An Energy-Efficient Ensemble Approach for Mitigating Data Incompleteness in IoT Applications
Yousef AlShehri, Lakshmish Ramaswamy

TL;DR
This paper introduces ENAMLE, an energy-aware ensemble method for IoT that mitigates data incompleteness and sensor failures while optimizing energy consumption and maintaining accuracy.
Contribution
It proposes ENAMLE, a novel adaptive ensemble approach that dynamically balances energy efficiency and accuracy in IoT data imputation tasks.
Findings
ENAMLE reduces energy consumption compared to existing methods.
It effectively mitigates the impact of missing sensor data.
Experimental results show improved robustness against sensor failures.
Abstract
Machine Learning (ML) is becoming increasingly important for IoT-based applications. However, the dynamic and ad-hoc nature of many IoT ecosystems poses unique challenges to the efficacy of ML algorithms. One such challenge is data incompleteness, which is manifested as missing sensor readings. Many factors, including sensor failures and/or network disruption, can cause data incompleteness. Furthermore, most IoT systems are severely power-constrained. It is important that we build IoT-based ML systems that are robust against data incompleteness while simultaneously being energy efficient. This paper presents an empirical study of SECOE - a recent technique for alleviating data incompleteness in IoT - with respect to its energy bottlenecks. Towards addressing the energy bottlenecks of SECOE, we propose ENAMLE - a proactive, energy-aware technique for mitigating the impact of concurrent…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Context-Aware Activity Recognition Systems · Traffic Prediction and Management Techniques
