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An Efficient Associated Correlated Bit Vector Matrix for Mining Behavioral Patterns from Wireless Sensor Network

机译:用于从无线传感器网络挖掘行为模式的有效关联相关位向量矩阵

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Now a day’s wireless sensor network interesting research area for discovering behavioral patterns WSNs can be used for predicting the source of future events. By knowing the source of future event, we can detect the faulty nodes easily from the network. Behavioral patterns also can identify a set of temporally correlated sensors. This knowledge can be helpful to overcome the undesirable effects (e.g., missed reading) of the unreliable wireless communications. It may be also useful in resource management process by deciding which nodes can be switched safely to a sleep mode without affecting the coverage of the network. Association rule mining is the one of the most useful technique for finding behavioral patterns from wireless sensor network. Data mining techniques have recent years received a great deal of attention to extract interesting behavioral patterns from sensors data stream. One of the techniques for data mining is tree structure for mining behavioral patterns from wireless sensor network. By implementing the tree structure will face the problem of time taking for finding frequent patterns. By overcome that problem we are implementing associated correlated bit vector matrix for finding behavioral patterns of nodes in a wireless sensor network. By implementing this concept we can overcome time complexity and also get most correlated patterns of wireless sensor networks.
机译:现在,一天的无线传感器网络成为一个有趣的研究领域,用于发现行为模式WSN可以用于预测未来事件的来源。通过了解未来事件的来源,我们可以轻松地从网络中检测出故障节点。行为模式也可以识别一组时间相关的传感器。该知识可有助于克服不可靠的无线通信的不良影响(例如,漏读)。通过确定哪些节点可以安全地切换到睡眠模式而不影响网络的覆盖范围,在资源管理过程中也可能很有用。关联规则挖掘是从无线传感器网络中查找行为模式的最有用的技术之一。近年来,数据挖掘技术受到了广泛的关注,以从传感器数据流中提取有趣的行为模式。数据挖掘的技术之一是树结构,用于从无线传感器网络中挖掘行为模式。通过实现树结构,将面临寻找频繁模式所需的时间问题。通过克服该问题,我们正在实现关联的相关位向量矩阵,以查找无线传感器网络中节点的行为模式。通过实施此概念,我们可以克服时间复杂性并获得无线传感器网络最相关的模式。

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