Logo image
Flood risk assessment for urban water system in a changing climate using artificial neural network
Journal article   Open access   Peer reviewed

Flood risk assessment for urban water system in a changing climate using artificial neural network

Mawada E. Abdellatif, William Atherton, Rafid Alkhaddar and Yassin Z. Osman
Natural Hazards, Vol.79(2), pp.1059-1077
21/07/2015

Abstract

Artificial Neural Network Climate Change Combined sewer system Downscaling Flooding Engineering
Changes in rainfall patterns due to climate change are expected to have negative impact on urban drainage systems, causing increase in flow volumes entering the system. In this paper, two emission scenarios for greenhouse concentration have been used, the high (A1FI) and the low (B1). Each scenario was selected for purpose of assessing the impacts on the drainage system. An artificial neural network downscaling technique was used to obtain local-scale future rainfall from three coarse-scale GCMs. An impact assessment was then carried out using the projected local rainfall and a risk assessment methodology to understand and quantify the potential hazard from surface flooding. The case study is a selected urban drainage catchment in northwestern England. The results show that there will be potential increase in the spilling volume from manholes and surcharge in sewers, which would cause a significant number of properties to be affected by flooding.
pdf
osman Paper-6.pdfDownloadView
Open Access
url
Link to Published VersionView
Published (Version of record)Publisher sites may require subscription to read content

Metrics

1 File views/ downloads
29 Record Views

Details

Logo image

Usage Policy