首页> 外文期刊>Journal of Quality Technology >Big data and reliability applications: The complexity dimension
【24h】

Big data and reliability applications: The complexity dimension

机译:大数据和可靠性应用:复杂性维度

获取原文
获取原文并翻译 | 示例
           

摘要

Big data features not only large volumes of data but also data with complicated structures. Complexity imposes unique challenges on big data analytics. Meeker and Hong (2014; Quality Engineering, pp. 102-16) provided an extensive discussion of the opportunities and challenges on big data and reliability; they also described engineering systems which generate big data that can be used in reliability analysis. Meeker and Hong (2014) focused on large-scale system operating and environment data (i.e., high-frequency multivariate time series data) and provided examples on how to link such data as covariates to traditional reliability responses such as time to failure, time to recurrence of events, and degradation measurements. This article intends to extend that discussion by focusing on how to use data with complicated structures to do reliability analysis. Such data types include high-dimensional sensor data, functional curve data, and image streams. We first provide a review of recent developments in those directions, then we provide a discussion on how analyticalmethods can be developed to tackle the challenging aspects that arise from the complex features of big data in reliability applications. The use of modern statistical methods such as variable selection, functional data analysis, scalar-on-image regression, spatio-temporal data models, and machine-learning techniques will also be discussed.
机译:大数据功能不仅具有大量数据,还具有复杂结构的数据。复杂性对大数据分析施加了独特的挑战。 Meeker和Hong(2014年;质量工程,第102-16页)提供了对大数据和可靠性的机会和挑战的广泛讨论;它们还描述了生成可在可靠性分析中使用的大数据的工程系统。 Meeker和Hong(2014)专注于大规模的系统运行和环境数据(即高频多变量时间序列数据),并提供了如何将这些数据作为协变量链接到传统可靠性响应,例如失败的时间,时间事件复发和降解测量。本文旨在通过专注于如何使用具有复杂结构的数据来进行可靠性分析来扩展该讨论。这些数据类型包括高维传感器数据,功能曲线数据和图像流。我们首先提供了对这些方向上最新的发展的审查,然后我们提供了关于如何开发分析方法的讨论,以解决来自可靠性应用中大数据的复杂特征的具有挑战性的方面。还将讨论使用现代统计方法,例如可变选择,功能数据分析,拍摄图像回归,时空数据模型和机器学习技术。

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