公司规模
Large Corporate
地区
- Europe
国家
- Germany
产品
- IBM System Storage TS7650G ProtecTIER Deduplication Gateway
- IBM System Storage TS3500 tape libraries
- IBM System Storage DS8800 series
- IBM Storwize V7000
- IBM Power 770
技术栈
- IBM i
- IBM DB2 for i
- IBM Backup, Recovery & Media Services for i
- IBM Domino
- SAP ERP
实施规模
- Enterprise-wide Deployment
影响指标
- Customer Satisfaction
- Productivity Improvements
- Cost Savings
技术
- 基础设施即服务 (IaaS) - 云存储服务
- 应用基础设施与中间件 - 数据库管理和存储
- 基础设施即服务 (IaaS) - 混合云
适用行业
- 建筑与基础设施
适用功能
- 离散制造
- 物流运输
用例
- 预测性维护
- 自动化制造系统
服务
- 系统集成
- 云规划/设计/实施服务
关于客户
VEKA AG 是门窗用聚氯乙烯 (PVC) 型材系统的领先生产商之一。该公司成立于 1969 年,总部位于德国森登霍斯特,如今已发展壮大,在三大洲拥有约 3,700 名员工。VEKA 设计、生产并向制造商交付零部件,制造商组装零部件并以自己的品牌销售最终产品。制造 PVC 是一个复杂且昂贵的过程,需要 VEKA 的生产线以恒定速度运行并保持精确的温度。因此,VEKA 的生产和物流系统需要不断访问数据,以确保产品生产出高质量并正确存储。
挑战
VEKA AG 是一家领先的门窗 PVC 型材系统生产商,由于数据量不断增加,其现有 IT 基础设施面临挑战。该公司的生产线需要不断访问数据,以确保高质量的生产和正确的存储。然而,公司产品组合的扩展导致数据量大幅增加,给现有的 IT 基础设施带来了压力。具体而言,业务关键型 SAP 系统的备份时间不断增加,增加了发生硬件故障时发生计划外停机或恢复缓慢的风险。在 SAP 系统不可用时生产的产品需要存放在某个地方,直到应用程序恢复在线,从而导致不必要的仓储成本和交货延迟。VEKA AG 需要最大限度地减少计划内和计划外停机时间,以提高产量和销售额。
解决方案
VEKA 决定部署 IBM System Storage TS7650G ProtecTIER 重复数据删除网关来存储其业务关键型 SAP 系统的备份,并部署 IBM Storwize V7000 设备用于后台存储。ProtecTIER 解决方案通过在分布于 15 个 IBM i 分区的多达 256 个虚拟驱动器上并行备份来加速来自 IBM Backup、Recovery & Media Services (BRMS) for i 软件的传入 IBM i 流。备份完成后,该解决方案将存档数据传输到 IBM System Storage TS3500 磁带库,以实现长期低成本的数据保留。VEKA 在三台 IBM Power 770 服务器上运行其业务关键型 SAP 系统和 IBM Domino 协作解决方案,其中一台用作沙箱来测试 SAP 应用程序的新功能和新版本。IBM Power 服务器运行 IBM i 操作系统。VEKA 使用 IBM Backup、Recovery & Media Services (BRMS) for i 软件管理备份。
运营影响
数量效益
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