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首页> 外文期刊>International Journal of Wireless & Mobile Networks >Context-Capture Multi-Valued Decision Fusion With Fault Tolerant Capability For Wireless Sensor Networks
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Context-Capture Multi-Valued Decision Fusion With Fault Tolerant Capability For Wireless Sensor Networks

机译:无线传感器网络具有容错能力的上下文捕获多值决策融合

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Wireless sensor networks (WSNs) are usually utilized to perform decision fusion of event detection. Current decision fusion schemes are based on binary valued decision and do not consider bursty context- capture. However, bursty context and multi-valued data are important characteristics of WSNs. One on hand, the local decisions from sensors usually have bursty and contextual characteristics. Fusion center must capture the bursty context information from the sensors. On the other hand, in practice, many applications need to process multi-valued data, such as temperature and reflection level used for lightening prediction. To address these challenges, the Markov modulated Poisson process (MMPP) and multi-valued logic are introduced into WSNs to perform context-capture multi-valued decision fusion. The overall decision fusion is decomposed into two parts. The first part is the context-capture model for WSNs using superposition MMPP. Through this procedure, the fusion center has a higher probability to get useful local decisions from sensors. The second one is focused on multi-valued decision fusion. Fault detection can also be performed based on MVL. Once the fusion center detects the faulty nodes, all their local decisions are removed from the computation of the likelihood ratios. Finally, we evaluate the capability of context-capture and fault tolerant. The result supports the usefulness of our scheme.
机译:无线传感器网络(WSN)通常用于执行事件检测的决策融合。当前的决策融合方案基于二进制值决策,并且不考虑突发性上下文捕获。但是,突发上下文和多值数据是WSN的重要特征。一方面,来自传感器的本地决策通常具有突发性和上下文特征。融合中心必须从传感器捕获突发性上下文信息。另一方面,实际上,许多应用程序需要处理多值数据,例如用于闪电预测的温度和反射级别。为了解决这些挑战,将马尔可夫调制泊松过程(MMPP)和多值逻辑引入到WSN中,以执行上下文捕获多值决策融合。整个决策融合分解为两部分。第一部分是使用叠加MMPP的WSN的上下文捕获模型。通过此过程,融合中心更有可能从传感器获取有用的本地决策。第二个重点是多值决策融合。也可以基于MVL执行故障检测。一旦融合中心检测到故障节点,就从似然比的计算中删除所有其本地决策。最后,我们评估了上下文捕获和容错的能力。结果证明了我们方案的有效性。

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