Water is the most important factor for the survival of living things on Earth. Although 70% of the Earth is water, the amount of drinkable water is approximately 0.3%. Therefore, creating a sustainable water policy and carrying out studies are very important for our world and our future. Most of the potable water resources are physical losses. In the evaluations made based on metropolitan municipalities, it was seen that the water loss rate was approximately 50%. The study aims to find water pipe faults using IoT (Internet of Things) based machine learning classifiers to prevent physical losses in water distribution networks. Within the scope of this study, an experimental environment was created and an IMU (Inertial Measurement Unit) sensor was fixed on plastic pipes of different diameters and lengths. Vibration data collected in different scenarios (pressure, etc. factors) were transferred to the ThingSpeak platform over the internet. The transferred data could be monitored in real-time on a server. Physical damage in the pipes was detected using signal pre-processing, feature extraction, and feature selection algorithms on vibration data. In the study, damages were classified using machine learning-based classification (Decision Trees, k-Nearest Neighbors, Linear Discriminant, Support Vector Machines) methods to predict the type of damage (solid, hole, multi-hole). The data set revealed within the scope of the study is thought to lead to scientific studies in this field. The results obtained are close to the state-of-the-art results.
Water pipe faults IoT-based embedded systems ESP Fault classification Thingspeak platform Machine learning
TUBITAK 2209/A. Project number: 1919B012217701
TUBITAK 2209/A. Project number: 1919B012217701
| Primary Language | English |
|---|---|
| Subjects | Metrology, Applied and Industrial Physics, Materials Engineering (Other) |
| Journal Section | Research Article |
| Authors | |
| Project Number | TUBITAK 2209/A. Project number: 1919B012217701 |
| Submission Date | November 19, 2024 |
| Acceptance Date | November 26, 2024 |
| Publication Date | December 18, 2024 |
| DOI | https://doi.org/10.54565/jphcfum.1588037 |
| IZ | https://izlik.org/JA65TA84MC |
| Published in Issue | Year 2024 Volume: 7 Issue: 2 |
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