A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions
Jiawen Xu(Huawei Technologies (Germany)), Sergio Lucia(TU Dortmund University), Matthias Kovatsch(Huawei Technologies (Germany)), Denny Mattern(Fraunhofer Institute for Open Communication Systems), Filippo Mazza(Huawei Technologies (Germany)), Marko Harasic(Fraunhofer Institute for Open Communication Systems), Adrian Paschke(Fraunhofer Institute for Open Communication Systems)
Cited by 60
Related Papers
Multi-stage nonlinear model predictive control applied to a semi-batch polymerization reactor under uncertainty
|Journal of Process Control|2013|347
Efficient Representation and Approximation of Model Predictive Control Laws via Deep Learning
|IEEE Transactions on Cybernetics|2020|290
Handling uncertainty in economic nonlinear model predictive control: A comparative case study
|Journal of Process Control|2014|168
Rapid development of modular and sustainable nonlinear model predictive control solutions
|Control Engineering Practice|2016|137
Deep Learning-Based Model Predictive Control for Resonant Power Converters
|IEEE Transactions on Industrial Informatics|2020|117