Latency-Aware and Energy-Efficient Task Offloading in IoT and Cloud Systems with DQN Learning
Künye
BENABOURA, Amina, Rachid BECHAR, Walid KADRİ, Tu Dac HO, Zhenni PAN & Shaaban SAHMOUD. "Latency-Aware and Energy-Efficient Task Offloading in IoT and Cloud Systems with DQN Learning". Electronics, 14.15 (2025): 1-28.Özet
The exponential proliferation of the Internet of Things (IoT) and optical IoT (O-IoT) has
introduced substantial challenges concerning computational capacity and energy efficiency.
IoT devices generate vast volumes of aggregated data and require intensive processing,
often resulting in elevated latency and excessive energy consumption. Task offloading has
emerged as a viable solution; however, many existing strategies fail to adequately optimize
both latency and energy usage. This paper proposes a novel task-offloading approach
based on deep Q-network (DQN) learning, designed to intelligently and dynamically
balance these critical metrics. The proposed framework continuously refines real-time
task offloading decisions by leveraging the adaptive learning capabilities of DQN, thereby
substantially reducing latency and energy consumption. To further enhance system performance,
the framework incorporates optical networks into the IoT–fog–cloud architecture,
capitalizing on their high-bandwidth and low-latency characteristics. This integration
facilitates more efficient distribution and processing of tasks, particularly in data-intensive
IoT applications. Additionally, we present a comparative analysis between the proposed
DQN algorithm and the optimal strategy. Through extensive simulations, we demonstrate
the superior effectiveness of the proposed DQN framework across various IoT and O-IoT
scenarios compared to the BAT and DJA approaches, achieving improvements in energy
consumption and latency of 35%, 50%, 30%, and 40%, respectively. These findings underscore
the significance of selecting an appropriate offloading strategy tailored to the specific
requirements of IoT and O-IoT applications, particularly with regard to environmental
stability and performance demands.