基于误差概率分布的水下传感器网络改进定位方法

T. Bian, R. Venkatesan, Cheng Li
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引用次数: 33

摘要

精确的定位方案对许多水下传感器的应用至关重要。然而,由于不确定度和测量误差的持续存在,很难实现精确的定位。为了解决这一问题,在地面应用中通常采用多次迭代测量和最小二乘方法来寻找较好的估计。但在水下应用中,由于通信成本高,多次迭代方案不实用。同时,观测到距离测量误差往往具有一定的规律,可以利用这一规律进一步提高定位精度。本文对测量误差分布进行分析和利用,以更好地提高定位精度。开发了用于性能评估的分析模型,并进行了广泛的模拟。我们的研究同时考虑了均匀误差分布和正态误差分布。研究结果表明,与常用的最小二乘估计(LSE)方案相比,本文提出的概率定位方法可以显著提高定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Localization Method Using Error Probability Distribution for Underwater Sensor Networks
An accurate localization scheme is essential to many underwater sensor applications. However, due to the persistent existence of uncertainties and measurement errors, an accurate localization is very difficult to achieve. To mitigate this problem, multi-iteration measurement and least squares scheme are often adopted in terrestrial applications to find a good estimate. But, in underwater applications the multi-iteration scheme is not practical due to high communication cost. Meanwhile, it has been observed that the errors in distance measurement often follow a certain pattern, which can be utilized to further improve on localization accuracy. In the paper, we analyze and utilize the measurement error distributions to better improve localization accuracy. An analytical model is developed for performance evaluation, along with extensive simulations. Both uniform error distribution and normal error distribution are considered in our research. Our results indicate that our proposed probabilistic localization method can significantly improve the localization accuracy over the commonly adopted least squares estimate (LSE) scheme.
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