Storage Allocation Algorithm with Multi-Objective Optimization in High-Density Tridimensional Warehouse

Qiubo Huang, Shuda Xie, Guohua Liu
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Abstract

Storage allocation in a high-density tridimensional warehouse has more constraints and optimization objectives than that in a single or dual rack warehouse. As a result, algorithms for storage allocation in this kind of warehouse must be different. This paper mapped the storage allocation problem to the knapsack problem (KP) and introduced a dynamic programming (DP) algorithm to solve the problem. A penalty score strategy was defined for the DP algorithm, and the optimization objective is to minimize the penalty score while satisfying the constraints. A multi-index strategy was used for preprocess according to the constraints, and this strategy also helped to reduce the scale of DP algorithm. Finally, the simulation showed that the time complexity of DP algorithm was greatly reduced compared with depth-first-search based recursive algorithm. While compared with particle swarm optimization (PSO), DP algorithm can run faster in actual projects problem scale, and more importantly, DP can get the optimal solution, not a suboptimal one.
高密度三维仓库的多目标优化存储分配算法
高密度立体仓库的存储分配比单架或双架仓库有更多的约束和优化目标。因此,这类仓库的存储分配算法必然是不同的。本文将存储分配问题映射为背包问题,并引入动态规划算法求解该问题。定义了罚分策略,优化目标是在满足约束条件的情况下使罚分最小化。根据约束条件,采用多索引策略进行预处理,减小了DP算法的规模。最后,仿真结果表明,与基于深度优先搜索的递归算法相比,DP算法的时间复杂度大大降低。与粒子群算法(PSO)相比,DP算法在实际工程问题规模下运行速度更快,更重要的是,DP算法能够得到最优解,而不是次优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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