2017 IEEE International Conference on Software Quality, Reliability and Security (QRS) 2017
DOI: 10.1109/qrs.2017.48
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A Game-Theoretic Based QoS-Aware Capacity Management for Real-Time EdgeIoT Applications

Abstract: Abstract-More and more real-time IoT applications such as smart cities or autonomous vehicles require big data analytics with reduced latencies. However, data streams produced from distributed sensing devices may not suffice to be processed traditionally in the remote cloud due to: (i) longer Wide area network (WAN) latencies and (ii) limited resources held by a single Cloud. To solve this problem, a novel Software-defined network (SDN) based InterCloud architecture is presented for mobile edge computing envir… Show more

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Cited by 6 publications
(5 citation statements)
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References 43 publications
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“…The proposed scheme reduces the communication overhead by increasing the participation of fog nodes and updating the variables of fog nodes in parallel. Aliyu et al 108 presented an adaptive resource capacity management (ARCM) approach to optimize the resource capacity for real-time mobile edge computing applications. Moreover, a partition form games (PFG) approach in SDN-based intercloud architecture is adopted for capacity management and load balancing.…”
Section: Resource Scheduling In Fog Computingmentioning
confidence: 99%
“…The proposed scheme reduces the communication overhead by increasing the participation of fog nodes and updating the variables of fog nodes in parallel. Aliyu et al 108 presented an adaptive resource capacity management (ARCM) approach to optimize the resource capacity for real-time mobile edge computing applications. Moreover, a partition form games (PFG) approach in SDN-based intercloud architecture is adopted for capacity management and load balancing.…”
Section: Resource Scheduling In Fog Computingmentioning
confidence: 99%
“…Till recent past, the realisation of RT-IoT was not possible due to the communication delays but since the introduction of mobile edge computing and 5G technologies the end-to-end delays and latencies can be ultra-reliable which is necessary for RT-IoT systems [28,29,35]. For a certain upper bound of delay, the challenge is fall back on the implementation of effective tools which can study the scheduling policies and ensure that no tasks will be missed by considering the maximum delay specified by the upper bound [27]. Such simulation tools present an appropriate solution for the development and testing of strategies that aim to identify and fix problems before their application in a real environment [36].…”
Section: Related Workmentioning
confidence: 99%
“…Moreover, 5G technologies have also found an excellent way for the accurate prediction of the delay because of the ultra-low latency the upper bound on delay can be determined. Recent research studies by Aliyu et al, Nunna et al and Condoluci et al propose that 5G can pave the way toward modelling latency and end-to-end communication delays which were a significant barrier in older days [24,[27][28][29].…”
Section: Introductionmentioning
confidence: 99%
“…In [7], the authors use coalitional game theory to solve a resource allocation problem in MEC-enabled IoT networks with software-defined network (SDN) capability. In such a network, delay sensitive tasks are offloaded to the edge servers by the IoT applications.…”
Section: Radio and Computational Resource Managementmentioning
confidence: 99%
“…Objective Model MEC type [3] minimize users' energy and latency cost dynamic sequential game quasi-static [4] minimize users' energy and latency cost stochastic game dynamic [5] maximize utilities of users and servers Stackelberg game vehicular [6] minimize unprocessed offloading requests Markov decision process dynamic [7] optimize resource usage and QoS guarantee coalitional game edge IoT [8] minimize overall cost and latency Markov decision process energy harvesting MEC [9] minimize latency auction theory dynamic workload arrival [10] efficient resource allocation deep Q-learning vehicular [11] minimize servers' energy and QoS guarantee minority game random spectrum resources, as well as caching storage. Modeling and analysis of such a general virtualized network under users' quality of experience (QoE) constraints is an interesting research problem.…”
Section: Referencementioning
confidence: 99%