Litcius/Paper detail

Enhanced memetic search for reducing energy consumption in fuzzy flexible job shops

Pablo García Gómez, Inés González-Rodríguez, Camino R. Vela

2023Integrated Computer-Aided Engineering18 citationsDOIOpen Access PDF

Abstract

The flexible job shop is a well-known scheduling problem that has historically attracted much research attention both because of its computational complexity and its importance in manufacturing and engineering processes. Here we consider a variant of the problem where uncertainty in operation processing times is modeled using triangular fuzzy numbers. Our objective is to minimize the total energy consumption, which combines the energy required by resources when they are actively processing an operation and the energy consumed by these resources simply for being switched on. To solve this NP-Hard problem, we propose a memetic algorithm, a hybrid metaheuristic method that combines global search with local search. Our focus has been on obtaining an efficient method, capable of obtaining similar solutions quality-wise to the state of the art using a reduced amount of time. To assess the performance of our algorithm, we present an extensive experimental analysis that compares it with previous proposals and evaluates the effect on the search of its different components.

Topics & Concepts

Memetic algorithmMetaheuristicComputer scienceJob shop schedulingFuzzy logicMathematical optimizationEnergy consumptionLocal search (optimization)Scheduling (production processes)Harmony searchArtificial intelligenceEngineeringMathematicsScheduleOperating systemElectrical engineeringScheduling and Optimization AlgorithmsAdvanced Manufacturing and Logistics OptimizationMetaheuristic Optimization Algorithms Research
Enhanced memetic search for reducing energy consumption in fuzzy flexible job shops | Litcius