Container Relocation Problem: Approximation, Asymptotic, and Incomplete Information
May 16, 2015 Β· Declared Dead Β· π arXiv.org
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Authors
Setareh Borjian, Virgile Galle, Vahideh H. Manshadi, Cynthia Barnhart, Patrick Jaillet
arXiv ID
1505.04229
Category
cs.DS: Data Structures & Algorithms
Citations
18
Venue
arXiv.org
Last Checked
3 months ago
Abstract
The Container Relocation Problem (CRP) is concerned with finding a sequence of moves of containers that minimizes the number of relocations needed to retrieve all containers respecting a given order of retrieval. While the problem is known to be NP-hard, certain algorithms such as the A* search and heuristics perform reasonably well on many instances of the problem. In this paper, we first focus on the A* search algorithm, and analyze lower and upper bounds that are easy to compute and can be used to prune nodes. Our analysis sheds light on which bounds result in fast computation within a given approximation gap. We present extensive simulation results that improve upon our theoretical analysis, and further show that our method finds the optimum solution on most instances of medium-size bays. On "hard" instances, our method finds an approximate solution with a small gap and within a time frame that is fast for practical applications. We also study the average-case asymptotic behavior of the CRP where the number of columns grows. We calculate the expected number of relocations in the limit, and show that the optimum number of relocations converges to a simple and intuitive lower-bound. We further study the CRP with incomplete information by relaxing the assumption that the order of retrieval of all containers are initially known. This assumption is particularly unrealistic in ports without an appointment system. We assume that the retrieval order of a subset of containers is known initially and the retrieval order of the remaining containers is observed later at a given specific time. Before this time, we assume a probabilistic distribution on the retrieval order of unknown containers. We combine the A* algorithm with sampling technique to solve this two-stage stochastic optimization problem. We show that our algorithm is fast and the error due to sampling and pruning is reasonably small.
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