技术
- 网络与连接 - 全球导航卫星系统 (GNSS)
- 传感器 - 电表
适用行业
- 电网
- 可再生能源
用例
- 施工管理
- 基础设施检查
服务
- 系统集成
关于客户
Spottitt 是一家基于云的解决方案提供商,利用卫星数据和先进的人工智能模型为能源、公用事业和基础设施领域提供见解。该公司的服务对于识别输电网、管道和变电站等关键基础设施的潜在故障点,以及制定最大限度减少停机时间和降低灾难性损害风险的策略至关重要。 Spottitt 的监测服务套件涵盖广泛的需求,包括植被、第三方、管道泄漏、气候条件、生物多样性、土地和资产、运动、洪水、光伏和风场选择。
挑战
Spottitt 是一家基于云的解决方案提供商,利用卫星数据和先进的人工智能模型为能源、公用事业和基础设施领域提供见解。该公司的服务对于识别输电网、管道和变电站等关键基础设施的潜在故障点,以及制定最大限度减少停机时间和降低灾难性损害风险的策略至关重要。然而,热浪、严寒、暴雨、风暴等极端天气事件对基础设施造成重大威胁,导致设备损坏、停电、山火以及电网和公用管道的安全风险。此外,可再生能源系统的性能和效率取决于天气条件。因此,需要一种能够提供高分辨率天气信息的解决方案,以监测关键基础设施周围快速变化的天气和气候条件。
解决方案
为了应对这一挑战,Meteomatics 的天气数据被集成到 Spottitt 的气候条件监测模块中。这种集成为 Spottitt 的客户提供了高分辨率的天气信息,使他们能够监控其关键基础设施周围快速变化的天气和气候条件。 Spottitt 的气候条件监测模块使运营商能够定期了解影响其资产的环境条件。它利用卫星数据、人工智能技术和气象学的高分辨率天气数据来监测关键参数,包括风速、温度、降水、风向和阵风速度、相对湿度等。 Meteotics 的天气 API 收集并组合来自各种来源的数据,包括全球和区域天气模型、卫星图像、雷达和气象站。然后使用 Meteomatics 专有的 90 米缩小技术对数据进行后处理,以产生更高的局部精度。 Spottitt 从 Meteomatics 的天气 API 中检索历史天气数据的大型数据集,并将其直接摄取到 Spottitt Metrics Factory(也称为 Spottitt MF)中,该公司的分析系统。
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