Optimization of ANFIS model using wavelet transform for simulating groundwater level variations

In this study, for the first time, groundwater level (GWL) variations of the Sarab-e Qanbar well located in the city of Kermanshah, are simulated over a 13-year period by a hybrid model named WANFIS (wavelet-adaptive neuro fuzzy inference system). In order to develop the hybrid model, the wavelet tr...

Full description

Bibliographic Details
Main Authors: Fariborz Yosefvand, Saeid Shabanlou
Format: Article
Language:English
Published: Razi University 2020-06-01
Series:Journal of Applied Research in Water and Wastewater
Subjects:
Online Access:https://arww.razi.ac.ir/article_1286_95483031448af62bee478bc7b648f2ec.pdf
id doaj-0ed2f09af6f045cd95bb8ce060fa51b9
record_format Article
spelling doaj-0ed2f09af6f045cd95bb8ce060fa51b92021-02-12T08:21:57ZengRazi UniversityJournal of Applied Research in Water and Wastewater 2476-62832476-62832020-06-0171232910.22126/arww.2020.4150.11231286Optimization of ANFIS model using wavelet transform for simulating groundwater level variationsFariborz Yosefvand0Saeid Shabanlou1Department of Water Engineering, Faculty of Agriculture, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.Department of Water Engineering, Faculty of Agriculture, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.In this study, for the first time, groundwater level (GWL) variations of the Sarab-e Qanbar well located in the city of Kermanshah, are simulated over a 13-year period by a hybrid model named WANFIS (wavelet-adaptive neuro fuzzy inference system). In order to develop the hybrid model, the wavelet transform and the adaptive neuro fuzzy inference system (ANFIS) model are utilized. Furthermore, the 9 and 4 year data are used for training and testing the artificial intelligence models, respectively. Moreover, the effective lags are detected by the autocorrelation function (ACF) and then eight different models are developed for each of the ANFIS and WANFIS models using them. After that, all mother wavelets are evaluated and Dmey mother wavelet is chosen as the most optimal. For this mother wavelet, the values of scatter index (SI), variance account for (VAF) and Root mean square error (RMSE) are obtained 0.192, 94.951 and 3.117, respectively. Next, the superior model is detected through the analysis of the results obtained by all ANFIS and WANFIS models. The superior model estimates the objective function values with reasonable accuracy. For example, the correlation coefficient (R), Scatter Index (SI) and variance account for (VAF) for this model are obtained 0.974, 0.192 and 94.951, respectively. The modeling results indicate that the wavelet transform noticeably enhances the ANFIS model accuracy. Finally, the lags of the time series data for the Sarab-e Qanbar well including (t-1), (t-2), (t-3) and (t-4) are introduced as the most effective lags.https://arww.razi.ac.ir/article_1286_95483031448af62bee478bc7b648f2ec.pdfgroundwater level variationshybrid artificial intelligence techniquewavelet transformanfisoptimizationsimulation
collection DOAJ
language English
format Article
sources DOAJ
author Fariborz Yosefvand
Saeid Shabanlou
spellingShingle Fariborz Yosefvand
Saeid Shabanlou
Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
Journal of Applied Research in Water and Wastewater
groundwater level variations
hybrid artificial intelligence technique
wavelet transform
anfis
optimization
simulation
author_facet Fariborz Yosefvand
Saeid Shabanlou
author_sort Fariborz Yosefvand
title Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
title_short Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
title_full Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
title_fullStr Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
title_full_unstemmed Optimization of ANFIS model using wavelet transform for simulating groundwater level variations
title_sort optimization of anfis model using wavelet transform for simulating groundwater level variations
publisher Razi University
series Journal of Applied Research in Water and Wastewater
issn 2476-6283
2476-6283
publishDate 2020-06-01
description In this study, for the first time, groundwater level (GWL) variations of the Sarab-e Qanbar well located in the city of Kermanshah, are simulated over a 13-year period by a hybrid model named WANFIS (wavelet-adaptive neuro fuzzy inference system). In order to develop the hybrid model, the wavelet transform and the adaptive neuro fuzzy inference system (ANFIS) model are utilized. Furthermore, the 9 and 4 year data are used for training and testing the artificial intelligence models, respectively. Moreover, the effective lags are detected by the autocorrelation function (ACF) and then eight different models are developed for each of the ANFIS and WANFIS models using them. After that, all mother wavelets are evaluated and Dmey mother wavelet is chosen as the most optimal. For this mother wavelet, the values of scatter index (SI), variance account for (VAF) and Root mean square error (RMSE) are obtained 0.192, 94.951 and 3.117, respectively. Next, the superior model is detected through the analysis of the results obtained by all ANFIS and WANFIS models. The superior model estimates the objective function values with reasonable accuracy. For example, the correlation coefficient (R), Scatter Index (SI) and variance account for (VAF) for this model are obtained 0.974, 0.192 and 94.951, respectively. The modeling results indicate that the wavelet transform noticeably enhances the ANFIS model accuracy. Finally, the lags of the time series data for the Sarab-e Qanbar well including (t-1), (t-2), (t-3) and (t-4) are introduced as the most effective lags.
topic groundwater level variations
hybrid artificial intelligence technique
wavelet transform
anfis
optimization
simulation
url https://arww.razi.ac.ir/article_1286_95483031448af62bee478bc7b648f2ec.pdf
work_keys_str_mv AT fariborzyosefvand optimizationofanfismodelusingwavelettransformforsimulatinggroundwaterlevelvariations
AT saeidshabanlou optimizationofanfismodelusingwavelettransformforsimulatinggroundwaterlevelvariations
_version_ 1724273399433265152