Exceptionnel

2016
Hatem, Mezache. 2016. “Kernel Principal Components Analysis with Extreme Learning Machines for Wind Speed Prediction.”. IREC2016 Seventh International Renewable Energy Congress. Publisher's Version Abstract
Nowadays, wind power andprecise forecasting are of great importancefor the development ofmodern electricalgrids.In this paperwepropose aprediction systemfor time seriesbased onKernelPrincipalComponent Analysis(KPCA) andExtremeLearningMachine(ELM). To compare the proposed approach, threedimensionality reduction techniques were used:full space (50 variables), part of space (last four variables) and classical Principal Components Analysis (PCA). These models were compared using three evaluation criteria: mean absoluteerror (MAE), root mean squareerror (RMSE), and normalizedmean square error (NMSE). The results show that the reduction of the original input space affectspositively the prediction output of the wind speed.Thus,It can be concluded that the non linear model (KPCA)model outperform the other reduction techniques in terms of prediction performance.
2015
Rezgui, Wail. 2015. “Smart diagnosis algorithm of the open-circuit fault in a photovoltaic generator, ISBN: 978-1-4799-8212-7”. CEIT, 2015 3rd International Conference on Control, Engineering & Information Technology. Publisher's Version Abstract
This article proposed a new smart diagnosis algorithm of the open-circuit fault in a PV generator. For the faults conventional diagnosis, it used the analysis of the actual operation parameters of the PV generator. For the faults smart diagnosis, it based on the optimization of SVM technique by the neural network for the classification of observations located on its margin. The resulting algorithm can ensure a better monitoring function of the open-circuit fault within the PV generator, with a high classification rate and a low error rate.