Intensive Energy Aware Mobile Computational Offloading using Machine Learning Strategies
J Amar Pratap Singh1, Anoop S2
1Dr. J Amar Pratap Singh, Professor, Department of CSE, NoorulIslam Centre for Higher Education, Thuckalay, Kumaracoil (Tamil Nadu), India.
2Anoop S, Research Scholar, Department of CSE, NoorulIslam Centre for Higher Education, Thuckalay, Kumaracoil (Tamil Nadu), India.
Manuscript received on 06 September 2019 | Revised Manuscript received on 15 September 2019 | Manuscript Published on 26 October 2019 | PP: 346-354 | Volume-8 Issue-11S2 September 2019 | Retrieval Number: K105609811S219/2019©BEIESP | DOI: 10.35940/ijitee.K1056.09811S219
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© The Authors. Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP). This is an open-access article under the CC-BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/)
Abstract: In the modern-world each and everyone needs a Smartphone to achieve their communication needs globally as well as an acceptable fact is mobile devices plays a vital role in individual’s life. Smartphones now-a-days are fully consumer-oriented, in which it contains a huge-variety of applications to provide service to its users. This case leads more computational power to the mobile devices as-well-as the processing ability of such devices are expected to be highly concentrated. The usage of multiple applications in simultaneous manner over mobile phones causes several issues to users such as poor-battery-lifetime, speed-issues, mobile-heating and so on. In this system, a novel’ and intelligent approach is proposed to solve the issues rising due to the computational abilities of mobile offloading as well as empirically proves the advantages of mobile offloading with remote servers. The term offloading explores a hidden meaning of remote accessibility, in which the mobile devices can process the storage mechanisms and computational-needs are in outside of the mobile device, so that the processing overhead of the mobile devices are highly reduced. This combination of Mobile Devices and Remote Server Manipulation is generally called as Mobile-Cloud-Computing. The term cloud refers the remote server, all the computational needs are performed over there and the resulting summaries are portrayed over the mobile devices within fraction of seconds.The accessing nature of cloud services usually follows an important strategy called Mobile-Crowdsensing, in which it also plays a major role in Cloud-Service Selection procedures. In which the Mobile-Crowdsensing effectively sense the crowd ratio of mobile-devices and share the resources of cloud to their requirements as-well-as the Mobile-Crowdsensing also analyze and predict the application processes of general-interest. The advancement of Machine learning strategies gives hand to this nature of handling such difficult process like remote data handling and processing. This paper explores a new machine learning based approach called, Intensive Energy-aware Mobile Computational Offloading Model (IEMCOM), which concentrates more on mobile offloading issues such as huge-data transfers, complex-mobile application processing-scenarios, network-interruptions and so on. A final outcome empirically proves the integration of mobile and cloud computing results good battery-lifetime, enhanced offloading-process and security as well.
Keywords: Off Loading, Mobile-Cloud-Computing, Machine Learning, Cloud Off Loading, Big Data, Context-Model, IEMCOM.
Scope of the Article: Machine Learning