Research in warehouse optimization has gotten increased attention in the last few years due to e-commerce. The warehouse contains a waste range of different products. Due to the nature of the individual order, it is challenging to plan the picking list to optimize the material flow in the process. There are also challenges in minimizing costs and increasing production capacity, and this complexity can be defined as a multidisciplinary optimization problem with an IDF nature. In recent years the use of parallel computing using GPGPUs has become increasingly popular due to the introduction of CUDA C and accompanying applications in, e.g., Python. In the case study at the company in the field of retail, a case study including a system design optimization (SDO) resulted in an increase in throughput with well over 20% just by clustering different categories and suggesting in which sequence the orders should be picked during a given time frame. The options provided by implementing a distributed high-performance computing network based on GPUs for subsystem optimization have shown to be fruitful in developing a functioning SDO for warehouse optimization. The toolchain can be used for designing new warehouses or evaluating and tuning existing ones.
翻译:过去几年来,由于电子商务,仓储优化研究日益受到重视。仓库含有不同产品的废物系列。由于个别订单的性质,规划挑选清单以优化流程中的物质流动也具有挑战性。在最大限度地降低成本和提高生产能力方面也存在挑战,这种复杂性可被界定为以色列国防军性质下的多学科优化问题。近年来,由于采用CUDA C和在Python公司中附带应用,使用GPGPPPUs的平行计算越来越受欢迎。在零售领域的公司案例研究中,包括系统设计优化(SDO)在内的案例研究导致吞吐量增加超过20%,只是通过将不同类别集中起来,并建议在一定的时间框架内应当按何种顺序来选择订单。在子系统优化使用GPUs的基础上实施分布式的高性能计算网络,在开发一个运转正常的仓库优化SDO方面已经显示出成效。工具链可用于设计新的仓库或评估和调整现有仓库。