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On the Effect of Adaptive and Nonadaptive Analysis of Time-Series Sensory Data

机译:时间序列感官数据自适应和非自适应分析的效果

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With the growing popularity of information and communications technologies and information sharing and integration, cities are evolving into large interconnected ecosystems by using smart objects and sensors that enable interaction with the physical world. However, it is often difficult to perform real-time analysis of large amount on heterogeneous data and sensory information that are provided by various resources. This paper describes a framework for real-time semantic annotation and aggregation of data streams to support dynamic integration into the Web using the advanced message queuing protocol. We provide a comprehensive analysis on the effect of adaptive and nonadaptive window size in segmentation of time series using SensorSAX and symbolic aggregate approximation (SAX) approaches for data streams with different variation and sampling rate in real-time processing. The framework is evaluated with three parameters, namely window size parameter of the SAX algorithm, sensitivity level, and minimum window size parameters of the SensorSAX algorithm based on the average data aggregation and annotation time, CPU consumption, data size, and data reconstruction rate. Based on a statistical analysis, a detailed comparison between various sensor points is made to investigate the memory and computational cost of the stream-processing framework. Our results suggests that regardless of utilized segmentation approach, due to the fact that each geographically different sensory environment has got a different dynamicity level, it is desirable to find the optimal data aggregation parameters in order to reduce the energy consumption and improve the data aggregation quality.
机译:随着信息和通信技术以及信息共享和集成的日益普及,城市正在通过使用能够与物理世界进行交互的智能对象和传感器来发展成为互连的大型生态系统。但是,通常很难对各种资源提供的异构数据和感官信息进行大量的实时分析。本文介绍了一种用于实时语义注释和数据流聚合的框架,以支持使用高级消息排队协议将其动态集成到Web中。我们使用SensorSAX和符号聚合逼近(SAX)方法针对实时处理中具有不同变化和采样率的数据流,对自适应和非自适应窗口大小在时间序列分割中的效果进行了全面分析。根据平均数据聚合和注释时间,CPU消耗,数据大小和数据重建率,使用三个参数评估该框架,即SAX算法的窗口大小参数,敏感度级别和SensorSAX算法的最小窗口大小参数。基于统计分析,对各个传感器点之间进行了详细的比较,以研究流处理框架的内存和计算成本。我们的结果表明,无论采用哪种分割方法,由于每个地理上不同的感官环境都具有不同的动态水平,因此希望找到最佳的数据聚合参数以减少能耗并提高数据聚合质量。 。

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