【24h】

LEVERAGING ENGINEERING ASSET DATA: STRATEGIC PRIORITIES, DATA TYPES AND INFORMATIONAL OUTCOMES

机译:利用工程资产数据:战略重点,数据类型和信息成果

获取原文

摘要

A common complaint heard within the engineering asset community is that while the capacity for data storage increases, the quality of ever increasing amounts of data remains poor. We propose a new model of engineering asset data management that helps explain why data collected by organizations frequently fails to assist in effective engineering asset management. The model situates a four component typology of engineering data between institutional drivers (e.g. organizational culture; organizational strategy; organizational life-cycle; consequence of asset failure) and asset management outcomes. We argue these outcomes (regulatory compliance; time-based maintenance; condition-based asset management; capacity development) are functions not only of the data collected by an organization, but its capacity to leverage that data. We develop a model suggesting that institutional drivers dictate the data requirements of engineering asset intensive firms, typically at the cost of data requirements for different phases in the asset's life-cycle. This paper will assist practitioners to re-conceptualize the manner in which they view their data, the manner in which it is utilized, and provide a better understanding of data and its intended outcomes. This will allow a better prioritization of data collection activities and offer an improved insight into ways in which engineering data may be better transformed into informational and knowledge outcomes.
机译:在工程资产社区中,一个普遍的抱怨是,尽管数据存储容量增加了,但是不断增加的数据量的质量仍然很差。我们提出了一种工程资产数据管理的新模型,该模型有助于解释为什么组织收集的数据经常无法帮助有效的工程资产管理。该模型将机构驱动因素(例如组织文化,组织策略,组织生命周期,资产失败的后果)与资产管理结果之间的工程数据分为四个部分。我们认为这些结果(监管合规,基于时间的维护,基于条件的资产管理,能力开发)不仅是组织收集的数据的功能,而且是其利用该​​数据的能力。我们开发了一个模型,建议由机构驱动因素来决定工程资产密集型公司的数据需求,通常是以资产生命周期中不同阶段的数据需求为代价。本文将帮助从业者重新概念化他们查看数据的方式,数据的使用方式,并更好地理解数据及其预期结果。这样可以更好地确定数据收集活动的优先级,并更好地了解如何将工程数据更好地转换为信息和知识成果的方式。

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