Distributed Backup K-Placement and Applications to Virtual Memory in Wireless Networks

Gal Oren, Leonid Barenboim
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引用次数: 1

Abstract

The Backup Placement problem in networks in the distributed setting considers a network graph G = (V, E), in which the goal of each vertex v ∈ V is selecting a neighbor, such that the maximum number of vertices in V that select the same vertex is minimized [9]. Previous backup placement algorithms suffer from obliviousness to main factors of heterogeneous wireless network. Specifically, there is no consideration of the nodes memory and storage capacities, and no reference to a case in which nodes have different energy capacity, and thus can leave (or join) the network at any time. These parameters are strongly correlated in wireless networks, as the load on different parts of the network can differ greatly, thus requiring more communication, energy, memory and storage. In order to fit the attributes of wireless networks, this work addresses a generalized version of the original problem, namely Backup K-Placement, in which each vertex selects K neighbors, for a positive parameter K. Our Backup K-Placement algorithm terminates within just one round. In addition we suggest two complementary algorithms which employ Backup K-Placement to obtain efficient virtual memory schemes for wireless networks. The first algorithm divides the memory of each node to many small parts. Each vertex is assigned the memories of a large subset of its neighbors. Thus more memory capacity for more vertices is gained, but with much fragmentation. The second algorithm requires greater round-complexity, but produces larger virtual memory for each vertex without any fragmentation.
无线网络中分布式备份k位及其在虚拟内存中的应用
分布式环境下网络中的Backup Placement问题考虑一个网络图G = (V, E),其中每个顶点V∈V的目标是选择一个邻居,使得V中选择相同顶点的顶点的最大数目最小化[9]。以往的备份放置算法对异构无线网络的主要影响因素缺乏认识。具体来说,没有考虑节点的内存和存储容量,也没有提到节点具有不同能量容量的情况,因此可以随时离开(或加入)网络。这些参数在无线网络中具有很强的相关性,因为网络不同部分的负载差异很大,因此需要更多的通信、能量、内存和存储。为了适应无线网络的属性,本工作解决了原始问题的广义版本,即Backup K- placement,其中每个顶点选择K个邻居,为一个正参数K。我们的Backup K- placement算法仅在一轮内终止。此外,我们还提出了两种互补的算法,它们采用备份K-Placement来获得无线网络的有效虚拟内存方案。第一种算法将每个节点的内存分成许多小块。每个顶点被分配到其邻居的一个大子集的内存。因此,可以为更多的顶点获得更多的内存容量,但会产生更多的碎片。第二种算法需要更大的循环复杂度,但为每个顶点产生更大的虚拟内存,而不会产生任何碎片。
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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