公司规模
Large Corporate
国家
- Worldwide
产品
- eyeTrain On-board Digital Video Recording (DVR)
- dormakaba Camlock K31
- dormakaba Cabinet Locks K1074
技术栈
- Mechanical Locking Systems
- RFID Technology
实施规模
- Enterprise-wide Deployment
影响指标
- Customer Satisfaction
技术
- 网络安全和隐私 - 数据库安全
适用行业
- 铁路与地铁
适用功能
- 物流运输
用例
- 公共交通管理
服务
- 系统集成
关于客户
Petards Group 是运输、应急服务和国防领域的全球领导者和知名创新者。该公司拥有 50 多年的历史,以其高品质的产品和服务享有盛誉。Petards Group 多年来一直与 dormakaba 合作,为其为铁路行业生产的产品采用其高安全性机械锁定解决方案。该公司的产品专为铁路行业设计,超出了法律规定的环境和电力要求。
挑战
铁路部门需要高质量的安防和监控设备来提高乘客安全并提高乘客满意度。挑战在于找到一种既能满足法律规定的环境和电源要求,又能封装在定制的热机械防破坏机架式外壳中的解决方案。该解决方案还需要能够对警报和触发器做出反应,以在事故期间提高录制的帧速率,并安全保护录制内容以便日后检索。
解决方案
Petards 选择 Kaba 20 系列高安全性机械锁芯来保护 eyeTrain 车载数字视频录制 (DVR) 解决方案。dormakaba Camlock K31 和 Cabinet Locks K1074 均用于保护 Petards DVR 机柜。Kaba 20 的高置换容量构成了广泛的主钥匙系统的基础,该系统集成了多种锁定类型,例如 Camlocks、机柜锁、门锁和钥匙开关。该系统还可以通过在钥匙弓中加入 RFID 芯片与电子锁定或在线访问控制集成。
运营影响
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