首页> 外文会议>IEEE International Conference on Data Mining Workshops >Multi-sensor Visual Analytics Supported by Machine-Learning Models
【24h】

Multi-sensor Visual Analytics Supported by Machine-Learning Models

机译:通过机器学习模型支持的多传感器视觉分析

获取原文

摘要

Machines, such as engines, vehicles, or even aircraft, go through extensive controlled trials during their development. Each machine is typically instrumented with hundreds of sensors that produce voluminous time-series data. Engineers analyze suchdata to improve their understanding of how machines are used in practice, which in turn helps them in taking design decisions. Most often they study operational profiles various sensors fora given day of operation using histograms, or examine time-series from multiple sensors together. However, when confrontedwith data from dozens of sensors, over many years of operation, they are challenged by the large number of histograms toanalyze, and the sheer length of time-series' to explore. Traditional approaches such as hierarchical histograms, time-series semantic zooming etc. often cannot cope with the volume of data encountered in practice. We augment basic data visualizations such as histograms, heat-maps and basic time-series visualizations with machine-learning models that aid in summarizing, querying, searching, and interactively linking visualizations derived fromlarge volumes of multi-sensor data. In this paper we describe our machine-learning augmented approach to visual analytics in thecontext of its actual use in practice for answering questions ofinterest to engineers analyzing large-scale multi-sensor data.
机译:机器,如发动机,车辆,甚至飞机,在开发期间经历广泛的受控试验。每台机器通常都有数百个传感器,可产生大量的时间序列数据。工程师分析如此,以提高他们对如何在实践中使用的机器的理解,这反过来帮助他们采取设计决策。最常见的是,他们研究操作简档各种传感器,用于使用直方图的操作日,或者将来自多个传感器的时间序列一起检查在一起。然而,当与数十种传感器的数据相结合时,在多年的运行中,他们受到大量直方图的挑战,以及探索的时间系列的纯粹长度。传统方法,如分层直方图,时间序列语义缩放等常常无法应对实际中遇到的数据量。我们增强了基本数据可视化,例如直方图,热映射和基本时间序列可视化,具有帮助总结,查询,搜索和交互式链接VissionIzations源自多传感器数据的可视化。在本文中,我们将我们的机器学习增强方法以实际使用的实际使用的实际使用中的视觉分析方法,用于回答利用工程师的兴趣器分析大规模的多传感器数据。

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