公司规模
Large Corporate
国家
- Worldwide
产品
- Blue Yonder warehouse management system
- Robotics Hub
- Microsoft Azure
技术栈
- Cloud Computing
- Artificial Intelligence
- Machine Learning
实施规模
- Enterprise-wide Deployment
影响指标
- Cost Savings
- Productivity Improvements
技术
- 平台即服务 (PaaS) - 连接平台
适用功能
- 仓库和库存管理
用例
- 仓库自动化
- 库存管理
服务
- 云规划/设计/实施服务
- 系统集成
关于客户
DHL 供应链是全球领先的第三方物流公司。该公司在 50 个国家和地区拥有超过 150,000 名员工,为全球客户提供卓越的供应链、仓储、运输和配送服务。作为其数字化转型战略的一部分,DHL 供应链旨在在全球 2000 个站点实施机器人和其他自动化解决方案。该公司致力于迅速建立其技术领先地位,并将自动化和机器人技术的结合视为实现这一目标的关键目标。
挑战
DHL Supply Chain 是一家领先的第三方物流公司,其使命是通过其加速数字化计划确立其技术领先地位。该计划的一个主要目标是将自动化和机器人技术融入全球 2000 多个站点。然而,从全球视角协调这一实施是一项重大挑战。该公司需要一种能够将一系列机器人技术与其现有的仓库管理系统 (WMS) 无缝集成的解决方案。
解决方案
DHL Supply Chain 与 Blue Yonder 合作开发了机器人中心,这是一种基于云的“即插即用”解决方案,可最大限度地缩短集成时间。该解决方案显著减少了将新自动化设备安装到仓库设施所需的时间和编程工作量。它利用 Microsoft Azure 和云平台服务来提供独特的速度和响应能力。机器人中心为机器人提供了一个单一的共享仪表板,使 DHL 员工可以立即查看仓库进度、检查关键任务的状态,并将实时工作订单更新反馈到他们的 WMS。DHL 的下一步是利用机器学习和人工智能来增强机器人中心,以最佳方式协调员工和机器人解决方案之间的物流所有任务。
运营影响
数量效益
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