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A stochastic online algorithm for unloading boxes from a conveyor line

机译:一种从输送线卸载箱的随机在线算法

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This article discusses the problem of unloading a sequence of boxes from a single conveyor line with a minimum number of moves. The problem under study is efficiently solvable with dynamic programming if the complete sequence of boxes is known in advance. In practice, however, the problem typically occurs in a real-time setting where the boxes are simultaneously placed on and picked from the conveyor line. Moreover, a large part of the sequence is often not visible. As a result, only a part of the sequence is known when deciding which boxes to move next. We develop an online algorithm that evaluates the quality of each possible move with a scenario-based stochastic method. Two versions of the algorithm are analyzed: in one version, the quality of each scenario is measured with an exact method, while a heuristic technique is applied in the second version. We evaluate the performance of the proposed algorithms using extensive computational experiments and establish a simple policy for determining which version to choose for specific problems. Numerical results show that the proposed approach consistently provides high-quality results, and compares favorably with the best known deterministic online algorithms. Indeed, the new approach typically provides results with relative gaps of 1-5% to the optimum, which is about 20-80% lower than those obtained with the best deterministic approach.
机译:本文讨论了从单个传送带线卸载一系列框的问题,最小数量的移动。如果提前已知的盒子齐全的盒子,则在研究下的问题是有效的。然而,在实践中,问题通常发生在实时设置中,其中盒子同时放置并从传送线拾取。此外,序列的大部分通常不可见。结果,当决定接下来移动哪个框时,只知道序列的一部分。我们开发了一种在线算法,通过基于场景的随机方法评估每个可能移动的质量。分析了两个版本的算法:在一个版本中,使用精确的方法测量每个方案的质量,而在第二个版本中应用启发式技术。我们使用广泛的计算实验评估所提出的算法的性能,并建立一个简单的策略,以确定为特定问题选择哪个版本。数值结果表明,所提出的方法一致地提供高质量的结果,并与最着名的确定性在线算法相比。实际上,新方法通常提供1-5%的相对差距的结果,最佳间隙比以最佳确定性方法获得的那些低约20-80%。

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