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Semidefinite Programming Approaches for Sensor Network Localization With Noisy Distance Measurements

机译:带噪声距离测量的传感器网络定位的半定程序设计方法

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A sensor network localization problem is to determine the positions of the sensor nodes in a network given incomplete and inaccurate pairwise distance measurements. Such distance data may be acquired by a sensor node by communicating with its neighbors. We describe a general semidefinite programming (SDP)-based approach for solving the graph realization problem, of which the sensor network localization problems is a special case. We investigate the performance of this method on problems with noisy distance data. Error bounds are derived from the SDP formulation. The sources of estimation error in the SDP formulation are identified. The SDP solution usually has a rank higher than the underlying physical space which, when projected onto the lower dimensional space, generally results in high estimation error. We describe two improvements to ameliorate such a difficulty. First, we propose a regularization term in the objective function that can help to reduce the rank of the SDP solution. Second, we use the points estimated from the SDP solution as the initial iterate for a gradient-descent method to further refine the estimated points. A lower bound obtained from the optimal SDP objective value can be used to check the solution quality. Experimental results are presented to validate our methods and show that they outperform existing SDP methods. Note to Practitioners—Wireless sensor networks consist of a large number of inexpensive wireless sensors deployed in a geographical area with the ability to communicate with their neighbors within a limited radio range. Wireless sensor networks are finding increasing applicability to a range of monitoring applications in civil and military scenarios, such as biodiversity and geographical monitoring, smart homes, industrial control, surveillance, and traffic monitoring. It is often very useful in the applications of sensor networks to know the locations of the sensors. Global positioning systems suffer from many drawbacks in this scenario, such as high cost, line-of-sight issues, etc. Therefore, there is a need to develop robust and efficient algorithms that can estimate or “localize” sensor positions in a network by using only the mutual distance measures (received signal stre-ngth, time of arrival) that the wireless sensors receive from their neighbors. This paper describes an algorithm that solves the sensor network localization problem using advanced optimization techniques. We also study the effect of using very noisy measurements and propose robust methods to deal with high noise. Finally, simulation results for the algorithms are presented to demonstrate their performance in terms of computational effort and accuracy.
机译:传感器网络定位问题是在给定不完整和不正确的成对距离测量值的情况下确定传感器节点在网络中的位置。这样的距离数据可以由传感器节点通过与其邻居通信来获取。我们描述了一种基于通用半定编程(SDP)的方法来解决图实现问题,其中传感器网络定位问题是一种特例。我们调查该方法在噪声距离数据问题上的性能。误差范围源自SDP公式。确定了SDP公式中估计误差的来源。 SDP解决方案通常具有比底层物理空间更高的等级,当投影到较低维度的空间上时,通常会导致较高的估计误差。我们描述了两种改进措施来缓解这种困难。首先,我们在目标函数中提出一个正则化项,可以帮助降低SDP解决方案的等级。其次,我们将从SDP解决方案中估算出的点用作梯度下降方法的初始迭代,以进一步完善估算点。从最佳SDP目标值获得的下限可用于检查解决方案质量。实验结果证明了我们的方法的有效性,并表明它们优于现有的SDP方法。从业人员注意—无线传感器网络由部署在地理区域中的大量廉价无线传感器组成,这些传感器能够在有限的无线电范围内与其邻居进行通信。无线传感器网络正在越来越广泛地应用于民用和军事场景中的各种监视应用,例如生物多样性和地理监视,智能家居,工业控制,监视和交通监视。在传感器网络的应用中了解传感器的位置通常非常有用。在这种情况下,全球定位系统遭受许多缺点,例如高成本,视线问题等。因此,需要开发鲁棒而有效的算法,以通过以下方式估计或“定位”网络中的传感器位置:仅使用无线传感器从其邻居处接收到的相互距离度量(接收信号强度,到达时间)。本文介绍了一种使用高级优化技术解决传感器网络定位问题的算法。我们还研究了使用非常嘈杂的测量的效果,并提出了应对高噪声的可靠方法。最后,给出了算法的仿真结果,以证明其在计算工作量和准确性方面的性能。

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