TL;DR
SeReMAS introduces a predictive, data-driven framework using deep reinforcement learning for self-resilient task offloading in mobile autonomous systems, significantly improving reliability amidst network variability.
Contribution
The paper proposes SeReMAS, a novel ensemble-based predictive framework with DRL for optimizing redundant task offloading in edge computing for MASs, addressing unpredictability in system reliability.
Findings
SeReMAS increases task execution probability by 17%.
It effectively manages resource utilization while enhancing reliability.
The approach outperforms reactive methods in dynamic network conditions.
Abstract
Edge computing enables Mobile Autonomous Systems (MASs) to execute continuous streams of heavy-duty mission-critical processing tasks, such as real-time obstacle detection and navigation. However, in practical applications, erratic patterns in channel quality, network load, and edge server load can interrupt the task flow execution, which necessarily leads to severe disruption of the system's key operations. Existing work has mostly tackled the problem with reactive approaches, which cannot guarantee task-level reliability. Conversely, in this paper we focus on learning-based predictive edge computing to achieve self-resilient task offloading. By conducting a preliminary experimental evaluation, we show that there is no dominant feature that can predict the edge-MAS system reliability, which calls for an ensemble and selection of weaker features. To tackle the complexity of the problem,…
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