Cargando…

An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes

Inland lakes are essential components of hydrological and biogeochemical water cycles, as well as indispensable water resources for human beings. To derive the long-term and continuous trajectory of lake inundation area changes is increasingly significant. Since it helps to understand how they funct...

Descripción completa

Detalles Bibliográficos
Autores principales: Luo, Shuangxiao, Song, Chunqiao, Liu, Kai, Ke, Linghong, Ma, Ronghua
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6806627/
https://www.ncbi.nlm.nih.gov/pubmed/31574940
http://dx.doi.org/10.3390/s19194247
_version_ 1783461676855590912
author Luo, Shuangxiao
Song, Chunqiao
Liu, Kai
Ke, Linghong
Ma, Ronghua
author_facet Luo, Shuangxiao
Song, Chunqiao
Liu, Kai
Ke, Linghong
Ma, Ronghua
author_sort Luo, Shuangxiao
collection PubMed
description Inland lakes are essential components of hydrological and biogeochemical water cycles, as well as indispensable water resources for human beings. To derive the long-term and continuous trajectory of lake inundation area changes is increasingly significant. Since it helps to understand how they function in the global water cycle and how they are impacted by climate change and human activities. Employing optical satellite images, as an important means of lake mapping, has been widely used in the monitoring of lakes. It is well known that one of the obvious difficulties of traditional remote sensing-based mapping methods lies in the tremendous labor and computing costs for delineating the large lakes (e.g., Caspian Sea). In this study, a novel approach of reconstructing long-term and high-frequency time series of inundation areas of large lakes is proposed. The general idea of this method is to obtain the lake inundation area at any specific observation date by referring to the mapping relationship of the water occurrence frequency (WOF) of the selected shoreline segment at relatively slight terrains and lake areas based on the pre-established lookup table. The lookup table to map the links of the WOF and lake areas is derived from the Joint Research Centre (JRC)Global Surface Water (GSW) dataset accessed in Google Earth Engine (GEE). We select five large lakes worldwide to reconstruct their long time series (1984–2018) of inundation areas using this method. The time series of lake volume variation are analyzed, and the qualitative investigations of these lake changes are eventually discussed by referring to previous studies. The results based on the case of North Aral Sea show that the mean relative error between estimated area and actually mapped value is about 0.85%. The mean R(2) of all the five lakes is 0.746, which indicates that the proposed method can produce the robust estimates of area time series for these large lakes. This research sheds new light on mapping large lakes at considerably deducted time and labor costs, and be effectively applicable in other large lakes in regional and global scales.
format Online
Article
Text
id pubmed-6806627
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-68066272019-11-07 An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes Luo, Shuangxiao Song, Chunqiao Liu, Kai Ke, Linghong Ma, Ronghua Sensors (Basel) Article Inland lakes are essential components of hydrological and biogeochemical water cycles, as well as indispensable water resources for human beings. To derive the long-term and continuous trajectory of lake inundation area changes is increasingly significant. Since it helps to understand how they function in the global water cycle and how they are impacted by climate change and human activities. Employing optical satellite images, as an important means of lake mapping, has been widely used in the monitoring of lakes. It is well known that one of the obvious difficulties of traditional remote sensing-based mapping methods lies in the tremendous labor and computing costs for delineating the large lakes (e.g., Caspian Sea). In this study, a novel approach of reconstructing long-term and high-frequency time series of inundation areas of large lakes is proposed. The general idea of this method is to obtain the lake inundation area at any specific observation date by referring to the mapping relationship of the water occurrence frequency (WOF) of the selected shoreline segment at relatively slight terrains and lake areas based on the pre-established lookup table. The lookup table to map the links of the WOF and lake areas is derived from the Joint Research Centre (JRC)Global Surface Water (GSW) dataset accessed in Google Earth Engine (GEE). We select five large lakes worldwide to reconstruct their long time series (1984–2018) of inundation areas using this method. The time series of lake volume variation are analyzed, and the qualitative investigations of these lake changes are eventually discussed by referring to previous studies. The results based on the case of North Aral Sea show that the mean relative error between estimated area and actually mapped value is about 0.85%. The mean R(2) of all the five lakes is 0.746, which indicates that the proposed method can produce the robust estimates of area time series for these large lakes. This research sheds new light on mapping large lakes at considerably deducted time and labor costs, and be effectively applicable in other large lakes in regional and global scales. MDPI 2019-09-30 /pmc/articles/PMC6806627/ /pubmed/31574940 http://dx.doi.org/10.3390/s19194247 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Luo, Shuangxiao
Song, Chunqiao
Liu, Kai
Ke, Linghong
Ma, Ronghua
An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title_full An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title_fullStr An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title_full_unstemmed An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title_short An Effective Low-Cost Remote Sensing Approach to Reconstruct the Long-Term and Dense Time Series of Area and Storage Variations for Large Lakes
title_sort effective low-cost remote sensing approach to reconstruct the long-term and dense time series of area and storage variations for large lakes
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6806627/
https://www.ncbi.nlm.nih.gov/pubmed/31574940
http://dx.doi.org/10.3390/s19194247
work_keys_str_mv AT luoshuangxiao aneffectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT songchunqiao aneffectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT liukai aneffectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT kelinghong aneffectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT maronghua aneffectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT luoshuangxiao effectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT songchunqiao effectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT liukai effectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT kelinghong effectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes
AT maronghua effectivelowcostremotesensingapproachtoreconstructthelongtermanddensetimeseriesofareaandstoragevariationsforlargelakes