Convolutional Neural Networks (CNN)-Signal Processing Combination for Daily Runoff Forecasting | ||
| ECOPERSIA | ||
| Article 6, Volume 10, Issue 3 - Serial Number 41, 2022, Pages 231-243 PDF (2.8 M) | ||
| Document Type: Original Research | ||
| Authors | ||
| Forough Ahmadinezhad Baghban; Vahid Moosavi* | ||
| Department of Watershed Management Engineering, Faculty of Natural Resources and Marine Sciences, Tarbiat Modares University, Iran. | ||
| Abstract | ||
| Aim: The main aim of this study was to assess the efficacy of two important signal processing approaches i.e., wavelet transform and ensemble empirical mode decomposition (EEMD) on the performance of convolutional neural network (CNN). Materials & Methods: The study was performed in two watersheds i.e., Kasilian and Bar-Erieh watersheds. In the first step, the CNN based runoff modeling was done in its single form i.e., using the original data as input. In the next step the input data was decomposed into several different sub-components i.e., approximation and details using Wavelet transform and Intrinsic Mode Functions (IMFs) using EEMD. Then the decomposed data were imported to the CNN model as input and combined Wavelet-CNN and EEMD-CNN models were provided. Findings: The results showed that CNN in its single form could not estimate the one day ahead runoff with an acceptable accuracy. CNN in its original form had a moderate performance (with NRMSE of 83 and 66%). However, application of Wavelet transform and EEMD in combination with CNN produced acceptable results. It was shown that Wavelet transform had a higher impact (with NRMSE of 48 and 26%) on the performance of CNN in comparison to EEMD (with NRMSE of 52 and 61%). Conclusion: This study showed that signal processing approaches can enhance the ability of deep learning methods such as CNN in predicting runoff values for one day ahead. However, the impact of signal processing methods on the performance of deep learning methods are not equal. | ||
| Keywords | ||
| deep learning; empirical mode decomposition; Rainfall-runoff modeling; Wavelet transform | ||
| References | ||
|
| ||
|
Statistics Article View: 7,873 PDF Download: 11,632 |
||
| Number of Journals | 45 |
| Number of Issues | 2,171 |
| Number of Articles | 24,674 |
| Article View | 24,437,030 |
| PDF Download | 17,551,642 |