An Incremental Clustered Gradient Method for Wireless Sensor Networks

Anil Mahmud, Md. Akhtaruzzaman Adnan, Md Shopon
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引用次数: 2

Abstract

In wireless sensor networks, clustering is a very crucial problem. Basically clustering means grouping some specific objects based on their behavior and functionality. Clustering can be formulated for different optimization problems, such as nonsmooth, nonconvex problems. This paper is based on the review of the optimization algorithm that was proposed in the paper A Convergent Incremental Gradient Method With Constant Step Size by Blatt et al called Incremental Aggregate Gradient method. A novel algorithm called Incremental Clustered Aggregate Gradient Method was proposed in this paper to counter the shortcomings of the previous one. It has many similarities with the earlier method but it is more efficient for wireless sensor networks. The main aim of Incremental Gradient Method was to minimize the sum of continuously differentiable functions and also it required a single gradient evaluation per iteration and used a constant step size. For quadratic functions, a global linear rate of convergence was proved. It was claimed that it is more suitable for sensor networks. Although the experiments performed in this work confirm the convergence properties of it, it was found that it is not suitable for sensor networks. The proposed method addresses the flaws of the previous method as regards to sensor networks. When both algorithms operate with their respective optimal step sizes, they require approximately the same number of gradient evaluations for convergence.
无线传感器网络的增量聚类梯度方法
在无线传感器网络中,聚类是一个非常关键的问题。基本上,集群是指根据特定对象的行为和功能对其进行分组。聚类可以用于不同的优化问题,如非光滑、非凸问题。本文是在回顾Blatt等人在一篇论文中提出的一种具有恒定步长的收敛增量梯度方法,即增量聚合梯度方法的优化算法的基础上进行的。针对原有算法的不足,提出了一种新的算法——增量聚类梯度法。该方法与先前的方法有许多相似之处,但在无线传感器网络中效率更高。增量梯度法的主要目标是最小化连续可微函数的和,并且每次迭代只需要一次梯度计算,并且使用恒定的步长。对于二次函数,证明了全局线性收敛速度。据称,它更适合于传感器网络。虽然在本工作中进行的实验证实了它的收敛性,但发现它并不适用于传感器网络。提出的方法解决了先前方法在传感器网络方面的缺陷。当两种算法以各自的最优步长运行时,它们需要大约相同数量的梯度评估来收敛。
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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