Mapping fine-scale human disturbances in a working landscape with Landsat time series on Google Earth Engine

被引:57
作者
Hu, Tongxi [1 ]
Toman, Elizabeth Myers [1 ]
Chen, Gang [2 ]
Shao, Gang [3 ,4 ]
Zhou, Yuyu [5 ]
Li, Yang [1 ]
Zhao, Kaiguang [1 ]
Feng, Yinan [1 ]
机构
[1] Ohio State Univ, Sch Environm & Nat Resources, Environm Sci Grad Program, Columbus, OH 43210 USA
[2] Univ North Carolina Charlotte, Dept Geog & Earth Sci, Charlotte, NC 28223 USA
[3] Purdue Univ, Lib, W Lafayette, IN 47907 USA
[4] Purdue Univ, Sch Informat Studies, W Lafayette, IN 47907 USA
[5] Iowa State Univ, Dept Geol & Atmospher Sci, Ames, IA 50011 USA
关键词
Google Earth Engine; Working landscape; Ensemble learning; Change detection; Hydraulic fracturing; BEAST; Land cover change; Sub-pixel; FOREST; MARCELLUS; GAS; ALGORITHM; DYNAMICS; OIL;
D O I
10.1016/j.isprsjprs.2021.04.008
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
Large fractions of human-altered lands are working landscapes where people and nature interact to balance social, economic, and ecological needs. Achieving these sustainability goals requires tracking human footprints and landscape disturbance at fine scales over time-an effort facilitated by remote sensing but still under development. Here, we report a satellite time-series analysis approach to detecting fine-scale human disturbances in an Ohio watershed dominated by forests and pastures but with diverse small-scale industrial activities such as hydraulic fracturing (HF) and surface mining. We leveraged Google Earth Engine to stack decades of Landsat images and explored the effectiveness of a fuzzy change detection algorithm called the Bayesian Estimator of Abrupt change, Seasonality, and Trend (BEAST) to capture fine-scale disturbances. BEAST is an ensemble method, capable of estimating changepoints probabilistically and identifying sub-pixel disturbances. We found the algorithm can successfully capture the patterns and timings of small-scale disturbances, such as grazing, agriculture management, coal mining, HF, and right-of-ways for gas and power lines, many of which were not captured in the annual land cover maps from Cropland Data Layers-one of the most widely used classification-based land dynamics products in the US. For example, BEAST could detect the initial HF wellpad construction within 60 days of the registered drilling dates on 88.2% of the sites. The wellpad footprints were small, disturbing only 0.24% of the watershed in area, which was dwarfed by other activities (e.g., right-of-ways of utility transmission lines). Together, these known activities have disturbed 9.7% of the watershed from the year 2000 to 2017 with evergeen forests being the most affected land cover. This study provides empirical evidence on the effectiveness and reliability of BEAST for changepoint detection as well as its capability to detect disturbances from satellite images at sub-pixel levels and also documents the value of Google Earth Engine and satellite time-series imaging for monitoring human activities in complex working landscapes.
引用
收藏
页码:250 / 261
页数:12
相关论文
共 30 条
[1]   Caught in the mesh: roads and their network-scale impediment to animal movement [J].
Bischof, Richard ;
Steyaert, Sam M. J. G. ;
Kindberg, Jonas .
ECOGRAPHY, 2017, 40 (12) :1369-1380
[2]  
Bright R., 2019, REMOTE SENS ENVIRON, V232
[3]   Hydraulic "Fracking": Are Surface Water Impacts An Ecological Concern? [J].
Burton, G. Allen, Jr. ;
Basu, Niladri ;
Ellis, Brian R. ;
Kapo, Katherine E. ;
Entrekin, Sally ;
Nadelhoffer, Knute .
ENVIRONMENTAL TOXICOLOGY AND CHEMISTRY, 2014, 33 (08) :1679-1689
[4]   Monitoring the Vegetation Dynamics in the Dongting Lake Wetland from 2000 to 2019 Using the BEAST Algorithm Based on Dense Landsat Time Series [J].
Cai, Yaotong ;
Liu, Shutong ;
Lin, Hui .
APPLIED SCIENCES-BASEL, 2020, 10 (12)
[5]   Spatiotemporal patterns of tropical deforestation and forest degradation in response to the operation of the Tucurui hydroelectric dam in the Amazon basin [J].
Chen, Gang ;
Powers, Ryan P. ;
de Carvalho, Luis M. T. ;
Mora, Brice .
APPLIED GEOGRAPHY, 2015, 63 :1-8
[6]   How Similar Are Forest Disturbance Maps Derived from Different Landsat Time Series Algorithms? [J].
Cohen, Warren B. ;
Healey, Sean P. ;
Yang, Zhiqiang ;
Stehman, Stephen V. ;
Brewer, C. Kenneth ;
Brooks, Evan B. ;
Gorelick, Noel ;
Huang, Chengqaun ;
Hughes, M. Joseph ;
Kennedy, Robert E. ;
Loveland, Thomas R. ;
Moisen, Gretchen G. ;
Schroeder, Todd A. ;
Vogelmann, James E. ;
Woodcock, Curtis E. ;
Yang, Limin ;
Zhu, Zhe .
FORESTS, 2017, 8 (04)
[7]  
Eastburn DJ, 2017, PLOS ONE, V12, DOI [10.1371/journal.pone.019595, 10.1371/journal.pone.0166595]
[8]   Vegetation monitoring with satellite time series: An integrated approach for user-oriented knowledge extraction [J].
Ghazaryan, Gohar ;
Dubovyk, Olena ;
Graw, Valerie ;
Schellberg, Juergen .
REMOTE SENSING FOR AGRICULTURE, ECOSYSTEMS, AND HYDROLOGY XX, 2018, 10783
[9]   Google Earth Engine: Planetary-scale geospatial analysis for everyone [J].
Gorelick, Noel ;
Hancher, Matt ;
Dixon, Mike ;
Ilyushchenko, Simon ;
Thau, David ;
Moore, Rebecca .
REMOTE SENSING OF ENVIRONMENT, 2017, 202 :18-27
[10]   Forest landscape patterns shaped by interactions between wildfire and sudden oak death disease [J].
He, Yinan ;
Chen, Gang ;
Cobb, Richard C. ;
Zhao, Kaiguang ;
Meentemeyer, Ross K. .
FOREST ECOLOGY AND MANAGEMENT, 2021, 486