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Rescheduling policies for large-scale task allocation of autonomous straddle carriers under uncertainty at automated container terminals
Affiliation:1. Logistics Research Center, Shanghai Maritime University, Shanghai 200135, China;2. School of Economics & Management, Shanghai University of Electric Power, Shanghai 200090, China;1. China Institute of FTZ Supply Chain, Shanghai Maritime University, Shanghai, PR China;2. Nanjing Metro Operation Co., Ltd., Nanjing, PR China;1. Department of Industrial Engineering, Lenjan Branch, Islamic Azad University, Isfahan, Iran;2. Mechanical and Manufacturing Engineering Department, Universiti Putra Malaysia (UPM), Selangor, Malaysia;3. Faculty of Manufacturing Engineering, Universiti Teknikal Malaysia Melaka (UTeM), Melaka, Malaysia
Abstract:This paper investigates replanning strategies for container-transportation task allocation of autonomous Straddle Carriers (SC) at automated container terminals. The strategies address the problem of large-scale scheduling in the context of uncertainty (especially uncertainty associated with unexpected events such as the arrival of a new task). Two rescheduling policies–Rescheduling New arrival Jobs (RNJ) policy and Rescheduling Combination of new and unexecuted Jobs (RCJ) policy–are presented and compared for long-term Autonomous SC Scheduling (ASCS) under the uncertainty of new job arrival. The long-term performance of the two rescheduling policies is evaluated using a multi-objective cost function (i.e., the sum of the costs of SC travelling, SC waiting, and delay of finishing high-priority jobs). This evaluation is conducted based on two different ASCS solving algorithms–an exact algorithm (i.e., branch-and-bound with column generation (BBCG) algorithm) and an approximate algorithm (i.e., auction algorithm)–to get the schedule of each short-term planning for the policy. Based on the map of an actual fully-automated container terminal, simulation and comparative results demonstrate the quality advantage of the RCJ policy compared with the RNJ policy for task allocation of autonomous straddle carriers under uncertainty. Long-term testing results also show that although the auction algorithm is much more efficient than the BBCG algorithm for practical applications, it is not effective enough, even when employed by the superior RCJ policy, to achieve high-quality scheduling of autonomous SCs at the container terminals.
Keywords:Rescheduling policy  Uncertainty  Optimisation  Task allocation  Autonomous straddle carriers  Automated container terminals
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