Abstract
Solving the controller placement problem (CPP) in an SDN architecture with multiple controllers has a significant impact on control overhead in the network, especially in multihop wireless networks (MWNs). The generated control overhead consists of controller-device and inter-controller communications to discover the network topology, exchange configurations, and set up and modify flow tables in the control plane. However, due to the high complexity of the proposed optimization model to the CPP, heuristic algorithms have been reported to find near-optimal solutions faster for large-scale wired networks. In this paper, the objective is to extend those existing heuristic algorithms to solve a proposed optimization model to the CPP in software-defined multihop wireless networking (SDMWN).Our results demonstrate that using ranking degrees assigned to the possible controller placements, including the average distance to other devices as a degree or the connectivity degree of each placement, the extended heuristic algorithms are able to achieve the optimal solution in small-scale networks in terms of the generated control overhead and the number of controllers selected in the network. As a result, using extended heuristic algorithms, the average number of hops among devices and their assigned controllers as well as among controllers will be reduced. Moreover, these algorithms are able tolower the control overhead in large-scale networks and select fewer controllers compared to an extended algorithm that solves the CPP in SDMWN based on a randomly selected controller placement approach.
Highlights
Applying the software-defined networking (SDN) architecture to multihop wireless networks (MWNs), which are self-configuring and self-organizing, can be beneficial to overcome some of the existing challenges, including distributed network management, mobility of devices, energy consumption, and quality of service [1]
Our results demonstrate that using ranking degrees assigned to the possible controller placements, including the average distance to other devices as a degree or the connectivity degree of each placement, the extended heuristic algorithms are able to achieve the optimal solution in small-scale networks in terms of the generated control overhead and the number of controllers selected in the network
Using a distributed control plane in software-defined multihop wireless networking (SDMWN), i.e., the MWN is managed by multiple SDN controllers, is a potential solution to address the challenges of using a single controller in the network in terms of scalability, reliability, energy depletion, etc. [2] [3] [4]
Summary
Applying the software-defined networking (SDN) architecture to multihop wireless networks (MWNs), which are self-configuring and self-organizing, can be beneficial to overcome some of the existing challenges, including distributed network management, mobility of devices, energy consumption, and quality of service [1]. In SDMWN, in addition to the shared and unreliable communications and the capacity limit of links, in some techniques, the data and control traffic share the same channel In such networks, solving the CPP while minimizing the generated control overhead plays an important role in reducing energy consumption, packet losses, and delay that in turn has a significant impact on the reliability of the control plane. The results demonstrate that the proposed optimization model is able to solve the CPP problem, and minimize the control overhead and satisfy the multiple defined constraints.
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