Paper Format

Paper Format Guidelines

Sample IJMETS Paper with Formatting Guidelines

Smart Water Monitoring System Using IoT and Machine Learning

Title: Cambria | Bold | 14pt | Centered
John Doe*1, Jane Smith*2, Ahmed Khan*3
*1Department of Electrical Engineering, GreenTech University, Lahore, Pakistan
*2Department of Computer Science, BlueRiver Institute, Karachi, Pakistan
*3Smart Systems Research Lab, TechNexus, Islamabad, Pakistan
Authors: Cambria | Bold | 12pt | Centered
Affiliations: Cambria | 11pt | Centered
ABSTRACT

This study presents the development of a smart water monitoring system that uses IoT sensors and machine learning algorithms to optimize water usage in urban buildings. The system detects anomalies, predicts usage trends, and sends alerts in real-time. Experiments in a pilot building reduced water wastage by 28%. The project demonstrates a scalable solution for smart city sustainability.

Heading: Cambria | Bold | 12pt
Content: Times New Roman | 10pt | Justified
Word Count: ≤ 200 words | Single paragraph
Keywords: Smart Water, IoT, Anomaly Detection, Urban Sustainability, Machine Learning
Keywords: Cambria | 10pt | 5–6 words max
I. INTRODUCTION

Water scarcity is a critical issue in urban environments. Traditional systems lack the ability to monitor consumption dynamically or detect leaks. With the proliferation of Internet of Things (IoT) technologies and predictive analytics, new opportunities have emerged to enhance water resource management. This paper introduces a smart water monitoring system that combines real-time sensing with data-driven predictions.

Heading: Cambria | Bold | 12pt | Roman Numeral
Content: Times New Roman | 10pt | Justified
II. LITERATURE REVIEW

Several prior studies have proposed IoT-based monitoring in agriculture and homes. Sharma et al. (2021) developed a basic Arduino sensor model, but lacked integration with AI. Others, like Liu et al. (2022), emphasized leak detection using thresholds. Our study improves upon these by using a supervised ML model that adapts to usage behavior patterns and predicts future anomalies with higher accuracy.

Heading: Cambria | Bold | 12pt | Roman Numeral
Word Count: 150–300 words recommended
III. METHODOLOGY
A. System Architecture

The system includes flow sensors, a NodeMCU microcontroller, cloud-based storage (Firebase), and a Python-based machine learning backend. Data is captured every 30 seconds and uploaded to the cloud.

B. Algorithm Design

We trained a random forest model using historical data from 10 buildings. The model predicts abnormal consumption levels based on hourly patterns. A 95% confidence interval is used to trigger alerts.

Subheadings: Cambria | Bold | 10pt | Left aligned
IV. MODELING AND ANALYSIS

To validate the model, we ran simulations across three sites over a 14-day period. The algorithm successfully detected 13 of 14 leak scenarios and predicted abnormal surges with 91% precision.

Figure 1: System Architecture Diagram
ModelPrecisionRecallF1 Score
Random Forest0.910.880.89
Logistic Regression0.830.760.79
Figure & Table Captions: Times New Roman | 10pt | Centered
Tables numbered and referenced in text
V. RESULTS AND DISCUSSION

The results indicate a high potential for real-world deployment. The accuracy of the predictive alerts minimized unnecessary water shutdowns. Users reported improved confidence in the system and expressed satisfaction via app feedback.

Section Heading: Cambria | 12pt | Bold
Content: Times New Roman | 10pt | Justified
VI. CONCLUSION

This study demonstrates a working prototype of a smart water monitoring system that applies machine learning for predictive control. The architecture is low-cost, scalable, and capable of significant environmental impact. Future improvements may include edge computing for real-time analytics without cloud reliance.

Conclusion should not repeat Abstract. Avoid tables/figures here. Font: Times New Roman | 10pt
ACKNOWLEDGEMENTS

The authors wish to thank the UrbanTech Innovation Fund and the Smart Cities Lab, Islamabad, for their support and data access.

Optional section | Font: Times New Roman | 10pt
VII. REFERENCES
  1. S. Sharma, R. Mehta, “IoT Based Water Level Monitoring,” Int. J. Smart Systems, vol. 5, no. 2, pp. 122–130, 2021.
  2. L. Liu, X. Zhang, “Predictive Maintenance in Utilities Using ML,” IEEE Trans. Industrial IoT, vol. 11, no. 4, pp. 88–95, 2022.
  3. H. Yousaf, F. Ali, “Water Management Using Smart Sensing,” Pak. J. Engg. & Tech, vol. 17, no. 3, pp. 45–53, 2020.
IEEE Style: Numbered, Times New Roman | 10–12pt | All references must be cited in-text