Litcius/Paper detail

Leveraging mist and fog for big data analytics in <scp>IoT</scp> environment

Ibrahim M. El‐Hasnony, Reham R. Mostafa, Mohamed Elhoseny, Sherif Barakat

2020Transactions on Emerging Telecommunications Technologies21 citationsDOI

Abstract

Abstract Internet of Things (IoT) emerged as one of the leading technological advancements of our days. IoT generates enormous quantities of valuable data that need on time processing, resulting in reliable, and accurate decisions based on the Internet of Things vision. The quality of the generated data is inadequate, incomplete, uncertain, and produced from multiple sources. Although cloud servers can analyze and store enormous data, they need a lot of time to send full‐size data for storage and analysis as well as the high overhead they have that not satisfactory in many applications. This article provides a systematic way to review the IoT environment according to big data analytics together with limitations and challenges. Moreover, a cloud‐fog‐mist combination for handling IoT data concerning centralized and distributed data mining is explained. A proposed hybrid real‐time remote patient monitoring framework introduced that consists of the integration among the mist, fog, and cloud for healthcare treatment, which remote‐monitors patients continuously. In addition, Reduced‐Error Pruning tree (REPtree), MultiLayer Perceptron, naïve Bayes, and Sequential Minimal Optimization algorithms have applied to “Gas sensors for home activity monitoring” dataset to demonstrate the feasibility of traditional data mining algorithms to IoT data. The results showed that the REPtree algorithm achieved better accuracy against others with accuracy ranged between 90.66% and 93.6% according to the size of the data used in the study. Still, for the time metric, naive Bayes outperformed them with the lowest time between 1 and 18 seconds for building the model.

Topics & Concepts

Computer scienceMistCloud computingBig dataOverhead (engineering)AnalyticsData miningPruningServerMetric (unit)Internet of ThingsNaive Bayes classifierReal-time computingMachine learningComputer networkEmbedded systemOperating systemEngineeringAgronomyOperations managementSupport vector machineMeteorologyPhysicsBiologyIoT and Edge/Fog ComputingAir Quality Monitoring and ForecastingContext-Aware Activity Recognition Systems