Hybrid Approach of Genetic Algorithm and Differential Evolution in WSN Localization

B. Nithya, J. Jeyachidra
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引用次数: 0

Abstract

Sensor node localization refers to the knowledge of position information and is a procedural technique for estimating sensor node location. In wireless sensor networks, localization refers to the estimation of sensor node location information. Optimization algorithms are used to determine the position of sensor nodes. Traditional algorithms rely on analytical methods, which increase in computational complexity as the number of sensor nodes grows. Due to resource constraints, cost constraints, and sensor node energy constraints, an algorithm with reduced computational complexity is needed, one that does not need external hardware, needs less run time and memory, is scalable and easy to implement without losing performance, and has improved location estimation accuracy with better convergence. The proposed research work uses Genetic algorithm and differential evolution algorithm are combined in the hybrid Genetic Algorithm - Differential Evolution localization algorithm. Differential Evolution has a higher mutational rate, whereas the Genetic Algorithm has a better range and crossover operator. In wireless sensor networks, the Hybrid Genetic Algorithm - Differential Evolution uses the selection with crossover operators of Genetic Algorithms and the mutation operator of Differential Evolution to approximate the positioning information of sensor nodes.
遗传算法与差分进化混合方法在WSN定位中的应用
传感器节点定位是指对位置信息的了解,是一种估计传感器节点位置的程序性技术。在无线传感器网络中,定位是指对传感器节点位置信息的估计。采用优化算法确定传感器节点的位置。传统的算法依赖于分析方法,随着传感器节点数量的增加,计算复杂度会增加。由于资源约束、成本约束和传感器节点能量约束,需要一种计算复杂度较低的算法,该算法不需要外部硬件,需要较少的运行时间和内存,具有可扩展性和易于实现而不损失性能,并且具有更好的收敛性和更高的位置估计精度。本研究采用遗传算法和差分进化算法相结合的混合遗传算法-差分进化定位算法。差分进化具有较高的突变率,而遗传算法具有较好的范围算子和交叉算子。在无线传感器网络中,混合遗传算法-差分进化利用遗传算法的交叉算子选择和差分进化的变异算子来近似传感器节点的定位信息。
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