Dino Isa

Work place: Department of Electrical and Electronic Engineering, Faculty of Engineering, University of Nottingham, Malaysia Campus, Jalan Broga, 43500, Semenyih, Selangor

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Research Interests: Computational Learning Theory

Biography

Dino Isa To date Prof. Isa has won eight research contracts worth about RM 7,000,000 while at the University. His research interest lies in the application of Machine Learning techniques for problems which currently include Oil and gas pipeline riser failure prediction (Perisai Petroliam Research grant :- RM 70,000, (eScience 01-02-12-SF0035 :- RM 118,000 in 2008), Automobile driver behavior monitoring (eScience 01-02-12-SF0036 :- RM95,000 in 2008), SVM based battery supercapacitor energy management system for electric vehicles (eScience 01-02-SF0095:- RM95,000 in 2010) and for Super-capacitor Pilot plant Manufacturing and solar systems (2 Technofunds :- TF0106D212 and TF0908D098) :- RM 4,026,400and RM2,450,000 respectively awarded in 2007 and 2008). A PRGS grant was won in 2011 worth RM118200 for battery rejuvenation.

Author Articles
Reducing Support Vector Machine Classification Error by Implementing Kalman Filter

By Muhsin Hassan Dino Isa Rajprasad Rajkumar Nik Ahmad Akram Roselina Arelhi

DOI: https://doi.org/10.5815/ijisa.2013.09.02, Pub. Date: 8 Aug. 2013

The aim of this is to demonstrate the capability of Kalman Filter to reduce Support Vector Machine classification errors in classifying pipeline corrosion depth. In pipeline defect classification, it is important to increase the accuracy of the SVM classification so that one can avoid misclassification which can lead to greater problems in monitoring pipeline defect and prediction of pipeline leakage. In this paper, it is found that noisy data can greatly affect the performance of SVM. Hence, Kalman Filter + SVM hybrid technique has been proposed as a solution to reduce SVM classification errors. The datasets has been added with Additive White Gaussian Noise in several stages to study the effect of noise on SVM classification accuracy. Three techniques have been studied in this experiment, namely SVM, hybrid of Discrete Wavelet Transform + SVM and hybrid of Kalman Filter + SVM. Experiment results have been compared to find the most promising techniques among them. MATLAB simulations show Kalman Filter and Support Vector Machine combination in a single system produced higher accuracy compared to the other two techniques.

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