利用群体学习优化的 3D 无线传感器网络增强型定位算法

Maheshwari Niranjan, Adwitiya Sinha, Buddha Singh
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摘要

传感器通信中的定位被认为是最基本的概念之一,它有助于进行有针对性的监控、优化部署和实时导航。定位算法有多种应用,包括资产跟踪、环境监测、工业自动化和其他基于位置的服务。因此,需要不断改进和提高三维传感器网络的定位技术。DV-Hop 是一种广泛使用的定位技术,因为它对范围的要求较低,易于实现,而且适用于大规模传感器网络。在这项研究中,我们提出了一种基于群体学习优化的增强型三维 DV-Hop 算法,称为 GL-3DDVHop。该方法克服了 DV-Hop 原始变体的局限性,并将其扩展到三维环境。在提出的方法中,开发了基于通信环划分的位置感知节点选择方法,用于计算位置感知节点的跳数。此外,还加入了跳数细化修正因子,以修正后的跳数和跳数获得位置未知节点与位置感知节点之间的修正距离。最后,使用群学习优化技术来估计位置未知节点的位置坐标。根据我们在三维无线传感器网络中进行的实验,GL-3DDVHop 的定位精度比现有的同类技术,即 3DDV-Hop 和 PSO-3DDVHop 分别高出 9% 和 3%。
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An enhanced localization algorithm for 3D wireless sensor networks using group learning optimization

Localization in sensor communication is considered one of the most foundational concepts that facilitates targeted monitoring, optimized deployment, and real-time navigation. The localization algorithms have several applications, including asset tracking, environmental monitoring, industrial automation, and other location-based services. This drives the need for continually refining and enhancing localization techniques for three-dimensional sensor networks. The DV-Hop is a widely used localization technique owing to its lesser range requirements, easy to implement, and suitable for large-scale network of sensors. In this research, we have proposed an enhanced group learning optimization-based three-dimensional DV-Hop algorithm, termed as GL-3DDVHop. The proposed method overcomes the limitations of the original variant of DV-Hop and extended it to three-dimensional environment. In the proposed approach, the communication ring partitioning-based location aware node selection approach is developed to calculate the hopsize of location aware node. The correction factor for hopsize refinement is also added to obtain the corrected distances between location unaware node and location aware nodes in terms of the modified hopsize and hop count. Finally, group learning optimization technique is used to estimate the position coordinates of location unaware nodes. According to our experimentation conducted for 3D wireless sensor network, the localization accuracy of GL-3DDVHop surpassed its existing counterparts, namely 3DDV-Hop and PSO-3DDVHop techniques by 9% and 3%, respectively.

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