Abstract
The evolution of industrial environments makes the reconfigurability and flexibility key requirements to rapidly adapt to changeable market needs. Computing paradigms like Edge/Fog computing are able to provide the required flexibility and scalability while guaranteeing low latencies and response times. Orchestration systems play a key role in these environments, enforcing automatic management of resources and workloads’ lifecycle, and drastically reducing the need for manual interventions. However, they do not currently meet industrial non-functional requirements, such as real-timeliness, determinism, reliability, and support for mixed-criticality workloads. In this article, we present k4.0s, an orchestration system for Industry 4.0 (I4.0) environments, which enables the support for real-time and mixed-criticality workloads. We highlight through experiments the need for novel monitoring approaches and propose a workflow for selecting monitoring metrics, which depends on both workload requirements and hosting node guarantees. We introduce new abstractions for the components of a cluster in order to enable criticality-aware monitoring and orchestration of real-time industrial workloads. Finally, we design an orchestration system architecture that reflects the proposed model, introducing new components and prototyping a Kubernetes-based implementation, taking the first steps towards a fully I4.0-enabled orchestration system.
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have