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Journal ArticleDOI

Green IP Over WDM Networks With Data Centers

TLDR
The results show that by identifying the optimum data center locations, combining the multi-hop bypass heuristic with renewable energy and the replication scheme, power consumption savings of up to 73% can be achieved.
Abstract
Most of the previous research on data centers power consumption has focused on understanding how to minimize the power consumption inside the data center. It is, however, also important to investigate the power consumption associated with transporting data between data centers and end users. In this paper, we consider three problems. First, through linear programming (LP) models and through simulations we determine the optimal location of a data center or multiple data centers in an IP over wavelength-division-multiplexing network so as to minimize the network's power consumption. Here, we consider the impact of network topology, traffic profile, upload and download rates, number of data centers and the impact of power minimization on delay. Second, we study how to replicate content that has different popularity to minimize power consumption through the use of an LP model. Here, we consider five classes (but the models are general) of content that have different levels of popularity and consider multiple data centers. The optimization attempts to identify where to store a data object that has a given popularity such that the network's power consumption is minimized. We have also developed a novel routing algorithm, energy-delay optimal routing, to minimize the power consumption of the network under replication while maintaining QoS. Third, we investigate through LP the problem of whether to locate data centers next to renewable energy or to transmit renewable energy to data centers in a given network topology under different traffic conditions and taking into account the network components' power consumption. Given a number of wind Farms whose locations are known together with the electrical power transmission losses, we identify the optimal location of data centers such that the network's power consumption is minimized and consider a network where the nodes that are not connected to wind farms have access to solar power. The results show that by identifying the optimum data center locations, combining the multi-hop bypass heuristic with renewable energy and the replication scheme, power consumption savings of up to 73% can be achieved.

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Citations
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Journal ArticleDOI

Energy-Efficient Information and Communication Infrastructures in the Smart Grid: A Survey on Interactions and Open Issues

TL;DR: This paper provides a comprehensive survey on the smart grid-driven approaches in energy-efficient communications and data centers, and the interaction between smart grid and information and communication infrastructures.
Journal ArticleDOI

Energy-efficient data replication in cloud computing datacenters

TL;DR: This paper studies data replication in cloud computing data centers and considers both energy efficiency and bandwidth consumption of the system, in addition to the improved quality of service QoS obtained as a result of the reduced communication delays.
Journal ArticleDOI

Energy Efficient Virtual Network Embedding for Cloud Networks

TL;DR: A heuristic, real-time energy optimized VNE (REOViNE), with power savings approaching those of the EEVNE model, is developed, and the power savings and spectral efficiency benefits that VNE offers in optical orthogonal division multiplexing networks are examined.
Journal ArticleDOI

On the Energy Efficiency of Physical Topology Design for IP Over WDM Networks

TL;DR: A mixed integer linear programming model is developed to optimize the physical topology of IP over WDM networks with the objective of minimizing the network total power consumption and the results show that optimizing the physicalTopology increases the utilization of the renewable energy sources.
Journal ArticleDOI

Distributed Energy Efficient Clouds Over Core Networks

TL;DR: A framework for designing energy efficient cloud computing services over non-bypass IP/WDM core networks is introduced and a heuristic for real time VM placement (DEER-VM) that achieves comparable power savings is developed.
References
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Proceedings ArticleDOI

Web caching and Zipf-like distributions: evidence and implications

TL;DR: This paper investigates the page request distribution seen by Web proxy caches using traces from a variety of sources and considers a simple model where the Web accesses are independent and the reference probability of the documents follows a Zipf-like distribution, suggesting that the various observed properties of hit-ratios and temporal locality are indeed inherent to Web accesse observed by proxies.
Proceedings ArticleDOI

ElasticTree: saving energy in data center networks

TL;DR: This work presents ElasticTree, a network-wide power1 manager, which dynamically adjusts the set of active network elements -- links and switches--to satisfy changing data center traffic loads, and demonstrates that for data center workloads, ElasticTree can save up to 50% of network energy, while maintaining the ability to handle traffic surges.
Journal ArticleDOI

Energy-Minimized Design for IP Over WDM Networks

TL;DR: In this paper, the authors focus on minimizing the energy consumption of an IP over WDM network and develop efficient approaches ranging from mixed integer linear programming (MILP) models to heuristics.
Journal ArticleDOI

An adaptive data replication algorithm

TL;DR: An algorithm for dynamic replication of an object in distributed systems is presented and it is shown that the algorithm can be combined with the concurrency control and recovery mechanisms of ta distributed database management system.
Proceedings ArticleDOI

Energy-minimized design for IP over WDM networks under modular router line cards

TL;DR: The proposed energy-minimized design can significantly reduce energy consumption of the IP over WDM network, ranging from 25% to 45% and can also help equalize the power consumption at each network node.
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