Single-Machine Scheduling with Simultaneous Learning Effects and Delivery Times
Zheng Liu, Ji‐Bo Wang
Abstract
This paper studies the single-machine scheduling problem with truncated learning effect, time-dependent processing time, and past-sequence-dependent delivery time. The delivery time is the time that the job is delivered to the customer after processing is complete. The goal is to determine an optimal job schedule to minimize the total weighted completion time and maximum tardiness. In order to solve the general situation of the problem, we propose a branch-and-bound algorithm and other heuristic algorithms. Computational experiments also prove the effectiveness of the given algorithms.
Topics & Concepts
Computer scienceLearning effectScheduling (production processes)Artificial intelligenceEngineeringOperations managementEconomicsMicroeconomicsScheduling and Optimization AlgorithmsOptimization and Search ProblemsAdvanced Manufacturing and Logistics Optimization