Publication > Journal Paper
Exploring the performance of real-time data imputation to enhance fault tolerance on the edge: A study on environmental data
- Dimitris Gkoulis
- Anargyros Tsadimas
- George Kousiouris
- Cleopatra Bardaki
- Mara Nikolaidou
Abstract
Real-time data streams from edge-based IoT sensors are frequently affected by transmission errors, sensor faults, and network disruptions, leading to missing or incomplete data. This paper investigates the application of lightweight, real-time imputation methods to enhance fault tolerance in edge computing systems. To this end, we propose to integrate a modular imputation engine on edge system supporting lightweight forecasting models selected for their computational efficiency and suitability to operate on real-time data streams. To assess the performance of different popular lightweight forecasting models for real-time applications, a simulation framework is introduced that simulates the operation of the imputation engine, replicates sensor failure scenarios and allows controlled testing on real-world systems. Imputation accuracy is evaluated using Mean Absolute Error (MAE), 95th percentile error, and maximum error, with results benchmarked against sensor tolerance thresholds. The simulation framework is used to explore imputation on environmental data based on observations collected from a weather station. The findings show that Holt–Winters Exponential Smoothing delivers the highest accuracy for real-time imputation across environmental variables, outperforming simpler models suited only for short-term gaps. Errors grow with longer forecasts, confirming imputation as a temporary solution. Evaluations against sensor-specific thresholds offer practical insights, and execution profiling proves these models are lightweight enough for deployment on low-power edge devices, enabling real-time, fault-tolerant monitoring without cloud dependence.
Information
| Date | 12 July 2025 |
|---|---|
| Publisher | Elsevier |
| Journal | Simulation Modelling Practice and Theory |
| DOI | https://doi.org/10.1016/j.simpat.2025.103178 |
Keywords
- Internet of Things (IoT)
- Edge computing
- Real-time data imputation
- Performance Evaluation
- Simulatiion
Cite
@article{GKOULIS2025103178,
title = {Exploring the performance of real-time data imputation to enhance fault tolerance on the edge: A study on environmental data},
journal = {Simulation Modelling Practice and Theory},
volume = {144},
pages = {103178},
year = {2025},
issn = {1569-190X},
doi = {https://doi.org/10.1016/j.simpat.2025.103178},
url = {https://www.sciencedirect.com/science/article/pii/S1569190X25001133},
author = {Dimitris Gkoulis and Anargyros Tsadimas and George Kousiouris and Cleopatra Bardaki and Mara Nikolaidou},
keywords = {Internet of Things (ioT), Edge computing, Real-time data imputation, Performance Evaluation, Simulation}
}
Discover
Disclaimer
This publication, "Exploring the performance of real-time data imputation to enhance fault tolerance on the edge: A study on environmental data", is presented by dgk94 for informational and reference purposes. While dgk94 acknowledges and celebrates the contribution of Dimitris Gkoulis, none of the other authors listed in this publication are affiliated with dgk94 in any capacity. Their inclusion does not imply partnership, endorsement, or collaboration with dgk94.