Business Intelligence Fog IoT node development model for Big Data processing of air quality in scientific partnerships

Date

2024-01-03

Contributor

Advisor

Department

Instructor

Depositor

Speaker

Researcher

Consultant

Interviewer

Narrator

Transcriber

Annotator

Journal Title

Journal ISSN

Volume Title

Publisher

Volume

Number/Issue

Starting Page

288

Ending Page

Alternative Title

Abstract

The aim of the current paper is to present a dynamic model of managing nodes of the Fog layer in Edge-Fog-Cloud systems of the Internet of Things in scientific partnerships. The article is a response to the problem of managing Fog nodes in IoT systems, where classic management mechanisms, based on schedules, become insufficient. It also addresses the problem of delays in data processing in the Cloud layer, which is significant and affects decision-making processes. Therefore, the authors propose a Business Intelligence model based on association rules that predict the number of agents of Fog layer nodes. This prediction allows for the design of nodes in which the requirements of the scientific partner (number of processor cores, RAM size, classifier type, number of processed records, classifier working time) are the basis for selecting the appropriate number of Fog node agents. The model was validated by using association rules to select the appropriate number of Fog node agents for the domain of air quality data processed in three scientific partnerships using different types of data classifiers.

Description

Keywords

Business Intelligence and Big Data for Innovative, Collaborative and Sustainable Development of Organizations in Digital Era, air quality data, association rules, big data, business intelligence, development of scientific partnerships, fog nodes, iot

Citation

Extent

10 pages

Format

Geographic Location

Time Period

Related To

Proceedings of the 57th Hawaii International Conference on System Sciences

Related To (URI)

Table of Contents

Rights

Attribution-NonCommercial-NoDerivatives 4.0 International

Rights Holder

Local Contexts

Email libraryada-l@lists.hawaii.edu if you need this content in ADA-compliant format.