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An artificial neural networks approach and hybrid method with wavelet transform to investigate the quality of Tallo River, Indonesia | ||
Caspian Journal of Environmental Sciences | ||
دوره 21، شماره 3، مهر 2023، صفحه 647-656 اصل مقاله (1.47 M) | ||
نوع مقاله: Research Paper | ||
شناسه دیجیتال (DOI): 10.22124/cjes.2023.6942 | ||
نویسندگان | ||
Dahlan Abdullah1؛ Kristina Gartsiyanova2؛ Khurramova (Eshmamatova) Madina Mansur qizi3؛ Eshkobilov Akhmad Javlievich4؛ Mullabayev Baxtiyarjon Bulturbayevich5؛ Gavxar Zokirova6؛ Mohd Norazmi Nordin* 7 | ||
1Department of Information Technology, University of Malikussaleh, Aceh, Indonesia | ||
2National Institute of Geophysics, Geodesy and Geography, Hydrology and Water Management Research Center, Bulgarian Academy of Sciences (NIGGG-BAS), Sofia, Bulgaria, Acad. G. Bonchev Str., bl. 3, Sofia 1113, Bulgaria | ||
3Faculty of Finance and Accounting, Department of "Financial Analysis and Audit" Tashkent State University of Economics, Tashkent, Uzbekistan, Islom Karimov 49, Tashkent 100066 | ||
4Assistant of Termez Institute of Agrotechnologies and Innovative Development, Termez, Uzbekistan. Yangiabad mahalla, Termez district, Surkhandarya region, 191200, Uzbekistan | ||
5Department of Economics, Namangan Engineering-Construction Institute, Namangan, Republic of Uzbekistan | ||
6Department of Finance, Termez State University, Uzbekistan | ||
7Centre of Research for Education and Community Wellbeing, Faculty of Education, Universiti Kebangsaan Malaysia, Bangi, Selangor, Malaysia | ||
چکیده | ||
Water contamination has always been one of the greatest intense environmental issues. Rivers are more polluted than the other surface and underground water resources, since passing through different areas. The current study aimed to examine the exactitude of artificial neural networks (ANN) and wavelet-ANN (WANN) models in estimating the concentrations of pollutants including Cl, EC, Mg, and TDS by comparing the results of the observed data. Tallo River in Indonesia was selected as the case study. The concentrations of pollutant parameters Cl, EC, Mg, and TDS were available and used between 2010 and 2022. Then 70% (100 months) of the data were considered as training data, while 30% (44 months) were supposed to be the testing ones. ANN and WANN models were examined to evaluate and predict the concentrations of pollutants in river water. The results of each model were compared to the observed data, and the models' accuracy was assessed. The results demonstrated that applying wavelet transform improved the precision of simulation. All efficiency criteria associated with the WANN model yielded superior results compared to the ANN model. The findings indicated that using the hybrid method with wavelet transformation ameliorated the ANN model's exactitude by 10% during training and 16% during testing. Finally, the findings exhibited that the WANN method is better than ANN; consequently, the former has performed more exactitude modeling in the estimation of water quality. | ||
کلیدواژهها | ||
Water pollution؛ Tallo River؛ Artificial neural networks؛ Wavelet transform | ||
مراجع | ||
Abad, SSAMK, Javidan, P, Baghdadi, M & Mehrdadi, N 2023, Green synthesis of Pd@ biochar using the extract and biochar of corn-husk wastes for electrochemical Cr (VI) reduction in plating wastewater. Journal of Environmental Chemical Engineering, 11: 109911.
Ahmadianfar, I, Jamei, M & Chu, X 2020, A novel hybrid wavelet-locally weighted linear regression (W-LWLR) model for electrical conductivity (EC) prediction in surface water. Journal of Contaminant Hydrology, 232: 103641.
Aliasghar, A, Javidan, P, Rahmaninezhad, SA & Mehrdadi, N 2022, Optimizing the desalination rate in a photoelectrocatalytic desalination cell (PEDC) by altering operational conditions. Water Supply, 22: 8659-8668.
Alizadeh, MJ & Kavianpour, MR 2015, Development of wavelet-ANN models to predict water quality parameters in Hilo Bay, Pacific Ocean. Marine Pollution Bulletin, 98: 171-178.
Banejad, H, Kamali, M, Amirmoradi, K & Olyaie, E 2013, Forecasting some of the qualitative parameters of rivers using wavelet artificial neural network hybrid (W-ANN) model (case of study: Jajroud river of Tehran and Gharaso river of Kermanshah). Iranian Journal of Health and Environment, 6.
Brontowiyono, W, Hammid, AT, Jebur, YM, Al Sudani, AQ, Mutlak, DA & Parvan, M 2022, Reduction of seepage risks by investigation into different lengths and positions for cutoff wall and horizontal drainage (Case study: Sattarkhan Dam). Advances in Civil Engineering, 2022.
Chen, TC 2023, Application of wavelet theory to enhance the performance of machine learning techniques in estimating water quality parameters (case study: Gao-Ping River). Water Science and Technology, 87: 1294-1315.
Fallah, M, Pirali Zefrehei, AR, Hedayati, SA & Bagheri, T 2021, Comparison of temporal and spatial patterns of water quality parameters in Anzali Wetland (southwest of the Caspian Sea) using Support vector machine model. Caspian Journal of Environmental Sciences, 19: 95-104.
Farabi, SMV, Golaghaei, M, Sharifian, M, Karimian, E & Daryanabard, G 2022, Effects of rainbow trout farming on water quality around the sea farms in the south of the Caspian Sea. Caspian Journal of Environmental Sciences, 20: 729-737.
Heddam, S, Yaseen, ZM, Falah, MW, Goliatt, L, Tan, ML, Sa’adi, Z, ... & Samui, P 2022, Cyanobacteria blue-green algae prediction enhancement using hybrid machine learning–based gamma test variable selection and empirical wavelet transform. Environmental Science and Pollution Research, 29: 77157-77187.
Heidari, AR, Mortazavi, S & Hasanzadeh, N 2022, Spatiotemporal variation analysis of water quality using multivariate statistical methods, Case study: Koohsar Lake, Western Iran. Caspian Journal of Environmental Sciences, 20: 711-720.
Huang, M, Tian, D, Liu, H, Zhang, C, Yi, X, Cai, J, ... & Ying, G 2018, A hybrid fuzzy wavelet neural network model with self-adapted fuzzy c-means clustering and genetic algorithm for water quality prediction in rivers. Complexity, 1-11. https://doi.org/10.1155/2018/8241342.
Javidan, P, Baghdadi, M, Torabian, A & Goharrizi, BA 2022, A tailored metal–organic framework applicable at natural pH for the removal of 17α-ethinylestradiol from surface water. Cancer, 11: 13.
Jeihouni, E, Eslamian, S, Mohammadi, M & Zareian, MJ 2019, Simulation of groundwater level fluctuations in response to main climate parameters using a wavelet–ANN hybrid technique for the Shabestar Plain, Iran. Environmental Earth Sciences, 78: 293.
Ji, X & Lu, J 2018, Forecasting riverine total nitrogen loads using wavelet analysis and support vector regression combination model in an agricultural watershed. Environmental Science and Pollution Research, 25: 26405-26422.
Khosravi, M, Afshar, A & Molajou, A 2022, Decision tree-based conditional operation rules for optimal conjunctive use of surface and groundwater. Water Resources Management, 36: 2013-2025.
Kumar, M, Kumar, P, Kumar, A, Elbeltagi, A & Kuriqi, A 2022, Modeling stage–discharge–sediment using support vector machine and artificial neural network coupled with wavelet transform. Applied Water Science, 12: 87.
Molajou, A, Nourani, V, Afshar, A, Khosravi, M & Brysiewicz, A 2021, Optimal design and feature selection by genetic algorithm for emotional artificial neural network (EANN) in rainfall-runoff modeling. Water Resources Management, 35: 2369-2384.
Montaseri, M, Zaman Zad Ghavidel, S & Sanikhani, H 2018, Water quality variations in different climates of Iran: toward modeling total dissolved solid using soft computing techniques. Stochastic Environmental Research and Risk Assessment, 32: 2253-2273.
Moore, CC, Corona, J, Griffiths, C, Heberling, MT, Hewitt, JA, Keiser, DA & Wheeler, W 2023, Measuring the social benefits of water quality improvements to support regulatory objectives: Progress and future directions. Proceedings of the National Academy of Sciences, 120: e2120247120.
Nagaraju, TV, Sunil, BM, Chaudhary, B, Prasad, CD & Gobinath, R 2023, Prediction of ammonia contaminants in the aquaculture ponds using soft computing coupled with wavelet analysis. Environmental Pollution, 331: 121924.
Nejatian, N, Yavary Nia, M, Yousefyani, H, Shacheri, F & Yavari Nia, M 2023, The improvement of wavelet-based multilinear regression for suspended sediment load modeling by considering the physiographic characteristics of the watershed. Water Science and Technology, 87: 1791-1802.
Parween, S, Siddique, NA, Diganta, MTM, Olbert, AI & Uddin, MG 2022, Assessment of urban river water quality using modified NSF water quality index model at Siliguri city, West Bengal, India. Environmental and Sustainability Indicators, 16: 100202.
Rajaee, T & Shahabi, A 2016, Evaluation of wavelet-GEP and wavelet-ANN hybrid models for prediction of total nitrogen concentration in coastal marine waters. Arabian Journal of Geosciences, 9: 1-15.
Saalidong, BM, Aram, SA, Otu, S & Lartey, PO 2022, Examining the dynamics of the relationship between water pH and other water quality parameters in ground and surface water systems. PloS ONE, 17: e0262117.
Shi, B, Wang, P, Jiang, J, & Liu, R 2018, Applying high-frequency surrogate measurements and a wavelet-ANN model to provide early warnings of rapid surface water quality anomalies. Science of the Total Environment, 610: 1390-1399.
Uddin, MG, Nash, S, Rahman, A & Olbert, AI 2022, A comprehensive method for improvement of water quality index (WQI) models for coastal water quality assessment. Water Research, 219: 118532.
Wang, Y, Zheng, T, Zhao, Y, Jiang, J, Wang, Y, Guo, L & Wang, P 2013, Monthly water quality forecasting and uncertainty assessment via bootstrapped wavelet neural networks under missing data for Harbin, China. Environmental Science and Pollution Research, 20: 8909-8923.
Wu, J & Wang, Z 2022, A hybrid model for water quality prediction based on an artificial neural network, wavelet transform, and long short-term memory. Water, 14: 610.
Yavari, F, Salehi Neyshabouri, SA, Yazdi, J, Molajou, A & Brysiewicz, A 2022, A novel framework for urban flood damage assessment. Water Resources Management, 36: 1991-2011.
Zhang, J, Qiu, H, Li, X, Niu, J, Nevers, MB, Hu, X & Phanikumar, MS 2018, Real-time now-casting of microbiological water quality at recreational beaches: a wavelet and artificial neural network-based hybrid modeling approach. Environmental Science & Technology, 52: 8446-8455.
Zhou, S, Song, C, Zhang, J, Chang, W, Hou, W & Yang, L 2022, A hybrid prediction framework for water quality with integrated W-ARIMA-GRU and LightGBM methods. Water, 14: 1322.
Zhu, M, Wang, J, Yang, X, Zhang, Y, Zhang, L, Ren, H, ... & Ye, L 2022, A review of the application of machine learning in water quality evaluation. Eco-Environment & Health.
Zubaidi, SL, Al Bugharbee, H, Ortega Martorell, S, Gharghan, SK, Olier, I, Hashim, K. S, ... & Kot, P 2020, A novel methodology for prediction urban water demand by wavelet denoising and adaptive neuro-fuzzy inference system approach. Water, 12: 1628. | ||
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