Fuzzy Logic based High Speed Network Congestion Control

In this paper, we describe the formatting guidelines for IJCA Journal Submission. Congestion is the problem that occurs due to saturation of network resources. Still the implementation of traditional congestion control algorithms such as OSI Layer 4 Transmission Control Protocol/ Internet Protocol (TCP / IP), due Objected Oriented congestion remains a critical issue in Local Network, ATM networks and SONET. Fuzzy Logic is applied to resolve the network traffic control problem as medium of networks are too difficult using traditional control system theory. Fuzzy Logic based congestion control good result the traditional methods in various cases. It is the first time that an explicit rate-based congestion control system designed with the fuzzy logic control is proved globally asymptotically stable. This Paper is a review of Fuzzy Logic and Neural-Fuzzy based techniques that applied to deal with congestion. Fuzzy Logic based Congestion Controller is a model free controller that utilizes qualitative reasoning to implement non-linear control functions efficiently.

[1]  David W. Petr,et al.  Self-tuning fuzzy traffic rate control for ATM networks , 1996, Proceedings of ICC/SUPERCOMM '96 - International Conference on Communications.

[2]  Andreas Pitsillides,et al.  Fuzzy backward congestion notification (FBCN) congestion control in asynchronous transfer mode (ATM) networks , 1995, Proceedings of GLOBECOM '95.

[3]  A. Benzaouia,et al.  RATE-BASED FLOW FUZZY CONTROLLER FOR COMMUNICATION SYSTEMS* , 2003 .

[4]  Andreas Pitsillides,et al.  Fuzzy explicit marking: A unified congestion controller for Best-Effort and Diff-Serv networks , 2009, Comput. Networks.

[5]  Lotfi A. Zadeh,et al.  Fuzzy Logic , 2009, Encyclopedia of Complexity and Systems Science.

[6]  Shie-Jue Lee,et al.  A neural-fuzzy system for congestion control in ATM networks , 2000, IEEE Trans. Syst. Man Cybern. Part B.

[7]  Christian Borgelt,et al.  Computational Intelligence , 2016, Texts in Computer Science.

[8]  Bin Qiu,et al.  A predictive fuzzy logic congestion avoidance scheme , 1997, GLOBECOM 97. IEEE Global Telecommunications Conference. Conference Record.

[9]  Detlef Jensen B-ISDN Network Management by a Fuzzy Logic Controller , 1994, Fuzzy Days.

[10]  Christos Douligeris,et al.  Static vs. adaptive feedback congestion controller for ATM networks , 1995, Proceedings of GLOBECOM '95.

[11]  菅野 道夫,et al.  Industrial applications of fuzzy control , 1985 .

[12]  Andreas Pitsillides,et al.  Effective Control of Traffic Flow in ATM Networks Using Fuzzy Explicit Rate Marking. (FERM) , 1997, IEEE J. Sel. Areas Commun..

[13]  Michio Sugeno,et al.  Fuzzy Control of Model Car , 1985 .

[14]  Scott Shenker,et al.  Integrated Services in the Internet Architecture : an Overview Status of this Memo , 1994 .

[15]  Chung-Ju Chang,et al.  Design of a fuzzy traffic controller for ATM networks , 1996, TNET.

[16]  David W. Pyle Intelligence: an Introduction , 1979 .

[17]  Andreas Pitsillides,et al.  Fuzzy logic based Congestion control , 1999 .

[18]  Chung-Ju Chang,et al.  Traffic control in an ATM network using fuzzy set theory , 1994, Proceedings of INFOCOM '94 Conference on Computer Communications.