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The Application of Social Characteristic and L1 Optimization in the Error Correction for Network Coding in Wireless Sensor Networks

机译:社会特征和L1优化在无线传感器网络编码纠错中的应用

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摘要

One of the remarkable challenges about Wireless Sensor Networks (WSN) is how to transfer the collected data efficiently due to energy limitation of sensor nodes. Network coding will increase network throughput of WSN dramatically due to the broadcast nature of WSN. However, the network coding usually propagates a single original error over the whole network. Due to the special property of error propagation in network coding, most of error correction methods cannot correct more than C/2 corrupted errors where C is the max flow min cut of the network. To maximize the effectiveness of network coding applied in WSN, a new error-correcting mechanism to confront the propagated error is urgently needed. Based on the social network characteristic inherent in WSN and L1 optimization, we propose a novel scheme which successfully corrects more than C/2 corrupted errors. What is more, even if the error occurs on all the links of the network, our scheme also can correct errors successfully. With introducing a secret channel and a specially designed matrix which can trap some errors, we improve John and Yi’s model so that it can correct the propagated errors in network coding which usually pollute exactly 100% of the received messages. Taking advantage of the social characteristic inherent in WSN, we propose a new distributed approach that establishes reputation-based trust among sensor nodes in order to identify the informative upstream sensor nodes. With referred theory of social networks, the informative relay nodes are selected and marked with high trust value. The two methods of L1 optimization and utilizing social characteristic coordinate with each other, and can correct the propagated error whose fraction is even exactly 100% in WSN where network coding is performed. The effectiveness of the error correction scheme is validated through simulation experiments.
机译:无线传感器网络(WSN)的显着挑战之一是由于传感器节点的能量限制而如何有效地传输收集的数据。由于WSN的广播性质,网络编码将大大提高WSN的网络吞吐量。但是,网络编码通常会在整个网络上传播单个原始错误。由于网络编码中错误传播的特殊性质,大多数错误纠正方法不能纠正超过C / 2损坏的错误,其中C是网络的最大流量最小值。为了最大化在WSN中应用的网络编码的有效性,迫切需要一种新的纠错机制来应对传播的错误。基于WSN和L1优化固有的社交网络特征,我们提出了一种成功纠正超过C / 2损坏错误的新颖方案。而且,即使错误发生在网络的所有链路上,我们的方案也可以成功地纠正错误。通过引入秘密通道和经过特殊设计的矩阵(可以捕获一些错误),我们改进了John和Yi的模型,从而可以纠正网络编码中传播的错误,这些错误通常会污染接收到的消息的100%。利用WSN固有的社会特征,我们提出了一种新的分布式方法,该方法在传感器节点之间建立基于信誉的信任,以便识别信息丰富的上游传感器节点。参照社会网络理论,选择信息中继节点并标记为高信任值。 L1优化和利用社会特征这两种方法相互配合,并且可以校正在执行网络编码的WSN中传播误差,其误差甚至恰好是100%。通过仿真实验验证了纠错方案的有效性。

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