智能城市中物联网获取数据的行为变化和异常检测的时间聚类

V. Urosevic, Ana Kovačević, Firas Kaddachi, MilanVukicevic
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引用次数: 3

摘要

在本章中,我们提出了一种基于时间聚类模型的方法,用于从获得的感官数据中检测行为变化和异常。数据来自欧洲五个著名的智慧城市和新加坡,旨在通过开发和部署无处不在的系统来评估和预测老年人轻度认知障碍(MCI)和虚弱的早期风险,并利用智慧城市数据集和物联网基础设施,支持生成和提供减轻这些风险的最佳个性化预防干预措施,从而完全“老年人友好”。从物联网设备收集的低级数据被预处理为活动序列,序列中的时间和因果变化被分类为正常或异常行为。提出的方法的目标是:(1)识别重要的行为变化模式,(2)支持模式变化的早期识别。时间聚类模型用于检测和预测以下变化类型:内部活动(单个活动,单个公民)和相互活动(多个活动,单个公民)。根据开发的老年专家模型,识别出的行为变异和异常进一步映射到MCI/脆弱发病行为和风险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
emporal Clustering for Behavior Variation and Anomaly Detection from Data Acquired Through IoT in Smart Cities
In this chapter, we propose a methodology for behavior variation and anomaly detection from acquired sensory data, based on temporal clustering models. Data are collected from five prominent European smart cities, and Singapore, that aim to become fully “elderly-friendly,” with the development and deployment of ubiquitous systems for assessment and prediction of early risks of elderly Mild Cognitive Impairments (MCI) and frailty, and for supporting generation and delivery of optimal personalized preventive interventions that mitigate those risks, utilizing smart city datasets and IoT infrastructure. Low level data collected from IoT devices are preprocessed as sequences of activities, with temporal and causal variations in sequences classified as normal or anomalous behavior. The goals of proposed methodology are to (1) recognize significant behavioral variation patterns and (2) support early identification of pattern changes. Temporal clustering models are applied in detection and prediction of the following variation types: intra-activity (single activity, single citizen) and inter-activity (multi- ple-activities, single citizen). Identified behavioral variations and anomalies are further mapped to MCI/frailty onset behavior and risk factors, following the developed geriatric expert model.
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