Abstract

Energy internet (EI) is a very complex system with various applications that not only require a high-level of cyber-security but also need low-latency communication. Thus, cyberinfrastructure with latency-optimal network intelligence services (NIS), in which application data flows are deeply examined in real-time, is inevitable. In the future internet system, a set of NIS can flexibly be implemented in network function virtualization (NFV)-based middleboxes that overlay on software-defined networking (SDN) architecture, becoming an SDN/NFV-based cyberinfrastructure. However, how to deploy these middleboxes is a non-deterministic optimization problem, which is complicated and time-consuming. Hence, by focusing on latency minimization, we develop an artificial intelligence (AI)-powered solution consisted of two phases. First, middleboxes placement based on the graph cluster analysis, and second, NIS resource allocation based on the prediction of service usage-ratio in each corresponding cluster. The simulation-based experimental evaluation shows that our proposed strategy using an optimized K-means algorithm outperforms the recent state-of-the-art middleboxes placement approaches. The average end-to-end flow latencies are around 23.81%, 18.44%, and 11.49% lower compared with the simulated annealing method, the basic sequential algorithmic scheme, and the minimum spanning tree procedure, respectively. Besides, the proposed resource allocation scheme optimizes further the latency minimization around 4.24%. We believe that the work presented in this paper will aid the communication service providers (CSP) in providing a secure and low-latency SDN/NFV-based cyberinfrastructure for the EI ecosystem.

Highlights

  • The penetration of renewable energy generation, such as building-integrated photovoltaics (BIPV), has been increased in many countries [1]–[3]

  • This solution consisted of two phases, i.e., the graph cluster analysis for middleboxes placement and the dynamic resource allocation based on the prediction of network intelligence services (NIS) usage-ratio in each corresponding cluster

  • We implement a testbed based on the network function virtualization (NFV) infrastructure emulation platform (NIEP) [50] in two machines, and each device has 3.40 GHz eight-core central processing unit (CPU) and 8192 MB RAM

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Summary

Introduction

The penetration of renewable energy generation, such as building-integrated photovoltaics (BIPV), has been increased in many countries [1]–[3]. Various smart grid technologies and applications have been proposed to accommodate the high penetration of prosumers with distributed renewable energy resources (DRERs) and distributed energy storage devices (DESDs) [4], [5]. These smart grid technological advancements bring opportunities to transform the current power system to energy internet (EI), an internet business model of the electricity grid, in which multiple energy and data flows are in dual circulation and coupling among the entire value chain.

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