M. Sc. Ibtihaj Faridi

Wiss. Mitarbeiter/-in

M.Sc. Ibtihaj Khurram Faridi

Lehrstuhl Thermische Verfahrenstechnik
Universitätsplatz 2, 39106 Magdeburg, G10-244
Vita

geboren 1990 in Hyderabad, Pakistan

March 2008 - February 2012
B.E Chemical Engineering, Dawood University of Engineering and Technology (DUET), Karachi, Pakistan.
Bachelor Thesis: Process simulation and optimization of Naptha Stabilizer and LPG recovery unit.

March 2012 – September 2013
Process Engineer, Ingredion Incorporated, Mehran Plant, Pakistan.

October 2013 – April 2016
MSc. Chemical Energy and Engineering, Otto-von-Guericke-Universität, Magdeburg, Germany.
Thesis: Analysis of the regenerative heat transfer and transient behavior of rotary kiln by using Computational Fluid Dynamics and Finite Element Methods

Seit November 2018
PhD Student, Chair of Thermal Process Engineering, Otto von Guericke University.

Forschungsschwerpunkte

Model predictive control of industrial processes is a field of active current research which implies that so as to optimize the operation of a process one needs to predict its state and future behavior by the analysis of measurement data. The prediction can be based on known physical and chemical relations. In addition to such knowledge-based modelling, machine learning algorithms that use artificial neural network analysis are increasingly used for the prediction of complicated processes, especially when sufficiently accurate physical models become too complex or are not available. A combination of both strategies, physical models and machine learning, can also be a promising way to enhance prediction.
The aim is to apply modern concepts and techniques of data analysis based on artificial neural networks, on the fluidized bed gasification plant at the Fraunhofer IFF, to analyze the correlation between various sensor data. The machine learning techniques require data from many sensors and over a longer period of operation. In the given case the database is not sufficient, CFD simulation models shall be used to provide artificial data to teach the machine learning algorithms.

Letzte Änderung: 11.03.2020 - Ansprechpartner: Webmaster