局部不确定性下多保真高斯过程的未知标量场探索

Demetris Coleman, S. D. Bopardikar, Vaibhav Srivastava, Xiaobo Tan
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引用次数: 0

摘要

自主海上交通工具部署在海洋和湖泊中收集时空数据。GPS通常用于定位,但在水下无法使用。由于水下定位能力差,很难确定数据收集的位置,难以准确绘制地图,也难以自主探索海洋和其他水生环境。本文提出使用多保真高斯过程回归来合并与不确定位置相关的数据。在此基础上,提出了一种用于未知标量场勘探和映射的自适应采样算法。将基于多保真度模型的重建性能与仅使用已知位置数据的单保真度高斯过程模型的重建性能以及忽略定位误差的单保真度高斯过程模型的重建性能进行了比较。数值结果表明,多保真度方法在重建精度上优于单保真度方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of Unknown Scalar Fields with Multifidelity Gaussian Processes Under Localization Uncertainty
Autonomous marine vehicles are deployed in oceans and lakes to collect spatio-temporal data. GPS is often used for localization, but is inaccessible underwater. Poor localization underwater makes it difficult to pinpoint where data are collected, to accurately map, or to autonomously explore the ocean and other aquatic environments. This paper proposes the use of multifidelity Gaussian process regression to incorporate data associated with uncertain locations. With the proposed approach, an adaptive sampling algorithm is developed for exploration and mapping of unknown scalar fields. The reconstruction performance based on the multifidelity model is compared to that based on a single-fidelity Gaussian process model that only uses data with known locations, and to that based on a single-fidelity Gaussian process model that ignores the localization error. Numerical results show that the proposed multifidelity approach outperforms both single-fidelity approaches in terms of the reconstruction accuracy.
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