Deakin University
Browse

Hypertuning-Based Ensemble Machine Learning Approach for Real-Time Water Quality Monitoring and Prediction

Download (2.02 MB)
journal contribution
posted on 2024-10-14, 05:17 authored by Md Shamim Bin Shahid, Habibur Rahman Rifat, Md Ashraf UddinMd Ashraf Uddin, Md Manowarul Islam, Md Zulfiker Mahmud, Md Kowsar Hossain Sakib, Arun Roy
In the present day, the health of the populace is significantly jeopardized by the presence of contaminated water, and the majority of the population is unaware of the distinction between safe and unsafe water consumption. Agricultural, industrial, and other human-induced activities are causing a significant decline in the availability of drinking water. Consequently, the issue of ensuring the safety of ingesting water is becoming increasingly prevalent. People should be aware of the purity of the water and the locations where it can be used in order to resolve this situation. There are numerous IoT-based system architectures that are capable of monitoring water parameters; however, the majority of these architectures do not allow for real-time water quality prediction or visualization. In order to achieve this, we suggest a wireless framework that is based on the Internet of Things (IoT). The sensors are able to capture water parameters and transmit the data to the cloud, where a machine learning (ML) model operates to classify the water quality. After that, Grafana enables us to effortlessly visualize the real-time data and predictions from any location. We employed a multi-class dataset from China for the model’s construction. GridSearchCV was implemented to identify the optimal parameters for model optimization. The proposed model is a combination of the Random Forest (RF), Extreme Gradient Boosting (XGB), and Histogram Gradient Boosting (HGB) models. The accuracy of the model for the China dataset was 99.80%. To assess the robustness of the proposed model, we acquired a new dataset from the Bangladesh Water Development Board (BWDB) and used it to test the proposed model. The model’s accuracy for this dataset was 99.72%. In summary, the proposed wireless IoT framework enables individuals to effortlessly monitor the purity of water and view its parameters from any location.

History

Related Materials

  1. 1.

Location

Basel, Switzerland

Open access

  • Yes

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Journal

Applied Sciences

Volume

14

Article number

8622

Pagination

1-19

ISSN

2076-3417

eISSN

2076-3417

Issue

19

Publisher

MDPI

Usage metrics

    Research Publications

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC