技术
- 功能应用 - 计算机化维护管理系统 (CMMS)
- 平台即服务 (PaaS) - 设备管理平台
适用行业
- 设备与机械
- 医疗保健和医院
适用功能
- 设施管理
- 维护
用例
- 施工管理
- 资产跟踪
关于客户
本案例研究中的客户是一家拥有 300 个床位的医院,该医院正在寻求扩大其急诊科并使其现代化。医院有一个领导团队,正在使用扩建所需的办公区和会议室。医院拥有包括医院建设团队、设施团队、IT 和供应链在内的各种支持团队。医院还有一个房地产团队,负责谈判额外空间的租赁条款。该医院致力于确保其联网设备的安全,并将其设备集成到第三方无源网络监控应用程序中。
挑战
一家拥有 300 个床位的医院面临着扩大急诊科 (ED) 并使其现代化的挑战。此次扩建需要将急诊室迁至目前医院领导层使用的办公区和会议室。这构成了重大挑战,因为它需要领导团队的搬迁、额外空间的新租赁条款的谈判以及各个医院支持团队的协调。此外,医院必须确保他们管理的所有联网设备(称为操作技术 (OT))免受网络攻击。这是一个复杂的项目,需要仔细规划、协调和执行。
解决方案
医院利用 Nuvolo Space 产品来识别可以转移领导团队的未使用空间。房地产团队使用 Nuvolo Real Estate 产品协商新的优惠条款,为租赁协议增加额外空间。医院施工团队使用 Nuvolo Projects 产品向建筑公司和分包商发出必要的装修工程征求建议书。 Nuvolo HTM 资产管理 CMMS 用于盘点为急诊室购买的新临床设备,按照计划维护计划进行设置,并创建初始检查工单。设施团队使用 Nuvolo 设施维护 CMMS 来盘点新空间所需的资产,并为他们需要完成的工作分配工作订单。这些团队将其联网设备集成到第三方无源网络监控应用程序中,并使用 Nuvolo OT Security 产品来识别网络风险并在每台设备上建立响应协议。
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