适用行业
- 航天
关于客户
蓝色航空公司是巴西最大的航空公司,在全国 150 多个地点运营。该航空公司面临着在气候多样化且经常不稳定的地区管理运营的挑战,这可能导致航班延误、取消,甚至在极端情况下所有航班停飞。他们的运营安全和效率至关重要,他们需要准确、及时的天气信息来有效管理其运营。 Azul 的航班调度经理 Eduardo Pongeluppe 负责调整运营以应对不断变化的天气条件。
挑战
航空业受到天气条件变化的显着影响,尤其是在巴西等气候多样化的地区。这些不稳定的天气事件,包括强风、强降水和强烈风暴,可能会导致航班延误、取消,在极端情况下,可能导致所有航班停飞。巴西最大的航空公司蓝色航空公司在全国 150 多个地点运营,这使得监控和适应每个机场不断变化的天气条件成为一项挑战。其运营的安全性和效率至关重要,缺乏准确及时的天气信息可能会导致运营中断和潜在的安全风险。
解决方案
蓝色航空公司求助于 Tomorrow.io 的天气和气候安全平台来应对这一挑战。该平台提供有关天气条件变化的自动洞察和警报,使航空公司能够预测恶劣天气并做好准备。 Azul 的航班调度经理 Eduardo Pongeluppe 利用这些见解在恶劣天气袭来之前调整运营。当得知恶劣天气后,该团队会检查所有同时抵达的飞机,并为所有其他机场制定备用计划。这确保他们能够有效、安全地为客户、飞机和机组人员服务。根据天气条件调整操作的能力是 Tomorrow.io 提供的一项关键功能。
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