Chance Constrained Programming Model for Stochastic Profit-Oriented Disassembly Line Balancing in the Presence of Hazardous Parts - Mines Saint-Étienne
Communication Dans Un Congrès Année : 2013

Chance Constrained Programming Model for Stochastic Profit-Oriented Disassembly Line Balancing in the Presence of Hazardous Parts

Résumé

A Stochastic Partial profit-oriented Disassembly Line Balancing Problem (SP-DLBP) in the presence of hazardous parts is considered. The goal is to assign disassembly tasks of the best selected disassembly alternative to a sequence of workstations while respecting precedence and cycle time constraints. An AND/OR graph is used to model the disassembly alternatives and the precedence relations among tasks. Task times are assumed independent random variables with known normal probability distributions. Cycle time constraints are to be satisfied with at least a certain probability level fixed by the decision maker. The objective is to maximize the profit produced by the line. It is computed as the difference between the positive revenue generated by retrieved parts and the line operation cost considered as negative revenue. The line cost includes the workstations operation costs as well as additional costs of workstations handling hazardous parts of End of Life (EOL) product. To deal with uncertainties, a Chance Constrained Programming formulation is developed.
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emse-00880909 , version 1 (02-02-2017)

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Mohand Lounes Bentaha, Olga Battaïa, Alexandre Dolgui. Chance Constrained Programming Model for Stochastic Profit-Oriented Disassembly Line Balancing in the Presence of Hazardous Parts. 20th Advances in Production Management Systems (APMS), Sep 2013, State College, PA, United States. pp.103-110, ⟨10.1007/978-3-642-41266-0_13⟩. ⟨emse-00880909⟩
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