An IoT Real-Time Potable Water Quality Monitoring and Prediction Model Based on Cloud Computing Architecture

Author:

Wiryasaputra Rita12ORCID,Huang Chin-Yin1ORCID,Lin Yu-Ju1ORCID,Yang Chao-Tung34ORCID

Affiliation:

1. Department of Industrial Engineering and Enterprise Information, Tunghai University, Taichung 407224, Taiwan

2. Informatics Department, Krida Wacana University, Jakarta 11470, Indonesia

3. Department of Computer Science, Tunghai University, Taichung 407224, Taiwan

4. Research Center for Smart Sustainable Circular Economy, Tunghai University, Taichung 407224, Taiwan

Abstract

In order to achieve the Sustainable Development Goals (SDG), it is imperative to ensure the safety of drinking water. The characteristics of each drinkable water, encompassing taste, aroma, and appearance, are unique. Inadequate water infrastructure and treatment can affect these features and may also threaten public health. This study utilizes the Internet of Things (IoT) in developing a monitoring system, particularly for water quality, to reduce the risk of contracting diseases. Water quality components data, such as water temperature, alkalinity or acidity, and contaminants, were obtained through a series of linked sensors. An Arduino microcontroller board acquired all the data and the Narrow Band-IoT (NB-IoT) transmitted them to the web server. Due to limited human resources to observe the water quality physically, the monitoring was complemented by real-time notifications alerts via a telephone text messaging application. The water quality data were monitored using Grafana in web mode, and the binary classifiers of machine learning techniques were applied to predict whether the water was drinkable or not based on the data collected, which were stored in a database. The non-decision tree, as well as the decision tree, were evaluated based on the improvements of the artificial intelligence framework. With a ratio of 60% for data training: at 20% for data validation, and 10% for data testing, the performance of the decision tree (DT) model was more prominent in comparison with the Gradient Boosting (GB), Random Forest (RF), Neural Network (NN), and Support Vector Machine (SVM) modeling approaches. Through the monitoring and prediction of results, the authorities can sample the water sources every two weeks.

Funder

National Science and Technology Council

Publisher

MDPI AG

Reference30 articles.

1. Al Jazeera Staff (2023, September 16). Infographic: Which Countries Have the Safest Drinking Water?. Available online: https://www.aljazeera.com/news/2022/3/22/infographic-which-countries-have-the-safest-drinking-water-interactive.

2. World Health Organization (WHO) (2002). Drinking Water.

3. Digital water: Artificial intelligence and soft computing applications for drinking water quality assessment;Mian;Clean Technol. Environ. Policy,2023

4. World Health Organization (WHO) (2017). Guidelines for Drinking-Water Quality.

5. Water quality prediction and classification based on principal component regression and gradient boosting classifier approach;Khan;J. King Saud Univ. Comput. Inf. Sci.,2022

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