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Trenitalia Enhances Rail System Efficiency with ANSYS Mechanical
技术
- 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) - 云存储服务
适用行业
- 建筑与基础设施
- 运输
适用功能
- 维护
- 产品研发
用例
- 自主运输系统
- 交通模拟
服务
- 系统集成
- 测试与认证
挑战
意大利铁路运营商 Trenitalia 在管理该国铁路运输系统的开发、建设和维护方面面临着挑战。 Trenitalia 技术和研究部使用 ANSYS Mechanical 进行设计优化、应力强度结构检查和维护工程规划。然而,对更大分析模型和更短计算机响应时间的需求促使 Trenitalia 评估新的计算解决方案。他们必须克服的主要问题包括由于 32 位有限元程序使用的实际内存量而导致的模型大小限制、使用单处理器平台导致的较长求解时间以及内存和存储子系统中的硬件架构瓶颈。 -增加求解时间的系统。为了解决这些问题,Trenitalia 开始研究 64 位技术,其效率要求建议采用可扩展的 SMP 架构。
关于客户
Trenitalia 是意大利主要的铁路运营商,负责管理该国铁路运输系统的开发、建设和维护。该公司的技术和研究部门采用先进技术为意大利铁路机队进行设计优化、应力强度结构检查和维护工程规划。该部门与信息技术部门合作,提高机械应力模拟能力和效率,并克服与模型大小、求解时间和硬件架构瓶颈相关的挑战。
解决方案
Trenitalia 评估了基于 PC 的 AMD™ 64/EM64T 系统的 x86-64 技术,以应对其挑战。 AMD 处理器产生了良好的数学结果,全双工星形拓扑工作站平台将千兆字节的数据移入内存和存储子系统,或从内存和存储子系统移出千兆字节的数据。使用 ANSYS Mechanical 来解决一些实际生产测试模型的基准测试研究导致选择 Microsoft® Windows x64 Edition 操作系统,因为它的解决速度和性能效率。适用于 Windows x64 的 ANSYS 本机 64 位版本提供了双向 Win x64 SMP 工作站所需的分析软件,能够支持至少 16 GB 内存以及低延迟内存和存储子系统。高效求解百万自由度模型的成功尤其要归功于符合 ANSYS 并行标准的高性能稀疏求解器。
运营影响
数量效益
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