TG-SPRED: Temporal Graph for Sensorial Data PREDiction

Author:

Laidi Roufaida1ORCID,Djenouri Djamel2ORCID,Djenouri Youcef3ORCID,Lin Jerry Chun-Wei4ORCID

Affiliation:

1. Norwegian University of Science and Technology (NTNU), Trondheim, Norway

2. University of the West of England, Bristol, UK

3. University of South-Eastern Norway, Notodden, Norway and NORCE NorwegianResearch Centre, Oslo, Norway and IDEAS NCBR, Warszawa, Poland

4. Silesian University of Technology, Gliwice, Poland

Abstract

This study introduces an innovative method aimed at reducing energy consumption in sensor networks by predicting sensor data, thereby extending the network’s operational lifespan. Our model, Temporal Graph Sensor Prediction (TG-SPRED), predicts readings for a subset of sensors designated to enter sleep mode in each time slot, based on a non-scheduling-dependent approach. This flexibility allows for extended sensor inactivity periods without compromising data accuracy. TG-SPRED addresses the complexities of event-based sensing—a domain that has been somewhat overlooked in existing literature—by recognizing and leveraging the inherent temporal and spatial correlations among events. It combines the strengths of Gated Recurrent Units and Graph Convolutional Networks to analyze temporal data and spatial relationships within the sensor network graph, where connections are defined by sensor proximities. An adversarial training mechanism, featuring a critic network employing the Wasserstein distance for performance measurement, further refines the predictive accuracy. Comparative analysis against six leading solutions using four critical metrics—F-score, energy consumption, network lifetime, and computational efficiency—showcases our approach’s superior performance in both accuracy and energy efficiency.

Funder

Arab–German Young Academy of Sciences and Humanities

German Federal Ministry of Education and Research

Publisher

Association for Computing Machinery (ACM)

Reference38 articles.

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2. Antreas Antoniou, Amos Storkey, and Harrison Edwards. 2017. Data augmentation generative adversarial networks. In Proceedings of the 34th International Conference on Machine Learning, Vol. 70. 66–75.

3. Martin Arjovsky Soumith Chintala and Léon Bottou. 2017. Wasserstein gan. Retrieved from https://arXiv:1701.07875

4. Distributed Low-Latency Data Aggregation Scheduling in Wireless Sensor Networks

5. A3T-GCN: Attention Temporal Graph Convolutional Network for Traffic Forecasting

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