Fuzzy Logic Tsukamoto for SARIMA On Automation of Bandwidth Allocation

Abstract

The wireless network is used in different fields to enhance information transfer between remote areas. In the education area, it can support knowledge transfer among academic member including lecturers, students, and staffs. In order to achieve this purpose, the wireless network is supposed to be well managed to accommodate all users. Department of Electrical Engineering and Information Technology UGM sets wireless network for its daily campus activity manually and monitor data traffic at a time then share it to the user. Thus, it makes bandwidth sharing becomes less effective. This study, build a dynamic bandwidth allocation management system which automatically determines bandwidth allocation based on the prediction of future bandwidth using by implementing Seasonal Autoregressive Integrated Moving Average (SARIMA) with the addition of outlier detection since the result more accurate. Moreover, the determination of fixed bandwidth allocation was done using Fuzzy Logic with Tsukamoto Inference Method. The results demonstrate that bandwidth allocations can be classified into 3 fuzzy classes from quantitative forecasting results. Furthermore, manual and automatic bandwidth allocation was compared. The result on manual allocation MAPE was 70,76% with average false positive value 56 MB, compared to dynamic allocation using Fuzzy Logic and SARIMA which has MAPE 38,9% and average false positive value around 13,84 MB. In conclusion, the dynamic allocation was more effective in bandwidth allocation than manual allocation.

Authors and Affiliations

Isna Alfi Bustoni, Adhistya Erna Permanasari, Indriana Hidayah, Indra Hidayatulloh

Keywords

Related Articles

A Study of Feature Selection Algorithms for Predicting Students Academic Performance

The main aim of all the educational organizations is to improve the quality of education and elevate the academic performance of students. Educational Data Mining (EDM) is a growing research field which helps academic in...

Need and Role of Scala Implementations in Bioinformatics

Next Generation Sequencing has resulted in the generation of large number of omics data at a faster speed that was not possible before. This data is only useful if it can be stored and analyzed at the same speed. Big Dat...

Intelligent Classification of Liver Disorder using Fuzzy Neural System

In this study, designed an intelligent model for liver disorders based on Fuzzy Neural System (FNS) models is considered. For this purpose, fuzzy system and neural networks (FNS) are explored for the detection of liver d...

Cluster Based Routing Protocols for Wireless Sensor Networks: An Overview

Energy consumption of nodes in Wireless Sensor Networks (WSNs) is a very critical issue, particularly in scenarios where the energy of nodes cannot be recharged. Optimal routing approaches play a key role in energy utili...

Three Layer Hierarchical Model for Chord

Increasing popularity of decentralized Peer-to-Peer (P2P) architecture emphasizes on the need to come across an overlay structure that can provide efficient content discovery mechanism, accommodate high churn rate and ad...

Download PDF file
  • EP ID EP241271
  • DOI 10.14569/IJACSA.2017.081147
  • Views 99
  • Downloads 0

How To Cite

Isna Alfi Bustoni, Adhistya Erna Permanasari, Indriana Hidayah, Indra Hidayatulloh (2017). Fuzzy Logic Tsukamoto for SARIMA On Automation of Bandwidth Allocation. International Journal of Advanced Computer Science & Applications, 8(11), 392-397. https://europub.co.uk/articles/-A-241271