4.5 Article

Polynomial Time Algorithms to Minimize Total Travel Time in a Two-Depot Automated Storage/Retrieval System

期刊

TRANSPORTATION SCIENCE
卷 51, 期 1, 页码 19-33

出版社

INFORMS
DOI: 10.1287/trsc.2014.0562

关键词

automated storage and retrieval system; two depots; total travel time; traveling salesman problem; polynomial time algorithm

资金

  1. National Natural Science Foundation of China [71171058, 11371103]
  2. Erasmus Smartport Rotterdam
  3. National Science Foundation of China (NSFC) for Distinguished Youth Scholars [71225002]
  4. NSFC [71110107024, 71121061]

向作者/读者索取更多资源

We sequence storage and retrieval jobs to minimize total travel time of a storage/retrieval (S/R) machine in a two-depot automated storage/retrieval system. These systems include storage systems with aisle-captive S/R machines and storage blocks with bridge cranes. The S/R machine must move retrieval unit loads from their current locations in the system to one of the two depots. In addition, it must move storage unit loads from given depots to given locations in the system. We model the problem as an asymmetric traveling salesman problem, which is in general NP-hard. We develop an algorithm to solve the problem in polynomial time, using the property that the system has two depots and the S/R machine always returns to one of the depots to pick up or deliver a load. Furthermore, we develop additional polynomial time algorithms for the following four special cases: (1) retrieval loads have to be delivered to given depots; (2) the system has one input depot and one output depot; (3) the system has a single depot; and (4) there are arbitrary S/R machine starting and ending locations. The computational results show the effectiveness of the proposed algorithms. Compared to first-come-first-served and nearest neighbor algorithms, commonly used in practice, the total travel time reduces on average by more than 30% and 15%, respectively.

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