Prediction of Water Quality with Ensemble Learning Algorithms

Author:

ALJARAH Fatin1ORCID,ÇETİN Aydın2ORCID

Affiliation:

1. GAZI UNIVERSITY, INSTITUTE OF INFORMATICS

2. GAZI UNIVERSITY, FACULTY OF TECHNOLOGY, DEPARTMENT OF COMPUTER ENGINEERING

Abstract

As monitoring and control of the quality of the water is one of the most important issues in the world since only 74% of the world's population use safely managed water where the water is treated well to reach the minimum limit of safety and quality standards. For observation of the water potability and to take immediate actions to improve the water quality, real-time monitoring and classification process are required. However, monitoring and controlling the quality of the water is not an easy task since it has many requirements such as the collection and analysis of data and measures to be taken. In this paper, we focus on applying machine learning for evaluation of the water quality. We have chosen five ensemble learning algorithms namely, Adaptive Boosting, Random Forest, Extra trees classifier, Gradient Boosting, and Stacking Classifier to evaluate their classification performances in defining the water quality. Results reveal that the Stacking Classifier has the highest performance among the five classifiers that we have studied.

Publisher

International Conference on Artificial Intelligence and Applied Mathematics in Engineering

Reference50 articles.

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