Modelling Drying Time of Candesartan Cilexetil Powder Using Computational Intelligence Technique

Author:

Keskes Sonia1,Hentabli Mohamed1,Laidi Maamar2,Hanini Salah2

Affiliation:

1. Quality Control Laboratory, SAIDAL Complex, Médéa Unit, Médéa 26 000, Algeria; Laboratory of Biomaterials and Transport Phenomena (LBMPT), Faculty of Technology, University Yahia Fares of Médéa, Algeria

2. Laboratory of Biomaterials and Transport Phenomena (LBMPT), Faculty of Technology, University Yahia Fares of Médéa, Algeria

Abstract

The aim of this work was to use two computational intelligence techniques, namely, artificial neural network (ANN) and support vector regression (SVR), to model the drying time of a pharmaceutical powder Candesartan Cilexetil, which is used for arterial hypertension treatment and heart failure. The experimental data set used in this work has been collected from previously published paper of the drying kinetics of Candesartan Cilexetil using vacuum dryer and under different operating conditions. The comparison between the two models has been conducted using different statistical parameters namely root mean squared error (RMSE) and determination coefficient (R2). Results show that SVR model shows high accuracy in comparison with ANN model to predict the non-linear behaviour of the drying time using pertinent variables with {R2 = 0.9991, RMSE = 0.262} against {R2 = 0.998, RMSE = 0.339} for SVR and ANN, respectively.

Publisher

Croatian Society of Chemical Engineers/HDKI

Subject

General Chemical Engineering,General Chemistry

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