首页> 外文期刊>Complexity >Next Generation Data Infrastructures: Towards an Extendable Model of the Asset Management Data Infrastructure as Complex Adaptive System
【24h】

Next Generation Data Infrastructures: Towards an Extendable Model of the Asset Management Data Infrastructure as Complex Adaptive System

机译:下一代数据基础架构:朝着复杂自适应系统的资产管理数据基础架构的可扩展模型

获取原文
       

摘要

Organizations are increasingly looking to adopt the Internet of Things (IoT) to collect the data required for data-driven decision-making. IoT might yield many benefits for asset management organizations engaged in infrastructure asset management, yet not all organizations are equipped to handle this data. IoT data is collected, stored, and analyzed within data infrastructures and there are many changes over time, resulting in the evolution of the data infrastructure and the need to view data infrastructures as complex adaptive systems (CAS). Such data infrastructures represent information about physical reality, in this case about the underlying physical infrastructure. Physical infrastructures are often described and analyzed in literature as CASs, but their underlying data infrastructures are not yet systematically analyzed, whereas they can also be viewed as CAS. Current asset management data models tend to view the system from a static perspective, posing constraints on the extensibility of the system, and making it difficult to adopt new data sources such as IoT. The objective of the research is therefore to develop an extensible model of asset management data infrastructures which helps organizations implement data infrastructures which are capable of evolution and aids the successful adoption of IoT. Systematic literature review and an IoT case study in the infrastructure management domain are used as research methods. By adopting a CAS lens in the design, the resulting data infrastructure is extendable to deal with evolution of asset management data infrastructures in the face of new technologies and new requirements and to steadily exhibit new forms of emergent behavior. This paper concludes that asset management data infrastructures are inherently multilevel, consisting of subsystems, links, and nodes, all of which are interdependent in several ways.
机译:组织越来越多地希望采用物联网(IOT)来收集数据驱动决策所需的数据。 IOT可能会产生许多从事基础设施资产管理的资产管理组织的好处,但并非所有组织都配备了处理此数据。在数据基础架构内收集,存储和分析物联网数据,随着时间的推移存在许多变化,导致数据基础架构的演变,并且需要将数据基础架构视为复杂的自适应系统(CAS)。这种数据基础架构代表有关物理现实的信息,在这种情况下,关于底层物理基础设施。在文献中通常描述和分析物理基础架构作为CASS,但尚未系统地分析其底层数据基础架构,而它们也可以被视为CAS。当前资产管理数据模型倾向于从静态视角查看系统,对系统的可扩展性构成限制,并使难以采用IOT等新数据源。因此,该研究的目的是开发一个可扩展的资产管理数据基础架构模型,这些基础设施可以帮助组织实施能够进化的数据基础设施,并援助IOT的成功采用。系统文献综述和基础设施管理域中的物联网案例研究用作研究方法。通过在设计中采用CAS镜头,所得到的数据基础设施可扩展,以处理新技术和新要求的资产管理数据基础设施的演变,并稳步展示新形式的紧急行为。本文得出结论,资产管理数据基础架构本质上是多级,包括子系统,链路和节点,所有这些都是以多种方式相互依赖的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号