Journal of Engineering and Applied Sciences

Year: 2017
Volume: 12
Issue: 11
Page No. 2788 - 2794

Hybrid Neural Network: A Computational Intelligent Model for Solid Waste Landfilling Suitability Mapping

Authors : Sohaib K.M. Abujayyab, Najat Qader Omar, Hamidi Abdul Aziz, Mohd Sanusi S. Ahamad, Ahmad Shukri Yahya, Mutasem Sh. Alkhasawneh and Siti Zubaidah Ahmad

Abstract: This research introduce hybrid network (HRCFNN) for solid waste landfilling suitability mapping. It is a grouping between the recurrent neural network and cascade forward neural network. The optimum structure chosen search via several use cases. Moreover, the accomplished performance exposed that the HRCFNN has no overfitting problem. The suitability index map produced using final structure of the trained HRCFNN. The last outcomes of HRCFNN prove its robustness and the applicability of it for further application in the long-term plan developments of solid waste landfill sites.

How to cite this article:

Sohaib K.M. Abujayyab, Najat Qader Omar, Hamidi Abdul Aziz, Mohd Sanusi S. Ahamad, Ahmad Shukri Yahya, Mutasem Sh. Alkhasawneh and Siti Zubaidah Ahmad, 2017. Hybrid Neural Network: A Computational Intelligent Model for Solid Waste Landfilling Suitability Mapping. Journal of Engineering and Applied Sciences, 12: 2788-2794.

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