An Exponential Active Queue Management Method Based on Random Early Detection

Congestion is a key topic in computer networks that has been studied extensively by scholars due to its direct impact on a network’s performance. One of the extensively investigated congestion control techniques is random early detection (RED). To sustain RED’s performance to obtain the desired resu...

Full description

Bibliographic Details
Main Author: Hussein Abdel-Jaber
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Journal of Computer Networks and Communications
Online Access:http://dx.doi.org/10.1155/2020/8090468
id doaj-28e79129fc834f96ab2fea58ff1a805a
record_format Article
spelling doaj-28e79129fc834f96ab2fea58ff1a805a2020-11-25T03:18:12ZengHindawi LimitedJournal of Computer Networks and Communications2090-71412090-715X2020-01-01202010.1155/2020/80904688090468An Exponential Active Queue Management Method Based on Random Early DetectionHussein Abdel-Jaber0Faculty of Computer Studies, Department of Information Technology and Computing, Arab Open University, Saudi ArabiaCongestion is a key topic in computer networks that has been studied extensively by scholars due to its direct impact on a network’s performance. One of the extensively investigated congestion control techniques is random early detection (RED). To sustain RED’s performance to obtain the desired results, scholars usually tune the input parameters, especially the maximum packet dropping probability, into specific value(s). Unfortunately, setting up this parameter into these values leads to good, yet biased, performance results. In this paper, the RED-Exponential Technique (RED_E) is proposed to deal with this issue by dropping arriving packets in an exponential manner without utilizing the maximum packet dropping probability. Simulation tests aiming to contrast E_RED with other Active Queue Management (AQM) methods were conducted using different evaluation performance metrics including mean queue length (mql), throughput (T), average queuing delay (D), overflow packet loss probability (PL), and packet dropping probability (DP). The reported results showed that E_RED offered a marginally higher satisfactory performance with reference to mql and D than that found in common AQM methods in cases of heavy congestion. Moreover, RED_E compares well with the considered AQM methods with reference to the above evaluation performance measures using minimum threshold position (min threshold) at a router buffer.http://dx.doi.org/10.1155/2020/8090468
collection DOAJ
language English
format Article
sources DOAJ
author Hussein Abdel-Jaber
spellingShingle Hussein Abdel-Jaber
An Exponential Active Queue Management Method Based on Random Early Detection
Journal of Computer Networks and Communications
author_facet Hussein Abdel-Jaber
author_sort Hussein Abdel-Jaber
title An Exponential Active Queue Management Method Based on Random Early Detection
title_short An Exponential Active Queue Management Method Based on Random Early Detection
title_full An Exponential Active Queue Management Method Based on Random Early Detection
title_fullStr An Exponential Active Queue Management Method Based on Random Early Detection
title_full_unstemmed An Exponential Active Queue Management Method Based on Random Early Detection
title_sort exponential active queue management method based on random early detection
publisher Hindawi Limited
series Journal of Computer Networks and Communications
issn 2090-7141
2090-715X
publishDate 2020-01-01
description Congestion is a key topic in computer networks that has been studied extensively by scholars due to its direct impact on a network’s performance. One of the extensively investigated congestion control techniques is random early detection (RED). To sustain RED’s performance to obtain the desired results, scholars usually tune the input parameters, especially the maximum packet dropping probability, into specific value(s). Unfortunately, setting up this parameter into these values leads to good, yet biased, performance results. In this paper, the RED-Exponential Technique (RED_E) is proposed to deal with this issue by dropping arriving packets in an exponential manner without utilizing the maximum packet dropping probability. Simulation tests aiming to contrast E_RED with other Active Queue Management (AQM) methods were conducted using different evaluation performance metrics including mean queue length (mql), throughput (T), average queuing delay (D), overflow packet loss probability (PL), and packet dropping probability (DP). The reported results showed that E_RED offered a marginally higher satisfactory performance with reference to mql and D than that found in common AQM methods in cases of heavy congestion. Moreover, RED_E compares well with the considered AQM methods with reference to the above evaluation performance measures using minimum threshold position (min threshold) at a router buffer.
url http://dx.doi.org/10.1155/2020/8090468
work_keys_str_mv AT husseinabdeljaber anexponentialactivequeuemanagementmethodbasedonrandomearlydetection
AT husseinabdeljaber exponentialactivequeuemanagementmethodbasedonrandomearlydetection
_version_ 1715253874757992448