Towards Resilient and Sustainable Global Industrial Systems: An Evolutionary-Based Approach
By: Václav Jirkovský , Jiří Kubalík , Petr Kadera and more
Potential Business Impact:
Designs factories that save money and the planet.
This paper presents a new complex optimization problem in the field of automatic design of advanced industrial systems and proposes a hybrid optimization approach to solve the problem. The problem is multi-objective as it aims at finding solutions that minimize CO2 emissions, transportation time, and costs. The optimization approach combines an evolutionary algorithm and classical mathematical programming to design resilient and sustainable global manufacturing networks. Further, it makes use of the OWL ontology for data consistency and constraint management. The experimental validation demonstrates the effectiveness of the approach in both single and double sourcing scenarios. The proposed methodology, in general, can be applied to any industry case with complex manufacturing and supply chain challenges.
Similar Papers
A Multi-objective Optimization Approach for Feature Selection in Gentelligent Systems
Neural and Evolutionary Computing
Makes factories smarter to fix problems faster.
A Reinforced Evolution-Based Approach to Multi-Resource Load Balancing
Neural and Evolutionary Computing
Improves computer learning by copying nature.
Optimization Problem Solving Can Transition to Evolutionary Agentic Workflows
Optimization and Control
Computers solve tough problems without human help.