scholarly journals Distribution of Groundwater Arsenic in Uruguay Using Hybrid Machine Learning and Expert System Approaches

Water ◽  
2021 ◽  
Vol 13 (4) ◽  
pp. 527
Author(s):  
Ruohan Wu ◽  
Elena M. Alvareda ◽  
David A. Polya ◽  
Gonzalo Blanco ◽  
Pablo Gamazo

Groundwater arsenic in Uruguay is an important environmental hazard, hence, predicting its distribution is important to inform stakeholders. Furthermore, occurrences in Uruguay are known to variably show dependence on depth and geology, arguably reflecting different processes controlling groundwater arsenic concentrations. Here, we present the distribution of groundwater arsenic in Uruguay modelled by a variety of machine learning, basic expert systems, and hybrid approaches. A pure random forest approach, using 26 potential predictor variables, gave rise to a groundwater arsenic distribution model with a very high degree of accuracy (AUC = 0.92), which is consistent with known high groundwater arsenic hazard areas. These areas are mainly in southwest Uruguay, including the Paysandú, Río Negro, Soriano, Colonia, Flores, San José, Florida, Montevideo, and Canelones departments, where the Mercedes, Cuaternario Oeste, Raigón, and Cretácico main aquifers occur. A hybrid approach separating the country into sedimentary and crystalline aquifer domains resulted in slight material improvement in a high arsenic hazard distribution. However, a further hybrid approach separately modelling shallow (<50 m) and deep aquifers (>50 m) resulted in the identification of more high hazard areas in Flores, Durazno, and the northwest corner of Florida departments in shallow aquifers than the pure model. Both hybrid models considering depth (AUC = 0.95) and geology (AUC = 0.97) produced improved accuracy. Hybrid machine learning models with expert selection of important environmental parameters may sometimes be a better choice than pure machine learning models, particularly where there are incomplete datasets, but perhaps, counterintuitively, this is not always the case.

2021 ◽  
Author(s):  
Md. Abul Kalam Azad ◽  
Abu Reza Md. Towfiqul Islam ◽  
Md. Siddiqur Rahman ◽  
Kurratul Ayen

2021 ◽  
Vol 11 (21) ◽  
pp. 9797
Author(s):  
Solaf A. Hussain ◽  
Nadire Cavus ◽  
Boran Sekeroglu

Obesity or excessive body fat causes multiple health problems and diseases. However, obesity treatment and control need an accurate determination of body fat percentage (BFP). The existing methods for BFP estimation require several procedures, which reduces their cost-effectivity and generalization. Therefore, developing cost-effective models for BFP estimation is vital for obesity treatment. Machine learning models, particularly hybrid models, have a strong ability to analyze challenging data and perform predictions by combining different characteristics of the models. This study proposed a hybrid machine learning model based on support vector regression and emotional artificial neural networks (SVR-EANNs) for accurate recent BFP prediction using a primary BFP dataset. SVR was applied as a consistent attribute selection model on seven properties and measurements, using the left-out sensitivity analysis, and the regression ability of the EANN was considered in the prediction phase. The proposed model was compared to seven benchmark machine learning models. The obtained results show that the proposed hybrid model (SVR-EANN) outperformed other machine learning models by achieving superior results in the three considered evaluation metrics. Furthermore, the proposed model suggested that abdominal circumference is a significant factor in BFP prediction, while age has a minor effect.


2020 ◽  
Vol 587 ◽  
pp. 124989 ◽  
Author(s):  
Fatemeh Barzegari Banadkooki ◽  
Mohammad Ehteram ◽  
Fatemeh Panahi ◽  
Saad Sh. Sammen ◽  
Faridah Binti Othman ◽  
...  

2021 ◽  
Vol 15 (1) ◽  
pp. 1761-1774
Author(s):  
Wenyu Zheng ◽  
Shahab S. Band ◽  
Hojat Karami ◽  
Sohrab Karimi ◽  
Saeed Samadianfard ◽  
...  

2019 ◽  
Vol 146 ◽  
pp. 22-28
Author(s):  
Seung Ji Lim ◽  
Young Mi Kim ◽  
Hosik Park ◽  
Seojin Ki ◽  
Kwanho Jeong ◽  
...  

2018 ◽  
Vol 69 ◽  
pp. 01004 ◽  
Author(s):  
Chih-Feng Yen ◽  
He-Yen Hsieh ◽  
Kuan-Wu Su ◽  
Min-Chieh Yu ◽  
Jenq-Shiou Leu

Due to the variability and instability of photovoltaic (PV) output, the accurate prediction of PV output power plays a major role in energy market for PV operators to optimize their profits in energy market. In order to predict PV output, environmental parameters such as temperature, humidity, rainfall and win speed are gathered as indicators and different machine learning models are built for each solar panel inverters. In this paper, we propose two different kinds of solar prediction schemes for one-hour ahead forecasting of solar output using Support Vector Machine (SVM) and Random Forest (RF).


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