Abstract

The imperviousness of urban surfaces is an important parameter in simulating urban hydrological responses, but quantifying imperviousness can be challenging and time-consuming. In response, this study presents a new framework to efficiently estimate the imperviousness of urban surfaces, using satellite images with Red, Green and Blue bands and a land cover dataset with multiple built-up urban classes through remote sensing, machine learning and field verification. The methodology is adaptable to other regions with similar datasets. For a case study in Pretoria, South Africa, major differences in median total impervious area percentages (mTIA%) were identified when compared between land cover groups: residential areas had a lower imperviousness median (mTIA% = 38%) than commercial (mTIA% = 81%) and industrial (mTIA% = 89%) land cover. The mTIA% also varies between 17 and 61% for a range of different formally developed residential classes and between 14 and 43% for a range of different informally developed residential classes. These mTIA% are recommended for any urban area within the South African National Land Cover dataset. These values can be incorporated into hydraulic and hydrological models, which improve the efficiency of parameter estimation for modelling. The methodology successfully quantified temporal imperviousness changes in the study area.

Original languageEnglish
Pages (from-to)1141-1156
Number of pages16
JournalWater Science & Technology
Volume91
Issue number10
Early online date15 May 2025
DOIs
Publication statusPublished - 15 May 2025

Data Availability Statement

The SANLC data used for this study is available from https://egis.environment.gov.za/sa_national_land_cover_datasets. The SANSA satellite images can be requested from https://www.sansa.org.za/research/.

Funding

The research presented in this manuscript emanated from a study funded by the Water Research Commission (WRC) (Project K5/2747), whose support is acknowledged with gratitude.

FundersFunder number
Water Research CommissionK5/2747

    Keywords

    • QGIS
    • impervious
    • informal settlement
    • land cover
    • remote sensing
    • urban flood

    ASJC Scopus subject areas

    • Environmental Engineering
    • Water Science and Technology

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