Spatiotemporal trends of urban-induced land use and land cover change and implications on catchment surface imperviousness

被引:0
作者
Tesfa Gebrie Andualem
Stefan Peters
Guna A. Hewa
John Boland
Baden R. Myers
机构
[1] UniSA-STEM,Department of Hydraulic and Water Resources Engineering
[2] University of South Australia,undefined
[3] Mawson Lakes,undefined
[4] Debre Tabor University,undefined
来源
Applied Water Science | 2023年 / 13卷
关键词
Change detection, dry creek; Imperviousness; LULC; SVM; Urbanization;
D O I
暂无
中图分类号
学科分类号
摘要
Urbanization, changes in land use and land cover (LULC), and an increase in population collectively have significant impacts on urban catchments. However, a vast majority of LULC studies have been conducted using readily available satellite imagery, which often presents limitations due to its coarse spatial resolution. Such imagery fails to accurately depict the surface characteristics and diverse spectrum of LULC classifications contained within a single pixel. This study focused on the highly urbanized Dry Creek catchment in Adelaide, South Australia and aimed to determine the impact of urbanization on spatiotemporal changes in LULC and its implications for the land surface condition of the catchment. Very high spatial resolution imagery was utilized to examine changes in LULC over the past four decades. Support Vector Machine-learning-based image classification was utilized to classify and identify the changes in LULC over the study area. The classification accuracy showed strong agreement, with a kappa value greater than 0.8. The findings of this analysis showed that extensive urban development, which expanded the built-up area by 34 km2, were responsible for the decline in grass cover by 43.1 km2 over the last 40 years (1979–2019). Moreover, built-up areas, plantation, and water features, in contrast to grass cover, have demonstrated an increasing trend during the study period. The overall urban expansion over the study period was 136.6%. Urbanization intensified impervious area coverage, increasing the runoff coefficient, equivalent impervious area, and curve number by 60.6%, 60.6%, and 7.9%, respectively, while decreasing the retention capacity by 38.6%. These modifications suggest a potential variability in catchment surface runoff, prompting the need for further research to understand the surface runoff changes brought by the changes in LULC resulting from urbanization. The findings of this study can be used for land use planning and flood management.
引用
收藏
相关论文
共 230 条
[1]  
Aburas MM(2019)Spatio-temporal simulation and prediction of land-use change using conventional and machine learning models: a review Environ Monit Assess 191 1-28
[2]  
Ahamad MSS(2022)Spatiotemporal change detection of carbon storage and sequestration in an arid ecosystem by integrating google earth engine and InVEST (the Jiroft plain, Iran) Int J Environ Sci Technol 19 5929-5944
[3]  
Omar NQ(2018)Spectral analysis of wetlands using multi-source optical satellite imagery ISPRS J Photogramm Remote Sens 144 119-136
[4]  
Adelisardou F(2016)Spatial evaluation of impacts of increase in impervious surface area on SCS-CN and runoff in Nagpur urban watersheds India Arab J Geosci 9 1-15
[5]  
Zhao W(2015)Effects of urbanization on storm water run-off: a case study of Kathmandu Metropolitan City Nepal J Inst Eng 11 36-49
[6]  
Chow R(2022)Comparison of land use land cover classifiers using different satellite imagery and machine learning techniques Remote Sens 14 4978-191
[7]  
Mederly P(2014)Geographic object-based image analysis–towards a new paradigm ISPRS J Photogramm Remote Sens 87 180-11
[8]  
Minkina T(2021)Survey on SVM and their application in image classification Int J Inf Technol 13 1-2192
[9]  
Schou J(2004)Examining the effect of spatial resolution and texture window size on classification accuracy: an urban environment case Int J Remote Sens 25 2177-827
[10]  
Amani M(2013)9.39 urbanization and river channels Treat Geomorphol 1 809-125