RT Journal Article T1 A genetic algorithm approach for service function chain placement in 5G and beyond, virtualized edge networks A1 Magoula, Lina A1 Barmpounakis, Sokratis A1 Stavrakakis, Ioannis A1 Alonistioti, Nancy AB Network Function Virtualization (NFV) is already considered as a structural enabler of today’s networking technology and particularly the 5th Generation of Broadband and Cellular Networks (5G). NFV provides the means to flexibly and dynamically manage and allocate resources, without being restricted to the hardware limitations of the network/cloud infrastructure. Resource orchestration for specific 5G vertical industries and use case families, such as Industry 4.0 and Industrial Internet of Things (IIoT), often introduce very strict requirements in terms of network performance. In such a dynamic environment, the challenge is to efficiently place directed graphs of Virtual Network Functions (VNFs), named as SFCs (Service Function Chains), to the underlying network topology and to dynamically allocate the required resources. To this end, this work presents a novel framework, which makes use of a delay and location aware Genetic Algorithm (GA)-based approach, in order to perform optimized sequential SFC placement. Evaluation results clearly demonstrate the effectiveness of the proposed framework in terms of producing solutions that approximate well the global optimal, as well as achieving low execution time due to the employed GA-based approach and the incorporation of an early stopping criterion. The performance benefits of the proposed framework are evaluated in the context of an extensive set of simulation-based scenarios, under diverse network configurations and scales. PB Elsevier SN 1389-1286 YR 2021 FD 2021-08-04 LK https://hdl.handle.net/10016/34088 UL https://hdl.handle.net/10016/34088 LA eng NO This research has been partially funded by EC H2020 5GPPP 5Growth project (Grant number: 856709). DS e-Archivo RD 1 sept. 2024