Abstract

This paper presents a novel framework for the complexity analysis of rainfall, runoff, and runoff coefficient (RC) time series using multiscale entropy (MSE). The MSE analysis of RC time series was used to investigate changes in the complexity of rainfall-runoff processes due to human activities. Firstly, a coarse graining process was applied to a time series. The sample entropy was then computed for each coarse-grained time series, and plotted as a function of the scale factor. The proposed method was tested in a case study of daily rainfall and runoff data for the upstream Wu–Tu watershed. Results show that the entropy measures of rainfall time series are higher than those of runoff time series at all scale factors. The entropy measures of the RC time series are between the entropy measures of the rainfall and runoff time series at various scale factors. Results also show that the entropy values of rainfall, runoff, and RC time series increase as scale factors increase. The changes in the complexity of RC time series indicate the changes of rainfall-runoff relations due to human activities and provide a reference for the selection of rainfall-runoff models that are capable of dealing with great complexity and take into account of obvious self-similarity can be suggested to the modeling of rainfall-runoff processes. Moreover, the robustness of the MSE results were tested to confirm that MSE analysis is consistent and the same results when removing 25% data, making this approach suitable for the complexity analysis of rainfall, runoff, and RC time series.

Highlights

  • Heavy rainfall and flooding are some of the disasters which cause the greatest loss of property and life in Taiwan

  • This study applies multiscale entropy (MSE), which has the ability to represent the complexity of signals, to the complexity analysis of rainfall, runoff, and runoff coefficient (RC) time series

  • The results show that the entropy measures of rainfall, runoff, and RC time series increase when scale factors increase

Read more

Summary

Introduction

It is essential to study the relation between the rainfall and runoff processes. Observed rainfall and runoff data are applied to rainfall-runoff models to investigate the relation between the rainfall and runoff. Jakeman and Hornberger [1] indicated that the information content in a rainfall-runoff record is sufficient to support models of only very limited complexity. This raises the question of what limits should observed data place on the allowable complexity of rainfallrunoff models [1]. This study applies the RC time series to investigate the rainfall-runoff relationship

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call