Yang Jin, Cai Yongming, Tang Deyu, Liu Zhen
School of Medical Information and Engineering, Guangdong Pharmaceutical University, Guangzhou 510006, China.
Guangdong Province Precise Medicine and Big Data Engineering Technology Research Center for Traditional Chinese Medicine, Guangzhou 510006, China.
Sensors (Basel). 2019 Jul 23;19(14):3242. doi: 10.3390/s19143242.
Node localization, which is formulated as an unconstrained NP-hard optimization problem, is considered as one of the most significant issues of wireless sensor networks (WSNs). Recently, many swarm intelligent algorithms (SIAs) were applied to solve this problem. This study aimed to determine node location with high precision by SIA and presented a new localization algorithm named LMQPDV-hop. In LMQPDV-hop, an improved DV-Hop was employed as an underground mechanism to gather the estimation distance, in which the average hop distance was modified by a defined weight to reduce the distance errors among nodes. Furthermore, an efficient quantum-behaved particle swarm optimization algorithm (QPSO), named LMQPSO, was developed to find the best coordinates of unknown nodes. In LMQPSO, the memetic algorithm (MA) and Lévy flight were introduced into QPSO to enhance the global searching ability and a new fast local search rule was designed to speed up the convergence. Extensive simulations were conducted on different WSN deployment scenarios to evaluate the performance of the new algorithm and the results show that the new algorithm can effectively improve position precision.
节点定位被视为无线传感器网络(WSN)最重要的问题之一,它被表述为一个无约束的NP难优化问题。最近,许多群体智能算法(SIA)被应用于解决这个问题。本研究旨在通过SIA高精度地确定节点位置,并提出了一种名为LMQPDV-hop的新定位算法。在LMQPDV-hop中,采用改进的DV-Hop作为底层机制来收集估计距离,其中通过定义的权重修改平均跳距以减少节点间的距离误差。此外,还开发了一种名为LMQPSO的高效量子行为粒子群优化算法(QPSO)来寻找未知节点的最佳坐标。在LMQPSO中,将Memetic算法(MA)和Lévy飞行引入QPSO以增强全局搜索能力,并设计了一种新的快速局部搜索规则以加速收敛。在不同的WSN部署场景下进行了大量仿真,以评估新算法的性能,结果表明新算法能有效提高定位精度。