Superiority of artificial neural networks over conventional hydrological models in simulating urban catchment runoff

Author:

Balacumaresan Harshanth1ORCID,Imteaz Monzur Alam1ORCID,Hossain Iqbal1ORCID,Aziz Md Abdul2,Choudhury Tanveer3

Affiliation:

1. a Department of Civil and Construction Engineering, Swinburne University of Technology, Victoria 3122, Australia

2. b Melbourne Water Corporation, Melbourne, Australia

3. c School of Engineering, Information Technology and Physical Sciences, Federation University Australia, Churchill, Victoria 3353, Australia

Abstract

ABSTRACT The synergistic impacts of climate change and rapid urbanisation have amplified the recurrence and austerity of intense rainfall events, exacerbating persistent flooding risk in urban environments. The intricate topography and inherent non-linearity of urban hydrological processes limit the predictive accuracy of conventional hydrological models, leading to significant discrepancies in flow estimation. Recent advancements in artificial neural network (ANNs) have demonstrated remarkable advancements in mitigating the majority of the limitations, specifically in simulating complex, non-linear relationships, without an intricate comprehension of the underlying physical processes. This paper proposes a deep learning ANN-based flood flow estimation model for enhanced precision simulation of streamflow in urban catchments, with the research's distinctive contribution involving rigorous comparative evaluation of the developed model against the established Australian hydrological model, RORB. Gardiners Creek catchment, an urban catchment situated in east Melbourne was designated as the study area, with the model being calibrated upon historical storm incidences. The findings reveal that the ANN model substantially outperforms RORB, as evidenced by superior correlation, prediction efficiency, and lower generalisation error. This underscores the ANN's adeptness in accurately replicating non-linear-catchment responses to storm events, marking a substantial advancement over conventional modelling practices and indicating its transformative potential for enhancing flood prediction precision and revolutionising current estimation practices.

Publisher

IWA Publishing

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