GeoBMS:用于建筑能源优化的混合云/本地架构

K. Krishnamurthy, P. Singh, N. Sriraman
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引用次数: 0

摘要

建筑能源优化为降低商业建筑的能源消耗提供了一个有效且易于解决的机会。商业物业的业主/运营商(建筑运营商)已经认识到这个机会,并在能源管理设备(如传感器和控制器)和系统(如楼宇管理系统,BMS)上进行了大量投资,以成为这些已安装设备的主控制器。最近的研究表明,如果建筑运营商能够保持最佳的BMS配置,则可以额外节省10%的能源。不幸的是,至少有三个重大挑战限制了正在进行的BMS配置优化。首先,大多数bms都有特定于供应商的接口,需要定制的、一次性的远程访问集成。其次,构建配置和性能数据在各个BMS之间的表示方式缺乏一致性,这使得很难汇总性能趋势。第三,bms通常支持单个用户,即建筑运营商,这阻碍了支持多利益相关者应用程序的能力,例如个性化居住者体验和规划灾难疏散。我们提出了一种混合云/内部部署模型,该模型重用现有的BMS实现,但结合了新云技术的优点。我们的模型采用了基于云的“中间层”基础设施(我们称之为GeoBMS),它将本地bms连接到可扩展的建筑管理应用程序。混合模型解决了每个确定的BMS限制:通过虚拟化无法远程访问;通过统一的云数据模型表示不一致的数据;以及缺乏通过全球认证的多利益相关者访问。GeoBMS为应用程序提供了已发布的api,以访问虚拟化基础设施功能。我们提出了一个概念验证应用程序(我们称之为EnergyOptimize),它使用GeoBMS来监控能源性能并优化建筑配置。我们使用一个博物馆案例来说明这个应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GeoBMS: Hybrid Cloud/ On-Premise Architecture for Building Energy Optimization
Building energy optimization offers an impactful and readily addressable opportunity for reducing energy consumption in commercial buildings. Owners/operators of commercial properties (building operators) have recognized this opportunity and invested significantly in both energy management devices (such as sensors and controllers) and systems (such as Building Management Systems, BMS) to be master-controllers for these installed devices.Recent studies have revealed that an additional 10% energy savings opportunity would become available if building operators can sustain optimal BMS configurations.Unfortunately, at least three significant challenges limit ongoing BMS configuration optimization. First, most BMSs have vendor-specific interfaces that require custom, one-off integrations for remote access. Second, a lack of consistency in how building configurations and performance data is represented from one BMS to another, makes it hard to aggregate performance trends. Third, BMSs often support single users, i.e., building operators, impeding the ability to support for multi-stakeholder applications such as for personalizing occupant experiences and planning disaster evacuations.We propose a hybrid cloud/on-premise model that reuses existing BMS implementations but incorporates the benefits of new cloud technologies. Our model employs a cloud-based “middle layer” infrastructure (which we call GeoBMS) that connects on-premise BMSs to scalable building management applications. The hybrid model addresses each of the identified BMS limitations: remote inaccessibility through virtualization; inconsistent data representation through unified cloud data models; and lack of multi-stakeholder access through global authentication.GeoBMS offers published APIs for applications to access virtualized infrastructure capabilities. We present a proof-of-concept application (which we call EnergyOptimize) that uses GeoBMS to monitor energy performance and optimize building configurations. We illustrate the application using a museum case-example.
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