从大规模WiFi监控中提取知识,为建筑设施规划提供信息的分析方法

A. R. Ruiz, H. Blunck, Thor S. Prentow, Allan Stisen, M. Kjærgaard
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引用次数: 105

摘要

在拥有许多资源的大型建筑群(如医院)中,物流优化需要现实的设施管理和规划。目前的规划实践主要依赖于人工观察或粗糙的未经验证的假设,因此不能适当地扩展或提供实际数据来为设施规划提供信息。在本文中,我们提出了从大量网络收集的WiFi轨迹中提取知识的分析方法,以便更好地为大型建筑综合体的设施管理和规划提供信息。分析方法建立在一组丰富的时间和空间特征之上,包括噪声去除方法,例如,建筑物周边设备的标记,区域密度和流量的量化方法,例如,建筑物进出事件,以及对人的行为进行分类,例如,用户角色,如访客,住院或员工。建立在这些方法之上的时空可视化工具使规划者能够检查和探索提取的信息,为设施规划活动提供信息。为了评估这些方法,我们介绍了一个占地超过10公顷的大型医院综合体的结果。评估是基于在医院WiFi基础设施中收集的WiFi痕迹,观察了大约18000个不同的设备,记录了超过10亿次的WiFi测量。对于所提出的分析方法,我们提出了定量的性能结果,例如,证明在建筑物周边设备的正确噪声去除准确率超过95%。此外,我们还提供了详细的统计数据,这些数据来自我们对人们的存在、运动和角色的分析,以及可视化的示例类型,这些示例类型既突出了它们作为规划人员检查工具的潜力,又为试验医院提供了有趣的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis methods for extracting knowledge from large-scale WiFi monitoring to inform building facility planning
The optimization of logistics in large building complexes with many resources, such as hospitals, require realistic facility management and planning. Current planning practices rely foremost on manual observations or coarse unverified assumptions and therefore do not properly scale or provide realistic data to inform facility planning. In this paper, we propose analysis methods to extract knowledge from large sets of network collected WiFi traces to better inform facility management and planning in large building complexes. The analysis methods, which build on a rich set of temporal and spatial features, include methods for noise removal, e.g., labeling of beyond building-perimeter devices, and methods for quantification of area densities and flows, e.g., building enter and exit events, and for classifying the behavior of people, e.g., into user roles such as visitor, hospitalized or employee. Spatio-temporal visualization tools built on top of these methods enable planners to inspect and explore extracted information to inform facility-planning activities. To evaluate the methods, we present results for a large hospital complex covering more than 10 hectares. The evaluation is based on WiFi traces collected in the hospital's WiFi infrastructure over two weeks observing around 18000 different devices recording more than a billion individual WiFi measurements. For the presented analysis methods we present quantitative performance results, e.g., demonstrating over 95% accuracy for correct noise removal of beyond building perimeter devices. We furthermore present detailed statistics from our analysis regarding people's presence, movement and roles, and example types of visualizations that both highlight their potential as inspection tools for planners and provide interesting insights into the test-bed hospital.
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