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Solving the node localization problem in WSNs by a two-objective evolutionary algorithm and local descent

机译:用二目标进化算法和局部下降法解决无线传感器网络中的节点定位问题

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Given a small percentage of nodes whose actual positions are known, the problem of estimating the locations of the remaining nodes of a wireless sensor network has attracted a large interest in the last years. The localization task is based on the noisy estimates of the distances between pairs of nodes in range of each other. The problem is particularly hard when the network connectivity is not sufficiently high, the most attractive case in real applications. In this paper, we propose to solve the localization problem by using a two-objective evolutionary algorithm which takes concurrently into account during the evolutionary process both the localization accuracy and certain topological constraints induced by the network connectivity. The solutions generated by the evolutionary algorithm are therefore refined by a gradient-based technique which further reduces the localization error. The proposed approach is tested with different network configurations and sensor setups, and compared in terms of normalized localization error with a state-of-the-art approach based on a regularized semi-definite programming technique. The results show that, in all the experiments, our approach achieves considerable accuracies, thus manifesting its effectiveness and stability, and outperforms the compared approach.
机译:在已知其实际位置的节点的百分比很小的情况下,估计无线传感器网络其余节点的位置的问题在最近几年引起了人们的极大兴趣。定位任务基于对彼此范围内的节点对之间的距离的噪声估计。当网络连接性不够高时,该问题尤其棘手,这是实际应用中最有吸引力的情况。在本文中,我们提出了一种使用两目标进化算法来解决定位问题的方法,该算法在进化过程中同时考虑了定位精度和网络连通性引起的某些拓扑约束。因此,通过基于梯度的技术改进了由进化算法生成的解,从而进一步减少了定位误差。所提出的方法在不同的网络配置和传感器设置下进行了测试,并在归一化的定位误差方面与基于正则化半定性编程技术的最新方法进行了比较。结果表明,在所有实验中,我们的方法均达到了相当的精度,从而显示了其有效性和稳定性,并且优于所比较的方法。

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