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Mirage Machines Enhances Simulation Capability with ANSYS
技术
- 分析与建模 - 数字孪生/模拟
- 机器人 - 拱架机器人
适用行业
- 建筑与基础设施
- 矿业
适用功能
- 产品研发
用例
- 数字孪生
- 虚拟现实
挑战
Mirage Machines 是一家为各行业生产便携式机器的制造商,在设计过程中面临着挑战。他们在设计过程的前端使用详细的结构模拟,以确保其解决方案的稳健性和无风险性质。然而,他们使用的有限元分析 (FEA) 模拟、SolidWorks® Professional 和 Premium 软件包存在局限性。这些软件包仅允许 Mirage 对单个零件和小型装配模型进行 FEA。最近的一个项目需要开发一个龙门架,该龙门架使用一系列磁铁来连接钢轨。最初的设计是采用贱金属,但要求发生了变化,包括一层油漆。这一变化引入了气隙,使磁铁的拉力减少了 40%。 Mirage 需要了解当手臂沿着基础导轨移动时,油漆厚度对磁铁拉力以及结构完整性的影响。
关于客户
Mirage Machines 是一家生产各种便携式机器的制造商。它们服务于多个行业,包括石油、天然气、发电、船舶建造和维修、采矿和建筑。他们的机器涵盖一系列应用,例如热攻丝、钻孔、攻丝、铣削、管道和套管切割、直线镗孔和定制要求。他们以致力于在设计过程的前端使用详细的结构模拟为客户提供稳健且无风险的解决方案而闻名。
解决方案
为了克服现有 FEA 软件的局限性,Mirage Machines 转向 ANSYS® Professional™ NLS、SolidWorks 的 ANSYS 几何接口和 ANSYS® DesignModeler™。第一步是将龙门装配体的几何形状从 Solidworks 导入 ANSYS DesignModeler。然后,使用 DesignModeler 准备用于仿真的几何形状。最后,利用ANSYS结构动力学软件对混合材料、车身类型和网格类型的装配进行了仿真。该解决方案极大地提高了仿真的准确性和性能,使该公司能够提高吞吐量并降低龙门设计的风险。
运营影响
数量效益
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