An efficient mechanism to determine a function for load distribution in fog computing based on the use of learning classification systems

An efficient mechanism to determine a function for load distribution in fog computing based on the use of learning classification systems


An efficient mechanism to determine a function for load distribution in fog computing based on the use of learning classification systems

نوع: Type: thesis

مقطع: Segment: masters

عنوان: Title: An efficient mechanism to determine a function for load distribution in fog computing based on the use of learning classification systems

ارائه دهنده: Provider: Bahare Hamidi Moheb

اساتید راهنما: Supervisors: Dr. Mahdi Abbasi

اساتید مشاور: Advisory Professors:

اساتید ممتحن یا داور: Examining professors or referees: Dr. Hatam Abdoli and Dr. Reza Mohammadi

زمان و تاریخ ارائه: Time and date of presentation: october 2022

مکان ارائه: Place of presentation: Amphitheater of the Faculty of Engineering

چکیده: Abstract: In recent years, the Internet of Things is one of the most popular technologies that facilitate new interactions between people and humans to increase the quality of life. With the rapid development of the Internet of Things, the fog computing model is emerging as an attractive solution for data processing of Internet of Things applications. In the fog environment, IoT applications are run by intermediate computing nodes in the fog as well as physical servers in cloud data centers. On the other hand, due to resource limitations, resource heterogeneity, dynamic nature and lack of energy, it is necessary to consider resource management and energy management issues as one of the challenging problems in fog computing. Recently, some researches have been done to create a balance between energy and cost in fog computing. In this research, while examining these approaches, an efficient method for approximating the load distribution function with two methods based on batch learning systems called XCSF and BCM-XCSF in fog processing nodes in order to optimize the previous approaches as much as possible and manage fog processing resources. These two methods differ in having a memory to store the best classifiers. Experiments indicate that these two methods, like XCS and BCM-XCS, have a suitable load distribution. These two methods, especially the BCM-XCSF method, in addition to reducing the computational overhead; It reduces the delay by about 60% and optimizes energy consumption..

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