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Meteomatics' Weather Data: Aiding Swiss Aerospace Engineers in Rocket Launch and Recovery
技术
- 基础设施即服务 (IaaS) - 备份与恢复
- 传感器 - 全球定位系统
适用行业
- 航天
- 可再生能源
适用功能
- 产品研发
用例
- 智慧校园
- 虚拟培训
服务
- 系统集成
- 培训
挑战
瑞士学术空间计划 (ARIS) 是一个教育协会,由苏黎世瑞士联邦理工学院 (ETH-Zurich) 的学生于 2017 年创立,正在为不断增长的航空航天市场培训未来的工程师和项目经理。该协会目前包括来自瑞士六所不同大学的学生,其目标是在未来十年内使用内部开发的双液体发射器将一颗小型卫星送入轨道。为了实现这一目标,ARIS需要进行在轨实验和研究,并定期与其他航空航天工程学生组织一起参加国际比赛。然而,航天器的发射和回收受到地球天气条件的显着影响,包括温度、风速和风向、降雨、冰雹、闪电、云层和电场。 ARIS 需要准确的天气数据来进行飞行模拟、评估发射区域的初始条件并估计火箭的最高高度、着陆位置以及地面人员的危险区域。
关于客户
瑞士学术空间倡议 (ARIS) 是一个教育协会,由来自苏黎世联邦理工学院、苏黎世应用科学大学、苏黎世大学、卢塞恩应用科学与艺术大学、苏黎世艺术大学和苏黎世大学的约 400 名学生组成。拉珀斯维尔应用科学大学。学生们自愿共同开发运载火箭、回收系统、卫星和其他太空相关技术领域的航空航天技术。他们参加国际学生竞赛,目标是在未来十年内使用内部开发的双液体发射器将一颗小型卫星送入轨道。
解决方案
天气数据提供商 Meteomatics 介入支持 ARIS 的项目。 2022 年,Meteomatics 通过为两个主要项目 Helvetia 和 Periphas 提供天气数据来赞助 ARIS。 Helvetia 项目的目标是将 4 公斤的有效载荷飞行到 9 公里,并在太空港美洲杯比赛期间安全回收所有部件以供重复使用,该团队使用 Meteomatics 天气 API 的数据来监测发射地点的大气状况、日期,以及轨迹模拟的时间。他们在准备过程中利用历史数据评估首次发射的危险区域,并参考比赛前几天的预测来估计火箭将在哪里着陆以及飞多高。 Periphas 项目旨在设计、测试、实施和发射制导回收系统,火箭从发射到着陆的轨迹是使用 Meteomatics 的风数据计算的。
运营影响
数量效益
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