论文标题
WDM网络中的随机RWA和LightPath重新路由
Stochastic RWA and Lightpath Rerouting in WDM Networks
论文作者
论文摘要
在电信网络中,路由和波长分配(RWA)是寻找传入连接请求的LightPath的问题。当面对动态流量时,基于预定义的确定性策略将Lightpath分配到传入请求时会导致一个零散的网络,由于滞留带宽而无法使用其全部容量。此时,服务提供商试图通过碎片制度过程来恢复容量。我们从两个角度研究了此设置:(i)在通过RWA问题和(ii)通过LightPath Rerouting划分过程中批准连接请求的同时。对于这两个问题,我们介绍了结合传入请求不确定性以最大化预期服务等级的第一个两阶段随机整数编程模型。我们开发了一种基于分解的解决方案方法,该方法使用了对问题的各种放松和新开发的特定问题的切割家庭。在52个阶段的滚动度框架框架中为各种实例的两阶段策略的模拟表明,与传统使用的确定性确定性相比,我们的随机模型提供了高质量的解决方案。具体而言,拟议的供应政策在总体服务等级和节省频谱中的总成绩最高为20%,而随机LightPath Rerouting策略则允许多达36%的请求,最多可增加高达4%的带宽光谱。
In a telecommunication network, Routing and Wavelength Assignment (RWA) is the problem of finding lightpaths for incoming connection requests. When facing a dynamic traffic, greedy assignment of lightpaths to incoming requests based on predefined deterministic policies leads to a fragmented network that cannot make use of its full capacity due to stranded bandwidth. At this point service providers try to recover the capacity via a defragmentation process. We study this setting from two perspectives: (i) while granting the connection requests via the RWA problem and (ii) during the defragmentation process by lightpath rerouting. For both problems, we present the first two-stage stochastic integer programming model incorporating incoming request uncertainty to maximize the expected grade of service. We develop a decomposition-based solution approach, which uses various relaxations of the problem and a newly developed problem-specific cut family. Simulation of two-stage policies for a variety of instances in a rolling-horizon framework of 52 stages shows that our stochastic models provide high-quality solutions compared to traditionally used deterministic ones. Specifically, the proposed provisioning policies yield improvements of up to 19% in overall grade of service and 20% in spectrum saving, while the stochastic lightpath rerouting policies grant up to 36% more requests using up to just 4% more bandwidth spectrum.