分布特征研究[J]. 遥感技术与应用, 2022, 37(1): 73-84.
|
16 |
Ma Caihong, Wang Dacheng, Yang Jin, et al. Assessing the distribution of active fire data based on large industrial heat sources detection in Handan[J]. Remote Sensing Technology and Application, 2022, 37(1): 34-44.
|
16 |
马彩虹, 王大成, 杨进, 等. 基于工业热源区域识别的邯郸市热异常产品分析[J]. 遥感技术与应用, 2022, 37(1): 34-44.
|
17 |
Wang Kang. Thermal infrared remote sensing technology for geothermal resources detection based on multi-source & multi-temporal data in Dandong Liaoning[D]. Changchun: Jilin University, 2020.
|
17 |
王康. 基于多源多时相热红外遥感技术的丹东地热资源探测方法研究[D]. 长春: 吉林大学, 2020.
|
18 |
Zhou Y, Fei Z, Wang S,et al.A method for monitoring iron and steel factory economic activity based on satellites[J]. Sustainability,2018,10(6):1935-1956. DOI: .
doi: 10.3390/su10061935
|
19 |
Xia H, Chen Y, Quan J. A simple method based on the thermal anomaly index to detect industrial heat sources[J]. International Journal of Applied Earth Observations and Geoinformation,2018,73(8):627-637. DOI: .
doi: 10.1016/j.jag. 2018. 08.003
|
20 |
Zhang P, Yuan C, Sun Q, et al. Satellite-based detection and characterization of industrial heat sources in China[J]. Environmental Science & Technology,2019,53(18). DOI: .
doi: 10.1021/ acs.est.9b02643
|
21 |
Ma Y, Ma C, Liu P . et al. Spatial-temporal distribution analysis of industrial heat sources in the US with geocoded, tree-based,large-scale clustering[J]. Remote Sensing,2020,12(18): 3069. DOI: .
doi: 10.3390/rs12183069
|
22 |
Elvidge C D, Zhizhin M, Hsu F C, et al. Methods for global survey of natural gas flaring from visible infrared imaging radiometer suite data[J].Energies,2015,9(1):1-15. DOI: .
doi: 10.3390/ en9010014
|
23 |
He Junxia, Yan Wei, Duan Xuejun, et al. Location identification and spatial evolution of industrial heat sources along Yangtze river in Jiangsu province[J]. Resources and Environment in the Yangtze Basin, 2022, 31(5): 995-1005.
|
23 |
何俊霞, 颜蔚, 段学军, 等. 江苏沿江地区工业热源区位识别与空间演变[J]. 长江流域资源与环境, 2022, 31(5): 995-1005.
|
24 |
Li Bo, Fan Junfu, Han Liusheng, et al. An industrial heat source extraction method: BP neural network using temperature feature template[J]. Journal of Geo-information Science, 2022, 24(3): 533-545.
|
24 |
李博, 范俊甫, 韩留生, 等. 一种工业热源提取方法: 利用温度特征模板的BP神经网络[J]. 地球信息科学学报, 2022, 24(3): 533-545.
|
25 |
Ma C H, Yang J, Chen F, et al. Assessing heavy industrial heat source distribution in China using real-time VIIRS active fire/hotspot data[J].Sustainability,2018,10(12):4419. DOI: .
doi: 10.3390/su10124419
|
26 |
Ma C, Niu Z, Ma Y, et al. Assessing the distribution of heavy industrial heat sources in India between 2012 and 2018[J]. ISPRS International Journal of Geo-Information, 2019, 8(12): 568. DOI: .
doi: 10.3390/ijgi8120568
|
27 |
Sun Jiaqi, Liu Yongxue, Dong Yanzhu, et al. Classifycation of urban industrial heat sources based on Suomi-NPP VIIRS nighttime thermal anomaly products: A case study of the Beijing-Tianjin-Hebei region[J]. Geography and Geo-Information Science, 2018, 34(3):13-19.
|
27 |
孙佳琪, 刘永学, 董雁伫, 等. 基于Suomi-NPP VIIRS夜间热异常产品的城市工业热源分类——以京津冀地区为例[J]. 地理与地理信息科学, 2018, 34(3): 13-19.
|
28 |
Lai Jianbo. Study on remote sensing identification and spatial distribution pattern of heat source in heavy industry[D]. Lanzhou: Northwest Normal University, 2020.
|
28 |
赖建波. 重工业热源的遥感识别及空间分布格局研究[D]. 兰州: 西北师范大学, 2020.
|
29 |
Liu Y, Hu C, Zhan W, et al. Identifying industrial heat sources using time-series of the VIIRS Nightfire product with an object-oriented approach[J]. Remote Sensing of Environment, 2018, 204. DOI: .
doi: 10.1016/j.rse.2017.10.019
|
30 |
Elvidge C D, Zhizhin M, Hsu F C, et al. VIIRS Nightfire: satellite pyrometry at night[J]. Remote Sensing, 2013, 5(9): 4423-4449. DOI: .
doi: 10.3390/rs5094423
|
31 |
Elvidge C D, Zhizhin M, Ghosh T, et al. Annual time series of global VIIRS nighttime lights derived from monthly averages: 2012 to 2019[J]. Remote Sensing, 2021, 13(5): 922. DOI: .
doi: 10.3390/rs13050922
|
32 |
Cui Xuan. A study on the economic development of the resource-based cities in Shandong province[D]. Changchun: Jilin University, 2015.
|
32 |
崔璇. 山东省资源型城市经济发展研究[D]. 长春: 吉林大学, 2015.
|
33 |
Wang Beibei. Research on evaluation of green transformation and development of resource-based cities in Shandong province[D]. Beijing: China University of Geosciences, 2019.
|
33 |
王贝贝. 山东省资源型城市绿色转型发展评价研究[D]. 北京: 中国地质大学, 2019.
|
34 |
Wang Dong. An empirical analysis of industrial structure and economic growth in Shandong province[D]. Shenyang: Liaoning University, 2018.
|
34 |
王栋. 山东省产业结构与经济增长的实证分析[D]. 沈阳: 辽宁大学, 2018.
|