Abstract:
Containerized micro-service oriented computing deployment
strategies have proven to possess resilience, selfadaptive,
and self-healing properties in cloud computing environments.
The rapid growth of smart Internet of Things (IoT)
deployments necessitates a similar approach to mitigate the
challenges associated with manually managing large fleets of IoT
devices. To address these challenges, we propose a novel software
framework that extends Kubernetes(K8s) to collect and integrate
IoT device performance metrics. By leveraging this framework,
a set of self-healing and self-adaptive strategies can be deployed,
taking into account the status of IoT devices. In our research,
we evaluate the impact of IoT device-to-edge compute latency,
bandwidth, and jitter information using the proposed software
framework, including a metrics collection plugin and a custom
scheduler. The results demonstrate significant enhancements
in Quality of Service measures for a benchmark application
scenario, emphasizing the framework’s ability to reduce manual
intervention efforts through extended adaptation strategies.
Citation:
S. Samarakoon, S. Bandara, N. Jayasanka and C. Hettiarachchi, "Self-Healing and Self-Adaptive Management for IoT-Edge Computing Infrastructure," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 473-478, doi: 10.1109/MERCon60487.2023.10355514.