Setiawan, Roy and Ganga, Ramakoteswara Rao and Velayutham, Priya and Thangavel, Kumaravel and Sharma, Dilip Kumar and Rajan, Regin and Krishnamoorthy, Sujatha and Sangan, Sudhakar (2021) Encrypted Network Traffic Classification and Resource Allocation with Deep Learning in Software Defined Network. [UNSPECIFIED]
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Abstract
The climate has changed absolutely in every area in just a few years as digitized, making high-speed internet service a significant need in the future. Future Internet is supposed to face exponential growth in traffic, and highly complicated infrastructure, threatening to make conventional NTC approaches unreliable and even counterproductive. In recent days, AI Stimulated state-of-the-art breakthroughs with the ability to tackle extensive and multifarious challenges, and the network community is initiated by considering the NTC prototype from legacy rule-based towards a novel AI-based. Design and execution are applied to interdisciplinary become more essential. A smart home network supports various applications and smart devices within the proposed work, including e-health devices, regular computing devices, and home automation devices. Many devices accessible through the Internet by Home GateWay for Congestion (HGC) in a smart home. Throughout this paper, a Software-Defined Network Home GateWay for Congestion (SDNHGC) architecture for improved management of remote smart home networks and protection of the significant networks SDN controller. It enables effective network capacity regulation, focused on real-time traffic analysis and core network resource allocation. It cannot control the Network in dispersed smart homes. Our innovative SDNHGC expands power across the connectivity network, a smart home network enabling improved end-to-end monitoring of networks. The planned SDNHGC directly will gain centralized device identification by classifying traffic through a smart home network. Several of the current traffic classifications approach, checking deep packets, cannot have this real-time device knowledge for encrypted data to solve this issue.
Item Type: | UNSPECIFIED |
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Uncontrolled Keywords: | Software-defined network · Traffic detection · Security · Deep learning · Data flow |
Subjects: | H Social Sciences > HD Industries. Land use. Labor > HD28 Management. Industrial Management |
Divisions: | Faculty of Economic > Business Management Program |
Depositing User: | Admin |
Date Deposited: | 29 Mar 2021 15:44 |
Last Modified: | 06 Apr 2021 03:37 |
URI: | https://repository.petra.ac.id/id/eprint/19047 |
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