Extended reality (XR) devices, commonly known as wearables, must handle significant computational loads under tight latency constraints. To meet these demands, they rely on a combination of on-device processing and edge offloading. This letter focuses on offloading strategies for wearables and assesses the impact of offloading decisions over three distinct time scales: instantaneous power consumption, short-term temperature fluctuations, and long-term battery duration. We introduce a comprehensive system model that captures these temporal dynamics, and propose a stochastic and stationary offloading strategy, called TAO (for temperature-aware offloading), designed to minimize the offloading cost while adhering to power, thermal, and energy constraints. Our performance evaluation, leveraging COMSOL models of real-world wearables, confirms that TAO successfully avoids exceeding temperature limits while keeping additional edge offloading to a minimum. These results also highlight how properly accounting for all features of wearables allows fully exploiting edge offloading opportunities.

XR Offloading Across Multiple Time Scales: The Roles of Power, Temperature, and Energy / Malandrino, Francesco; Chukhno, Olga; Catania, Alessandro; Molinaro, Antonella; Chiasserini, Carla Fabiana. - In: IEEE NETWORKING LETTERS. - ISSN 2576-3156. - (2025), pp. 1-1. [10.1109/lnet.2025.3593665]

XR Offloading Across Multiple Time Scales: The Roles of Power, Temperature, and Energy

Chukhno, Olga;Molinaro, Antonella;
2025-01-01

Abstract

Extended reality (XR) devices, commonly known as wearables, must handle significant computational loads under tight latency constraints. To meet these demands, they rely on a combination of on-device processing and edge offloading. This letter focuses on offloading strategies for wearables and assesses the impact of offloading decisions over three distinct time scales: instantaneous power consumption, short-term temperature fluctuations, and long-term battery duration. We introduce a comprehensive system model that captures these temporal dynamics, and propose a stochastic and stationary offloading strategy, called TAO (for temperature-aware offloading), designed to minimize the offloading cost while adhering to power, thermal, and energy constraints. Our performance evaluation, leveraging COMSOL models of real-world wearables, confirms that TAO successfully avoids exceeding temperature limits while keeping additional edge offloading to a minimum. These results also highlight how properly accounting for all features of wearables allows fully exploiting edge offloading opportunities.
2025
edge computing
offloading
wearable
XR
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.12318/160968
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