基于高斯过程的源定位在线传感器选择

IF 6 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Internet of Things Pub Date : 2024-10-09 DOI:10.1016/j.iot.2024.101388
Obadah Habash, Rabeb Mizouni, Shakti Singh, Hadi Otrok
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引用次数: 0

摘要

本文探讨了网络物理系统(CPS)中源定位的传感器选择问题。虽然最近的机器学习和强化学习方法旨在优化感兴趣区(AoI)内的传感器选择和放置,但它们需要密集的数据收集和训练,因此无法实现在线操作。此外,这些方法通常需要事先了解未知源的特征,对 CPS 的动态性质缺乏适应性,导致在看不见的环境中效率低下。本文利用高斯过程优化和主动传感器选择机制来解决这些不足,从而在 AoI 内定位未知源。所提出的方法首先利用高斯过程代理模型建立了一个环境概率模型,并将其离散化为网格,而无需事先进行训练。接下来,该模型利用高斯过程优化迭代系统地学习潜在的空间现象。同时,该方法通过优化适合度函数来选择传感器子集,该函数主张选择信息量大、能效高的传感器。接下来,概率模型在准确了解环境后,通过识别包含未知源可能性最大的单元,将算法导向未知源。最后,执行峰值细化步骤,计算源在指定小区内的确切位置。通过放射源定位实验、验证研究和各种环境适应性评估,验证了所提方法的有效性。就定位质量(QoL)而言,该方法优于近期的定位基准,如基于强化学习的方法和 DANS,分别优于约 18% 和 100%。
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Gaussian process-based online sensor selection for source localization
This paper addresses the sensor selection problem for source localization within cyber–physical systems (CPSs). While recent machine learning and reinforcement learning approaches aim to optimize sensor selection and placement within the Area of Interest (AoI), their need for intensive data collection and training precludes online operation. Furthermore, these methods often require prior knowledge of the unknown source’s characteristics and lack adaptability to the dynamic nature of CPSs, leading to inefficiencies in unseen environments. This paper addresses these shortcomings using Gaussian process Optimization coupled with an active sensor selection mechanism to locate the unknown source within the AoI. The proposed approach first builds a probabilistic model of the environment, which is discretized into a grid, without prior training using a Gaussian Process surrogate model. Next, the model iteratively and systematically learns the underlying spatial phenomenon using Gaussian Process optimization. Concurrently, the approach selects a subset of sensors by optimizing a fitness function that advocates selecting informative and energy-efficient sensors. Next, the probabilistic model, having accurately learned the environment, directs the algorithm to the unknown source by identifying the cell with the highest likelihood of containing it. Finally, a peak refinement step is performed, which computes the exact location of the source within the designated cell. The proposed method’s efficacy is validated through experiments in radioactive source localization, validation studies, and adaptability assessments across various environments. In terms of quality of localization (QoL), it outperforms recent localization benchmarks, such as a reinforcement learning-based approach and DANS, by around 18% and 100%, respectively.
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来源期刊
Internet of Things
Internet of Things Multiple-
CiteScore
3.60
自引率
5.10%
发文量
115
审稿时长
37 days
期刊介绍: Internet of Things; Engineering Cyber Physical Human Systems is a comprehensive journal encouraging cross collaboration between researchers, engineers and practitioners in the field of IoT & Cyber Physical Human Systems. The journal offers a unique platform to exchange scientific information on the entire breadth of technology, science, and societal applications of the IoT. The journal will place a high priority on timely publication, and provide a home for high quality. Furthermore, IOT is interested in publishing topical Special Issues on any aspect of IOT.
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