Methods that use robust optimization are aimed at finding robustness to decision uncertainty. Uncertainty may affect the input parameters (problem) and the final solution. Robust optimization is applicable in many areas, such as: operational research, IT, energy, production engineering and others. The aim of the work was to indicate the main methods and examples of applications of robust optimization in the area of production engineering. Documents (articles and proceedings paper) indexed in the Web of Science-Core Collection database (WoSCC) from 2014-2018 were used for analysis. The search has been limited to the WoS-CC category: Engineering Industrial and Engineering Manufacturing. The main areas of application were: the scheduling of projects and tasks, production planning, and risk management. The most common methods were: linear programming, evolutionary algorithms, mixed integer programming, dynamic programming and many others.
CITATION STYLE
Knapczyk, A., Francik, S., Jewiarz, M., Mudryk, K., & Wróbel, M. (2019). Robust optimization in production engineering-methods and application. In E3S Web of Conferences (Vol. 132). EDP Sciences. https://doi.org/10.1051/e3sconf/201913201007
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