Open Access
Subscription Access
Open Access
Subscription Access
Multilayer Architecture of Parallel-Genetic-Fuzzy System:A Case of Effective Transportation for Co-Operatives in India
Subscribe/Renew Journal
The paper discusses broad architecture of parallel execution of genetic-fuzzy system by identifying limitations of the single minded traditional genetic algorithms. For additional advantages to manage uncertainty as well as other advantages related with fuzzy logic, fuzzification is also incorporated in the approach. The propose architecture of the hybrid genetic-fuzzy systems is experimented in the domain of dairy co-operatives and sample encoding, genetic operations, fitness functions and fuzzification are discussed for the case. An interface screen is also presented to demonstrate working of the prototype system. At end, advantages and future scope of the proposed work is presented.
Subscription
Login to verify subscription
User
Font Size
Information
- A.S. Wu, H. Yu, S. Jin, K.-C. Lin, G. Schiavone. (2004). An incremental genetic algorithm approach to multiprocessor scheduling. IEEE Trans. Parallel Distrib. Syst. 15 , 824-834.
- Akerkar R A and Sajja Priti Srinivas. (2009). Knowledge Based Systems. MA, USA: Jones & Bartlett Publishers.
- Bethke, A. (1976). Comparison of genetic algorithms and gradient-based optimizers on parallel processors:efficiency of use of processing capacity. Tech. Rep. No. 197, University of Michigan, Logic of Computers Group, Ann Arbor, MI.
- Cantu-Paz, E. (1997). Designing efficient master–slave parallel genetic algorithms. Technical L Report No. 97004, University of Illinois at Urbana-Champaign, Illinois Genetic Algorithms Laboratory, Urbana, IL.
- E. Alba, F. Luna, A.J. Nebro, J.M. Troya. ((2004) ). Parallel heterogeneous genetic algorithms for continuous optimization . Parallel Computing 30 , 699-719.
- Fatma A. Omaraa, Mona M. Arafa. (2010). Genetic algorithms for task scheduling problem . Journal of Parallel Distrib. Comput. 70 , 13-22.
- Grefenstette, J. (1981). Parallel adaptive algorithms for function optimization. Tech. Rep. No. CS-81-19, Vanderbilt University, Computer Science Department, Nashville, TN.
- José A. Moral-Muñoz, Manuel J. Cobo, Francisco Chiclana, Andrew Collop, and Enrique Herrera-Viedma. (2015). Analyzing Highly Cited Papers in Intelligent. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS , 1-9.
- Matthew Barth, Guoyuan Wu, and Kanok Boriboonsomsin . (March 2016). Intelligent Transportation Systems Show Promise in. National Centre for sustainable Transportation, Center for Environmental Research and Technology (CE-CERT) University of California, Riverside,.
- Mohammadreza Ghatreh Samani, Seyyed-Mahdi Hosseini-Motlagh. (vol 5, isssue 1, 2017 ). A Hybrid Algorithm for a Two-Echelon Location-Routing Problem with Simultaneous Pickup and Delivery under Fuzzy Demand. International Journal of Transportation Engineering.
- Tanese, R. (1989). Distributed genetic algorithm, . Proceedings of Third International Conference on Genetic algorithms , pp. 434-439.
- Tzung-Pei Hong, Yeong-Chyi Lee, Min-Thai Wu. (2014). An effective parallel approach for genetic-fuzzy data mining. Expert Systems with Applications, Volume 41, Issue 2 , 655-662.
- Zadeh, L. A. (1965). Fuzzy Sets. Information and Control, 338-358.
Abstract Views: 253
PDF Views: 6