2021
DOI: 10.1007/s40747-021-00478-8
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An enhanced group teaching optimization algorithm for multi-product disassembly line balancing problems

Abstract: Big data have been widely studied by numerous scholars and enterprises due to its great power in making highly reliable decisions for various complex systems. Remanufacturing systems have recently received much attention, because they play significant roles in end-of-life product recovery, environment protection and resource conservation. Disassembly is treated as a critical step in remanufacturing systems. In practice, it is difficult to know the accurate data of end-of-life products such as disassembly time … Show more

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Cited by 24 publications
(1 citation statement)
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References 57 publications
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“…In the first paper, "An enhanced group teaching optimization algorithm for multi-product disassembly line balancing problems" [5], the authors investigated a stochastic multi-product disassembly line balancing problem with maximal disassembly profit while meeting disassembly time requirements to achieve the global optimization of disassembling multiple products simultaneously. They fitted the past collected data into stochastic distributions of parameters by applying big data technology, developed a chance-constrained programming model, and presented an enhanced group teaching optimization algorithm incorporating a stochastic simulation method to solve the model.…”
Section: Data-driven Process Schedulingmentioning
confidence: 99%
“…In the first paper, "An enhanced group teaching optimization algorithm for multi-product disassembly line balancing problems" [5], the authors investigated a stochastic multi-product disassembly line balancing problem with maximal disassembly profit while meeting disassembly time requirements to achieve the global optimization of disassembling multiple products simultaneously. They fitted the past collected data into stochastic distributions of parameters by applying big data technology, developed a chance-constrained programming model, and presented an enhanced group teaching optimization algorithm incorporating a stochastic simulation method to solve the model.…”
Section: Data-driven Process Schedulingmentioning
confidence: 99%