技术
- 传感器 - 环境传感器
- 传感器 - 温度传感器
适用行业
- 汽车
- 可再生能源
适用功能
- 设施管理
- 销售与市场营销
用例
- 连续排放监测系统
服务
- 系统集成
- 培训
关于客户
丰田汽车欧洲公司(TME)是丰田汽车公司的欧洲运营子公司,总部位于比利时布鲁塞尔。它负责监督丰田在欧洲和西亚的业务,包括土耳其、俄罗斯、以色列、哈萨克斯坦和高加索地区。丰田于 20 世纪 60 年代首次登陆欧洲,此后将其业务扩展到欧洲大陆的每个角落。其业务包括制造工厂、物流中心、销售和营销业务、研发设施、培训和设计中心、世界一流的赛车运动业务以及数千家当地零售商。
挑战
丰田是一家领先的汽车公司,致力于减少碳足迹并保护环境。作为“丰田 2050 年环境挑战”的一部分,该公司的目标是减少二氧化碳排放、保护水资源、促进回收和保护生物多样性。重点关注领域之一是其欧洲工厂的运营部门,该公司的目标是消除二氧化碳排放并降低能源成本。挑战在于管理这些工厂的能源消耗,这些工厂的能源消耗直接受到外部温度、湿度和风等天气条件的影响。这些因素都会影响设施内的环境温度,必须保持环境温度稳定才能使设备正常运行。此外,随着工厂转向可再生能源,它们的供应能力对天气变化变得敏感。因此,准确的天气预报对于能源系统的有效规划至关重要。
解决方案
为了应对这一挑战,丰田与天气数据提供商 Meteomatics 合作。经过成功的试用期后,Meteomatics 成为丰田唯一的天气数据提供商。该公司的 API 无缝集成到丰田的系统中,可以实时访问所有欧洲设施的准确天气数据。这使得数据收集过程更加方便和高效,使丰田能够更快地工作并做出更精确的决策。通过访问历史数据,丰田可以对未来进行估计,作为设定设施能耗目标、改进现有系统以及确定要采用的最佳技术类型的基准。这使得丰田工程师能够优化他们的目标规划并量化潜在的能源减少和经济效益。
运营影响
数量效益
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