IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Feedback-Based Resource Utilization for Smart Home Automation in Fog Assistance IoT-Based Cloud

Feedback-Based Resource Utilization for Smart Home Automation in Fog Assistance IoT-Based Cloud
View Sample PDF
Author(s): Basetty Mallikarjuna (Galgotias University, Greater Noida, India)
Copyright: 2020
Volume: 3
Issue: 1
Pages: 23
Source title: International Journal of Fog Computing (IJFC)
Editor(s)-in-Chief: Sam Goundar (Victoria University of Wellington, New Zealand)and Kashif Munir (National College of Business Administration & Economics, Pakistan)
DOI: 10.4018/IJFC.2020010103

Purchase

View Feedback-Based Resource Utilization for Smart Home Automation in Fog Assistance IoT-Based Cloud on the publisher's website for pricing and purchasing information.

Abstract

In this article, the proposed feedback-based resource management approach provides data processing, huge computation, large storage, and networking services between Internet of Things (IoT)-based Cloud data centers and the end-users. The real-time applications of IoT, such as smart city, smart home, health care management systems, traffic management systems, and transportation management systems, require less response time and latency to process the huge amount of data. The proposed feedback-based resource management plan provides a novel resource management technique, consisting of an integrated architecture and maintains the service-level agreement (SLA). It can optimize energy consumption, response time, network bandwidth, security, and reduce latency. The experimental results are tested with the IFogSim tool kit and have proved that the proposed approach is effective and suitable for smart communication in IoT-based cloud.

Related Content

William Tichaona Vambe. © 2023. 16 pages.
Yee-Ming Chen, Chung-Hung Hsieh. © 2022. 11 pages.
Nitin Rathore, Anand Rajavat. © 2022. 18 pages.
Yee-Ming Chen, Chung-Hung Hsieh. © 2022. 14 pages.
Hewan Shrestha, Puviyarai T., Sana Sodanapalli, Chandramohan Dhasarathan. © 2021. 17 pages.
Kelly M. Torres, Aubrey Statti. © 2021. 19 pages.
Sana Sodanapalli, Hewan Shrestha, Chandramohan Dhasarathan, Puviyarasi T., Sam Goundar. © 2021. 15 pages.
Body Bottom