下载PDF
Alpega Group's Sustainable Transformation with Microsoft and Red Hat
技术
- 功能应用 - 运输管理系统 (TMS)
- 平台即服务 (PaaS) - 应用开发平台
适用行业
- 水泥
- 运输
适用功能
- 物流运输
- 采购
用例
- 交通模拟
- 车辆到基础设施 (V2I)
服务
- 系统集成
挑战
Alpega Group 是一家全球领先的物流软件公司,协调 80 个国家/地区的货运运输,与 80,000 家承运商和 200,000 名会员合作。这一复杂的操作依赖于该公司的运输管理系统(TMS)。然而,该公司面临系统可靠性和效率的挑战。系统故障可能会导致严重的延误和排队,影响全球的物流流程。该公司需要一种解决方案来确保其 TMS 平稳、持续运行,从而能够响应需求并相应地扩展其运营规模。我们面临的挑战是实施新的集装箱管理系统,该系统不仅可以提高运营的可靠性和效率,还可以帮助优化货运并在行业内创造更多的可持续性。
关于客户
Alpega Group 是一家全球领先的物流软件公司,提供涵盖所有运输需求的端到端解决方案。该公司与 80,000 家承运商和 200,000 名会员合作,协调 80 个国家/地区的货运。该公司运营的核心是 Alpega TMS,这是一种基于云的软件解决方案,可将制造商与广泛的物流提供商网络连接起来,实现复杂的供应链流程数字化。该公司的 TMS 树立了行业标准,在过去九年中一直被列入 Gartner 运输管理系统魔力象限。超过 500 名内部专家为 Alpega 的软件和服务用户提供 24/7 支持。
解决方案
Alpega Group 决定实施基于 Microsoft Azure Red Hat OpenShift 构建的新容器管理系统。这一变化提高了 Alpega 智能预订系统的敏捷性、灵活性和稳定性。 Microsoft Azure Red Hat OpenShift 是一个在 Kubernetes 之上运行的调度平台,允许企业在 Microsoft 和 Red Hat 这两个专家合作伙伴的支持下管理容器的编排。该解决方案使 Alpega 能够创建更加敏捷、灵活且安全的 TMS。当出现问题时,系统可以自我修复,并且可以扩展以适应增加的负载。该解决方案为 Alpega 提供了更大的灵活性,使他们能够扩大规模、缩小规模并有效管理流量。该系统还能自我修复,确保持续运行,不会对客户造成任何明显影响。
运营影响
数量效益
相关案例.
Case Study
System 800xA at Indian Cement Plants
Chettinad Cement recognized that further efficiencies could be achieved in its cement manufacturing process. It looked to investing in comprehensive operational and control technologies to manage and derive productivity and energy efficiency gains from the assets on Line 2, their second plant in India.
Case Study
Airport SCADA Systems Improve Service Levels
Modern airports are one of the busiest environments on Earth and rely on process automation equipment to ensure service operators achieve their KPIs. Increasingly airport SCADA systems are being used to control all aspects of the operation and associated facilities. This is because unplanned system downtime can cost dearly, both in terms of reduced revenues and the associated loss of customer satisfaction due to inevitable travel inconvenience and disruption.
Case Study
IoT-based Fleet Intelligence Innovation
Speed to market is precious for DRVR, a rapidly growing start-up company. With a business model dependent on reliable mobile data, managers were spending their lives trying to negotiate data roaming deals with mobile network operators in different countries. And, even then, service quality was a constant concern.
Case Study
Digitize Railway with Deutsche Bahn
To reduce maintenance costs and delay-causing failures for Deutsche Bahn. They need manual measurements by a position measurement system based on custom-made MEMS sensor clusters, which allow autonomous and continuous monitoring with wireless data transmission and long battery. They were looking for data pre-processing solution in the sensor and machine learning algorithms in the cloud so as to detect critical wear.
Case Study
Cold Chain Transportation and Refrigerated Fleet Management System
1) Create a digital connected transportation solution to retrofit cold chain trailers with real-time tracking and controls. 2) Prevent multi-million dollar losses due to theft or spoilage. 3) Deliver a digital chain-of-custody solution for door to door load monitoring and security. 4) Provide a trusted multi-fleet solution in a single application with granular data and access controls.
Case Study
Vehicle Fleet Analytics
Organizations frequently implement a maintenance strategy for their fleets of vehicles using a combination of time and usage based maintenance schedules. While effective as a whole, time and usage based schedules do not take into account driving patterns, environmental factors, and sensors currently deployed within the vehicle measuring crank voltage, ignition voltage, and acceleration, all of which have a significant influence on the overall health of the vehicle.In a typical fleet, a large percentage of road calls are related to electrical failure, with battery failure being a common cause. Battery failures result in unmet service agreement levels and costly re-adjustment of scheduled to provide replacement vehicles. To reduce the impact of unplanned maintenance, the transportation logistics company was interested in a trial of C3 Vehicle Fleet Analytics.