Author:
Harjunkoski Iiro,Ikonen Teemu
Reference18 articles.
1. Advances in surrogate based modeling, feasibility analysis, and optimization: A review;Bhosekar;Computers and Chemical Engineering,2018
2. Industrial demand side management of a steel plant considering alternative power modes and electrode replacement;Castro;Industrial and Engineering Chemistry Research,2020
3. Harjunkoski, I., Ikonen, T., Mostafaei, H., Deneke, T., and Heljanko, K. (2020). Synergistic and intelligent process optimization: First results and open challenges. Industrial and Engineering Chemistry Research, 59(38), 16684-16694https://developer.ibm.com/docloud/blog/2019/11/28/using-machine-learning-in-cplex-12-10/ https://www.gurobi.com/resource/integrating-machine-learning-with-mathematical-optimization-resource-matching/
4. A deep reinforcement learning approach for chemical production scheduling;Hubbs;Computers & Chemical Engineering,2020
5. Hubbs, C.D., Perez, H.D., Sarwar, O., Sahinidis, N.V., Grossmann, I.E., & Wassick, J.M. (2020b). OR-Gym: A Reinforcement Learning Library for Operations Research Problem. ArXiv, abs/2008.06319.