技术
- 传感器 - 空气污染传感器
- 传感器 - 环境传感器
适用行业
- 城市与自治市
- 运输
适用功能
- 质量保证
- 仓库和库存管理
用例
- 连续排放监测系统
- 室内空气质量监测
服务
- 测试与认证
关于客户
湾区空气质量管理区(Air District)是加州立法机构于 1955 年创建的一个区域性空气污染控制机构。空气区监管旧金山湾周围 9 个县的固定空气污染源,目标是实现维持州和国家环境空气质量标准。空气区负责与环境正义社区合作,制定和实施“以社区为中心”的战略,以减少受空气污染影响最严重的社区的暴露。西奥克兰被航空区选为第一个根据 AB617 进行评估的社区,因为它靠近周围的高速公路、奥克兰港、主要铁路站和重工业。
挑战
湾区空气质量管理区(Air District)成立于 1955 年,是美国第一个区域性空气污染控制机构。尽管自实施以来区域空气质量显着改善,但旧金山湾区的一些社区由于靠近高速公路、繁忙的配送中心和大型工业设施等污染源,仍然面临较高的污染水平。 2017 年,加州议会通过了第 617 号议会法案 (AB617),以减少受空气污染影响最严重的社区的暴露。西奥克兰被选为第一个根据 AB617 进行评估的社区,因为它靠近周围的高速公路、奥克兰港、主要铁路站和重工业。空气区与当地环境正义倡导者、社区成员、行业代表和其他利益相关者合作,成立了指导委员会来制定社区减排计划,称为西奥克兰行动计划。该行动计划的目标是通过采取有针对性的缓解策略,减少西奥克兰空气污染对健康的影响。
解决方案
Air District 与 Citilabs®(现属于 Bentley Systems)签订合同,获取阿拉米达县和康特拉科斯塔县的 Streetlytics 数据。 Streetlytics 是排放清单和建模分析所需的详细道路远程信息处理的唯一提供商。与其他来源结合使用的数据集用于制定详细的道路排放清单,包括准确的地理空间道路网络、每个道路段按季节、星期几和一天中的时间划分的平均车辆数、每个道路段每小时的平均车辆速度,以及巷道段特征。利用 Streetlytics 数据与 EMFAC2017 的排放因子和其他补充数据相结合,空气区能够制定详细的排放清单,其中包括沿西部每个道路连接的行驶废气、行驶损失、轮胎磨损、制动器磨损和重新悬浮的道路灰尘奥克兰。 2020 年,Air District 通过获取完整的旧金山湾区九县数据集扩大了 Streetlytics 数据的使用。这将使空气区能够在未来五年内根据 AB617 计划为湾区选定的其余社区制定详细的道路排放清单。
运营影响
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