Journal of Engineering and Applied Sciences

Year: 2017
Volume: 12
Issue: 12
Page No. 3124 - 3129

Fuzzy Logic Model for Flood Warning Expert System Integrating Multi-Agent and Ontology

Authors : Teh Noranis Mohd Aris, Maslina Zolkepli, Noraini Che Pa, Hazlina Hamdan and Shahrin Azuan Nazeer

References

Aris, T.M., 2011. Object-oriented programming semantics representation utilizing agents. J. Theor. Appl. Inf. Technol., 31: 10-20.
Direct Link  |  

Bell, D.A., A. Beck, P. Miller, Q.X. Wu and A. Herrera, 2007. Video mining-learning patterns of behaviour via an intelligent image analysis system. Proceedings of the 7th International Conference on Intelligent Systems Design and Applications (ISDA 2007), October 20-24, 2007, IEEE, Rio de Janeiro, Brazil, ISBN: 0-7695-2976-3, pp: 460-464.

Iantovics, B.L., 2012. Agent-based medical diagnosis systems. Comput. Inf., 27: 593-625.
Direct Link  |  

Ikram, A. and U. Qamar, 2015. Developing an expert system based on association rules and predicate logic for earthquake prediction. Knowl. Based Syst., 75: 87-103.
CrossRef  |  Direct Link  |  

Jang, J.S.R. and C.T. Sun, 1995. Neuro-fuzzy modeling and control. Proc. IEEE, 83: 378-406.
CrossRef  |  Direct Link  |  

Jiang, P., X. Liu, J. Zhang and X. Yuan, 2016. A framework based on hidden Markov model with adaptive weighting for microcystin forecasting and early-warning. Decis. Support Syst., 84: 89-103.
Direct Link  |  

Jun, K.S., E.S. Chung, Y.G. Kim and Y. Kim, 2013. A fuzzy multi-criteria approach to flood risk vulnerability in South Korea by considering climate change impacts. Expert Syst. Appl., 40: 1003-1013.
Direct Link  |  

Khataee, H.R., T.N. Aris and M.N. Sulaiman, 2012. Application of agent technology for modelling of muscle myosin nanomotor as a bio-nanorobotic system. J. Comput. Theor. Nanosci., 9: 2074-2081.
Direct Link  |  

Lopez, V.F., S.L. Medina and J.F. De Paz, 2012. Taranis: Neural networks and intelligent agents in the early warning against floods. Expert Syst. Appl., 39: 10031-10037.
Direct Link  |  

Lopez-Lorca, A.A., G. Beydoun, R. Valencia-Garcia and R. Martinez-Bejar, 2016. Supporting agent oriented requirement analysis with ontologies. Intl. J. Hum. Comput. Stud., 87: 20-37.
Direct Link  |  

Noranis, M.T. and N.S. Azuan, 2013. A multi-agent model for information processing in computational problem solving. Intl. J. Model. Optim., 3: 490-494.
Direct Link  |  

Rajabi, M., M. Aris and T. Noranis, 2014. A multi-agent system for computational problem solving-a review. Intl. J. Adv. Comput. Sci. Appl., 4: 174-178.
Direct Link  |  

Rani, M., R. Nayak and O.P. Vyas, 2015. An ontology-based adaptive personalized E-learning system, assisted by software agents on cloud storage. Knowl. Based Syst., 90: 33-48.
Direct Link  |  

Shu, C. and D.H. Burn, 2004. Homogeneous pooling group delineation for flood frequency analysis using a fuzzy expert system with genetic enhancement. J. Hydrol., 291: 132-149.
Direct Link  |  

Van Steenbergen, N., J. Ronsyn and P. Willems, 2012. A non-parametric data-based approach for probabilistic flood forecasting in support of uncertainty communication. Environ. Modell. Software, 33: 92-105.
Direct Link  |  

Wauters, M. and M. Vanhoucke, 2016. A comparative study of artificial intelligence methods for project duration forecasting. Expert Syst. Appl., 46: 249-261.
Direct Link  |  

Yang, S.Y. and Y.Y. Chang, 2011. An active and intelligent network management system with ontology-based and multi-agent techniques. Expert Syst. Appl., 38: 10320-10342.
CrossRef  |  Direct Link  |  

Yaskawa, S. and A. Sakata, 2003. The application of intelligent agent technology to simulation. Math. Comput. Modell., 37: 1083-1092.
Direct Link  |  

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved