- Current Position
-
Senior research associate in System Engineering Research Group at Brunel University London, UK.
Morad currently works on Horizon 2020 Z-Factor which focuses on zero defects in manufacturing systems. He is a member of IET.
- Research Areas
-
Real-Time Systems Modelling and optimisation, Machine Learning, Data Science and Engineering, Software/ Application Design and Development, instrumentation, and process control.
- Education
-
He received his PhD degree from Brunel University London in 2015. Over the years he has gained industrial experiences in industry and participated in numerous research projects.
- Publications
-
Journal:
- Morad Danishvar, Alireza Mousavi, Sebelan Danishvar (2019). The Genomics of Industrial Process through the Qualia of Markovian Behaviour, under review IEEE Transactions on Systems, Man and Cybernetics: Systems.
- Foivos Psarommatis, Morad Danishvar, Ali Mousavi, Dimitris Kiritsis (2019). Cost-Based Optimization of manufacturing Key Performance Indicators for Zero Defect Manufacturing, Under review at International Journal of Production Research.
- Morad Danishvar, Alireza Mousavi, Peter Broomhead (2018). EventiC: A Real-Time Unbiased Event-Based Learning Technique for Complex Systems, 2018 IEEE Transactions on Systems, Man and Cybernetics: Systems.
- Huang, Z., Li, M., Mousavi, A., Danishvar, M., & Wang, Z. (2018). EGEP: An Event Tracker Enhanced Gene Expression Programming for Data-Driven System Engineering Problems. IEEE Transactions on Emerging Topics in Computational Intelligence.
Conferences:
- Fadzil, F.Z.M., Mousavi, A. and Danishvar, M., 2019, January. Simulation of Event-Based Technique for Harmonic Failures. In 2019 IEEE/SICE International Symposium on System Integration (SII) (pp. 66-72). IEEE.
- Huang, Z., Angadi, V. C., Danishvar, M., Mousavi, A., & Li, M. (2018, November). Zero Defect Manufacturing of Micro semiconductors–An Application of Machine Learning and Artificial Intelligence. In 2018 5th International Conference on Systems and Informatics (ICSAI) (pp. 449-454). IEEE.
- M. Danishvar, V. Vasilaki, Z. Huang, E. Katsou, A. Mousavi (July 2018), Application of Data-Driven methods to Predict N2O Emission in Full-scale WWTPs, IEEE 16TH INTERNATIONAL CONFERENCE OF INDUSTRIAL INFORMATICS INDIN2018.
- V. Vasilaki, M. Danishvar, Z. Huang, A. Mousavi, Katsou, and (May 2017): Application of Event Based Real-Time Analysis for Long-Term N2O Monitoring in Full-Scale WWTPs, Frontiers International Conference on Wastewater Treatment and Modelling FICWTM 2017: Frontiers in Wastewater Treatment and Modelling pp 436-443.
- Morad Danishvar, Alireza Mousavi (2014): EventClustering for improved real-time Input Variable Selection and Data Modelling: 2014 IEEE Multi-conference in Systems and Control (MSC 2014), Antibes, France.