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首页> 外文期刊>Oriental journal of computer science and technology >Data Analysis and Management Techniques in Wireless Sensor Networks
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Data Analysis and Management Techniques in Wireless Sensor Networks

机译:无线传感器网络中的数据分析和管理技术

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Harvesting the benefits of a sensor-rich world presents many data analysis and management challenges. Recent advances in research and industry aim to address these challenges. Modern sensors and information technologies make it possible to continuously collect sensor data, which is typically obtained as real-time and real valued numerical data. Examplesinclude vehicles driving around in cities or a power plant generating electricity, which can be equipped with numerous sensors that produce data from moment to moment. Though the data gathering systems are becoming relatively mature, a lot of innovative research needs to be done on knowledge discovery from these huge repositories of data. The data management techniques and analysis methods are required to process the increasing volumes of historical and live streaming data sources simultaneously. Analysts need improved techniques are needed to reduce an analyst’s decision response time and to enable more intelligent and immediate situation awareness. Faster analysis of disparate information sources may be achieved by providing a system that allows analysts to pose integrated queries on diverse data sources without losing data provenance.This paper proposed to develop abstractions that make it easy for users and application developers to continuously apply statistical modeling tools to streaming sensor data. Such statistical models can be used for data cleaning, prediction, interpolation, anomaly detection and for inferring hidden variables from the data, thus addressing many of the challenges in analysis and managing sensor data. Current archive data and streaming data querying techniques are insufficient by themselves to harmonize sensor inputs from large volumes of data. These two distinct architectures (push versus pull) have yet to be combined to meet the demands of a data-centric world. The input of sensor streaming data from multiple sensor types further complicates the problem.
机译:收获传感器丰富的世界带来的好处提出了许多数据分析和管理挑战。研究和工业的最新进展旨在解决这些挑战。现代传感器和信息技术使不断收集传感器数据成为可能,这些数据通常以实时和实数值数据形式获得。例子包括在城市中行驶的车辆或发电的发电厂,这些发电厂可以配备众多传感器,这些传感器可以随时产生数据。尽管数据收集系统已经变得相对成熟,但仍需要对来自这些庞大数据存储库的知识发现进行大量创新研究。需要数据管理技术和分析方法来同时处理越来越多的历史和实时流数据源。分析人员需要改进的技术,以减少分析人员的决策响应时间,并提高智能和即时态势感知能力。通过提供一种系统,可以使分析人员在不损失数据来源的情况下对各种数据源进行集成查询,从而可以更快地分析各种信息源。本文提出了一种开发抽象方法的方法,使用户和应用程序开发人员可以轻松地连续应用统计建模工具流传感器数据。这种统计模型可用于数据清理,预测,插值,异常检测以及从数据中推断隐藏变量,从而解决了分析和管理传感器数据中的许多挑战。当前的存档数据和流数据查询技术本身不足以协调来自大量数据的传感器输入。这两种截然不同的体系结构(推式与拉式)尚未结合起来,无法满足以数据为中心的世界的需求。来自多种传感器类型的传感器流数据的输入使问题进一步复杂化。

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