Dina A. Amer, Sarah A. Soliman, Asmaa F. Hassan, Amr A. Zamel
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摘要

在依赖数据的现代应用中,无线传感器网络(WSN)是收集和传输数据的关键,而有效的网络连接和覆盖至关重要。如何在 WSN 中优化路由器节点的位置是一项基本挑战,会对网络性能和可靠性产生重大影响。研究人员探索了各种使用元启发式算法的方法,以应对这些挑战并优化 WSN 性能。本文介绍了一种新的混合算法 CFL-PSO,其基础是将增强型菲克定律算法与综合学习和粒子群优化(PSO)相结合。CFL-PSO 利用了这些技术的优势,在网络连接性和覆盖范围之间取得了平衡,最终提高了 WSN 的整体性能。我们将 CFL-PSO 与九种成熟算法进行了基准测试,以评估其性能,这些算法包括传统的菲克定律算法(FLA)、正弦余弦算法(SCA)、多矢量优化器(MVO)、Salp Swarm Optimization (SSO)、War Strategy Optimization (WSO)、Harris Hawk Optimization (HHO)、African Vultures Optimization Algorithm (AVOA)、Capuchin Search Algorithm (CapSA)、Tunicate Swarm Algorithm (TSA) 和 PSO。利用 23 个基准函数对该算法的性能进行了广泛评估,以评估其在处理各种优化场景时的有效性。此外,还将其在 WSN 路由器节点放置方面的性能与其他方法进行了比较,以证明其在实现最优解决方案方面的竞争力。这些分析表明,CFL-PSO 在网络连接、客户端覆盖和收敛速度方面都优于其他算法。为了进一步验证 CFL-PSO 的有效性,我们使用不同数量的客户端、路由器、部署区域和传输范围进行了实验研究。研究结果肯定了 CFL-PSO 的有效性,因为与现有方法相比,CFL-PSO 始终能提供良好的优化结果,凸显了其在提高 WMN 性能方面的潜力。具体来说,与标准 FLA 相比,CFL-PSO 在网络连通性方面实现了高达 66.5% 的改进,在覆盖范围方面实现了 16.56% 的改进,在目标函数值方面实现了 21.4% 的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Enhancing connectivity and coverage in wireless sensor networks: a hybrid comprehensive learning-Fick’s algorithm with particle swarm optimization for router node placement

Wireless Sensor Networks (WSNs) are essential for collecting and transmitting data in modern applications that rely on data, where effective network connectivity and coverage are crucial. The optimal placement of router nodes within WSNs is a fundamental challenge that significantly impacts network performance and reliability. Researchers have explored various approaches using metaheuristic algorithms to address these challenges and optimize WSN performance. This paper introduces a new hybrid algorithm, CFL-PSO, based on combining an enhanced Fick’s Law algorithm with comprehensive learning and Particle Swarm Optimization (PSO). CFL-PSO exploits the strengths of these techniques to strike a balance between network connectivity and coverage, ultimately enhancing the overall performance of WSNs. We evaluate the performance of CFL-PSO by benchmarking it against nine established algorithms, including the conventional Fick’s law algorithm (FLA), Sine Cosine Algorithm (SCA), Multi-Verse Optimizer (MVO), Salp Swarm Optimization (SSO), War Strategy Optimization (WSO), Harris Hawk Optimization (HHO), African Vultures Optimization Algorithm (AVOA), Capuchin Search Algorithm (CapSA), Tunicate Swarm Algorithm (TSA), and PSO. The algorithm’s performance is extensively evaluated using 23 benchmark functions to assess its effectiveness in handling various optimization scenarios. Additionally, its performance on WSN router node placement is compared against the other methods, demonstrating its competitiveness in achieving optimal solutions. These analyses reveal that CFL-PSO outperforms the other algorithms in terms of network connectivity, client coverage, and convergence speed. To further validate CFL-PSO’s effectiveness, experimental studies were conducted using different numbers of clients, routers, deployment areas, and transmission ranges. The findings affirm the effectiveness of CFL-PSO as it consistently delivers favorable optimization results when compared to existing methods, highlighting its potential for enhancing WMN performance. Specifically, CFL-PSO achieves up to a 66.5% improvement in network connectivity, a 16.56% improvement in coverage, and a 21.4% improvement in the objective function value when compared to the standard FLA.

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