scholarly journals Adaptive Energy-Aware Computation Offloading for Cloud of Things Systems

IEEE Access ◽  
2017 ◽  
Vol 5 ◽  
pp. 23947-23957 ◽  
Author(s):  
Yucen Nan ◽  
Wei Li ◽  
Wei Bao ◽  
Flavia C. Delicato ◽  
Paulo F. Pires ◽  
...  
2015 ◽  
Vol 9 (2) ◽  
pp. 393-405 ◽  
Author(s):  
Ying-Dar Lin ◽  
Edward T.-H. Chu ◽  
Yuan-Cheng Lai ◽  
Ting-Jun Huang

Author(s):  
Byoung-Dai Lee ◽  
Kwang-Ho Lim ◽  
Namgi Kim

Smart connected devices such as smartphones and tablets are battery-operated to facilitate their mobility. Therefore, low power consumption is a critical requirement for mobile hardware and for the software designed for such devices. In addition to efficient power management techniques and new battery technologies based on nanomaterials, cloud computing has emerged as a promising technique for reducing energy consumption as well as augmenting the computational and memory capabilities of mobile devices. In this study, we designed and implemented a framework that allows for the energy-efficient execution of mobile applications by partially offloading the workload of a mobile device onto a resourceful cloud. This framework comprises a development toolkit, which facilitates the development of mobile applications capable of supporting computation offloading, and a runtime infrastructure for deployment in the cloud. Using this framework, we implemented three different mobile applications and demonstrated that considerable energy savings can be achieved compared with local processing for both resource-intensive and lightweight applications, especially when using high-speed networks such as Wi-Fi and Long-Term Evolution.


Author(s):  
Joaquim Silva ◽  
Eduardo R. B. Marques ◽  
Luís M.B. Lopes ◽  
Fernando Silva

AbstractWe present a model for measuring the impact of offloading soft real-time jobs over multi-tier cloud infrastructures. The jobs originate in mobile devices and offloading strategies may choose to execute them locally, in neighbouring devices, in cloudlets or in infrastructure cloud servers. Within this specification, we put forward several such offloading strategies characterised by their differential use of the cloud tiers with the goal of optimizing execution time and/or energy consumption. We implement an instance of the model using Jay, a software framework for adaptive computation offloading in hybrid edge clouds. The framework is modular and allows the model and the offloading strategies to be seamlessly implemented while providing the tools to make informed runtime offloading decisions based on system feedback, namely through a built-in system profiler that gathers runtime information such as workload, energy consumption and available bandwidth for every participating device or server. The results show that offloading strategies sensitive to runtime conditions can effectively and dynamically adjust their offloading decisions to produce significant gains in terms of their target optimization functions, namely, execution time, energy consumption and fulfilment of job deadlines.


Sensors ◽  
2018 ◽  
Vol 18 (6) ◽  
pp. 1945 ◽  
Author(s):  
Xiao Ma ◽  
Chuang Lin ◽  
Han Zhang ◽  
Jianwei Liu

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