Energy-Aware Distributed Edge ML for mHealth Applications with Strict Latency Requirements
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Institute of Electrical and Electronics Engineers Inc.
Abstract
Edge machine learning (Edge ML) is expected to serve as a key enabler for real-time mobile health (mHealth) applications. However, its reliability is governed by the limited energy and computing resources of user equipment (UE), along with the wireless channel variations and dynamic resource allocation at edge servers. In this letter, we incorporate both UE and edge server computing to satisfy the strict latency requirements of mHealth applications while efficiently utilizing the UE's energy resources. Specifically, we separate the feature extraction and classification processes of Edge ML inference and formulate an optimization problem to distribute them between the UE and the edge server while determining the optimal UE transmit power. We demonstrate the effectiveness of the proposed approach using an mHealth case study for predicting epileptic seizures using data from wearable health devices. © 2012 IEEE.
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Keywords
Machine learning, Mobile edge computing, Neurological mhealth systems, Seizure detection and prediction, Energy resources, Extraction, Feature extraction, Interactive computer systems, Mhealth, Optimization, Real time systems, Resource allocation, Features extraction, Mobile health systems, Neurological mobile health system, Optimisations, Real - time system, Resource management, Seizure detection and prediction, Seizure prediction, Seizure-detection, Wireless communications