Mapping floods from remote sensing data and quantifying the effects of surface obstruction by clouds and vegetation

被引:40
|
作者
Shastry, Apoorva [1 ,2 ]
Carter, Elizabeth [3 ]
Coltin, Brian [4 ,5 ]
Sleeter, Rachel [6 ]
McMichael, Scott [4 ,5 ]
Eggleston, Jack [7 ]
机构
[1] Univ Space Res Assoc, Mountain View, CA 94043 USA
[2] US Geol Survey, Moffett Fed Airfield, Moffett Field, CA 94035 USA
[3] Syracuse Univ, Civil & Environm Engn, Syracuse, NY 13244 USA
[4] KBR Inc, Moffett Field, CA 94035 USA
[5] NASA Ames Res Ctr, Moffett Field, CA 94035 USA
[6] US Geol Survey, Reston, VA 20192 USA
[7] US Geol Survey, Kearneysville, WV 25430 USA
关键词
Flood mapping; Remote sensing; Machine learning; Deep learning; Hydraulic models; SAR DATA; WATER; VALIDATION; FLOODPLAIN; RADAR; MODEL; STATE; GIS;
D O I
10.1016/j.rse.2023.113556
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Floods are one of the most devastating natural calamities affecting millions of people and causing damage all around the globe. Flood models and remote sensing imagery are often used to predict and understand flooding. An increasing number of earth observation satellites are producing data at a rate that far outpaces our ability to manually extract meaningful information from it, motivating a surge in research on automatic feature detection in satellite imagery using machine learning and deep learning algorithms to automate flood mapping so that information from large streams of data can be extracted in near-real time and used for disaster response at landscape scale. The development of such an algorithm is predicated on exposure to training datasets that are representative of the full range of diversity in the spatial and spectral signature of surface water as it is sampled by space-based instruments. To address these needs, we developed a semantically labeled dataset of high-resolution multispectral imagery (Maxar WorldView 2/3) strategically sampled to be representative of North American surface water variability along five spatiotemporal strata: latitude, topographic complexity, land use, and day of year. This dataset was utilized to train a convolutional neural network (CNN) to automatically detect inundation extents using the Deep Earth Learning, Tools, and Analysis (DELTA) framework, an open source TensorFlow/Keras interpreter for satellite imagery. Our research objective was to demonstrate the out-of-sample accuracy of our trained CNN at landscape scale. The model performed well, with 98% precision and 94% recall for the water class during validation. We then evaluated the accuracy of our satellite-derived flood maps from trained machine learning model against a hydraulic model. For this, we compared predicted inundation extents against the USGS Flood Inundation Mapping (FIM) Program's flood map library at 17 different locations, where the FIM library provides flood inundation extents based on hydraulic models built for river reaches and corre-sponding to stage measurements at a nearby USGS gaging site. Compared to the hydraulic model, we estimated the underprediction of flood inundation by optical remote sensing data in our areas of interest to be 62%. We used land use data from National Land Cover Database (NLCD) and cloud masks to estimate that 79% of underprediction was due to these obstructions, with 74% belonging to vegetation, 9% to clouds, and 4% to both. A significant amount of inundation is missed when only optical remote sensing data is considered, and we suggest the use of flood models along with remote sensing data for getting the most realistic flood inundation extents.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Spatial video remote sensing for urban vegetation mapping using vegetation indices
    Luka Rumora
    Ivan Majić
    Mario Miler
    Damir Medak
    Urban Ecosystems, 2021, 24 : 21 - 33
  • [22] Atmospheric effects in the remote sensing of surface albedo and radiation absorption by vegetation canopies
    Asrar, Ghassem
    Myneni, Ranga B.
    Remote Sensing Reviews, 1993, 7 (02):
  • [23] Spatial video remote sensing for urban vegetation mapping using vegetation indices
    Rumora, Luka
    Majic, Ivan
    Miler, Mario
    Medak, Damir
    URBAN ECOSYSTEMS, 2021, 24 (01) : 21 - 33
  • [24] Spectroscopic remote sensing for material identification, vegetation characterization, and mapping
    Kokaly, Raymond F.
    ALGORITHMS AND TECHNOLOGIES FOR MULTISPECTRAL, HYPERSPECTRAL, AND ULTRASPECTRAL IMAGERY XVIII, 2012, 8390
  • [25] THE USAGE OF THE HISTORICAL CARTOGRAPHIC DATASETS AND THE REMOTE SENSING DATA FOR THE BETTER UNDERSTANDING AND MAPPING OF THE 2006 DANUBE FLOODS IN ROMANIA
    Craciunescu, V.
    Flueraru, C.
    Stancalie, G.
    ACTA GEODAETICA ET GEOPHYSICA HUNGARICA, 2010, 45 (01): : 112 - 119
  • [26] USEFULNESS OF SATELLITE AND AERIAL REMOTE SENSING DATA FOR MONITORING AND MAPPING OF SURFACE WATERS
    Veljanovski, Tatjana
    Pehani, Peter
    Lamovec, Peter
    Ostir, Kristof
    GEODETSKI VESTNIK, 2012, 56 (04) : 786 - 801
  • [27] The usage of the historical cartographic datasets and the remote sensing data for the better understanding and mapping of the 2006 Danube floods in Romania
    V. Crăciunescu
    C. Flueraru
    G. Stăncălie
    Acta Geodaetica et Geophysica Hungarica, 2010, 45 : 112 - 119
  • [28] On remote sensing of water clouds from space
    Kokhanovsky, AA
    Zege, EP
    REMOTE SENSING: INVERSION PROBLEMS AND NATURAL HAZARDS, 1998, 21 (03): : 425 - 428
  • [29] Mapping impervious surface change from remote sensing for hydrological modeling
    Dams, J.
    Dujardin, J.
    Reggers, R.
    Bashir, I.
    Canters, F.
    Batelaan, O.
    JOURNAL OF HYDROLOGY, 2013, 485 : 84 - 95
  • [30] Quantifying the cool island effects of urban green spaces using remote sensing Data
    Du, Hongyu
    Cai, Wenbo
    Xu, Yanqing
    Wang, Zhibao
    Wang, Yuanyuan
    Cai, Yongli
    URBAN FORESTRY & URBAN GREENING, 2017, 27 : 24 - 31