Derivation of Region-specific Curve Number for an Improved Runoff Prediction Accuracy
Improving Flood Management, Prediction and Monitoring
ISBN: 978-1-78756-552-4, eISBN: 978-1-78756-551-7
Publication date: 21 November 2018
Abstract
The US Department of Agriculture (USDA), Soil Conservation Services (SCS) rainfall-runoff model has been applied worldwide since 1954 and adopted by Malaysian government agencies. Malaysia does not have regional specific curve numbers (CN) available for the use in rainfall-runoff modelling, and therefore a SCS-CN practitioner has no option but to adopt its guideline and handbook values which are specific to the US region. The selection of CN to represent a watershed becomes subjective and even inconsistent to represent similar land cover area. In recent decades, hydrologists argue about the accuracy of the predicted runoff results from the model and challenge the validity of the key parameter, initial abstraction ratio coefficient (λ) and the use of CN. Unlike the conventional SCS-CN technique, the proposed calibration methodology in this chapter discarded the use of CN as input to the SCS model and derived statistically significant CN value of a specific region through rainfall-runoff events directly under the guide of inferential statistics. Between July and October of 2004, the derived λ was 0.015, while λ = 0.20 was rejected at alpha = 0.01 level at Melana watershed in Johor, Malaysia. Optimum CN of 88.9 was derived from the 99% confidence interval range from 87.4 to 96.6 at Melana watershed. Residual sum of square (RSS) was reduced by 79% while the runoff model of Nash–Sutcliffe was improved by 233%. The SCS rainfall-runoff model can be calibrated quickly to address urban runoff prediction challenge under rapid land use and land cover changes.
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Acknowledgements
Acknowledgements
The authors would like to thank Universiti Tunku Abdul Rahman, Centre for Disaster Risk Reduction and Universiti Teknologi Malaysia, Centre for Environmental Sustainability and Water Security, Research Institute for Sustainable Environment of UTM, vote no. Q.J130000.2509.07H23 and R.J130000.7809.4L175 for its financial support in this study. This study was also supported by the Asian Core Program of the Japanese Society for the Promotion of Science (JSPS) and the Ministry of Higher Education (MOHE), Malaysia. The authors would also like to acknowledge the guidance from Professor Richard H. Hawkins (University of Arizona, USA).
Citation
Ling, L. and Yusop, Z. (2018), "Derivation of Region-specific Curve Number for an Improved Runoff Prediction Accuracy", Improving Flood Management, Prediction and Monitoring (Community, Environment and Disaster Risk Management, Vol. 20), Emerald Publishing Limited, Leeds, pp. 37-48. https://doi.org/10.1108/S2040-726220180000020012
Publisher
:Emerald Publishing Limited
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