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首页> 外文期刊>IEEE Journal on Selected Areas in Communications >Optimal and Fast Real-Time Resource Slicing With Deep Dueling Neural Networks
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Optimal and Fast Real-Time Resource Slicing With Deep Dueling Neural Networks

机译:深度对决神经网络的优化快速实时资源切片

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Effective network slicing requires an infrastructureetwork provider to deal with the uncertain demands and real-time dynamics of the network resource requests. Another challenge is the combinatorial optimization of numerous resources, e.g., radio, computing, and storage. This paper develops an optimal and fast real-time resource slicing framework that maximizes the long-term return of the network provider while taking into account the uncertainty of resource demands from tenants. Specifically, we first propose a novel system model that enables the network provider to effectively slice various types of resources to different classes of users under separate virtual slices. We then capture the real-time arrival of slice requests by a semi-Markov decision process. To obtain the optimal resource allocation policy under the dynamics of slicing requests, e.g., uncertain service time and resource demands, a Q-learning algorithm is often adopted in the literature. However, such an algorithm is notorious for its slow convergence, especially for problems with large state/action spaces. This makes Q-learning practically inapplicable to our case, in which multiple resources are simultaneously optimized. To tackle it, we propose a novel network slicing approach with an advanced deep learning architecture, called deep dueling, that attains the optimal average reward much faster than the conventional Q-learning algorithm. This property is especially desirable to cope with the real-time resource requests and the dynamic demands of the users. Extensive simulations show that the proposed framework yields up to 40% higher long-term average return while being few thousand times faster, compared with the state-of-the-art network slicing approaches.
机译:有效的网络切片要求基础架构/网络提供商处理网络资源请求的不确定需求和实时动态。另一个挑战是大量资源例如无线电,计算和存储的组合优化。本文开发了一种优化,快速的实时资源切片框架,该框架在考虑租户对资源需求的不确定性的同时,最大化了网络提供商的长期回报。具体而言,我们首先提出一种新颖的系统模型,该模型可使网络提供商在单独的虚拟切片下有效地将各种类型的资源切片给不同类别的用户。然后,我们通过半马尔可夫决策过程捕获切片请求的实时到达。为了在切片请求的动力学(例如不确定的服务时间和资源需求)的动态下获得最佳的资源分配策略,文献中经常采用Q学习算法。但是,这种算法因其收敛速度慢而臭名昭著,特别是对于状态/动作空间较大的问题。这使得Q学习实际上不适用于同时优化多个资源的情况。为了解决这个问题,我们提出了一种具有高级深度学习体系结构的新型网络切片方法,称为深度对决,该方法比常规的Q学习算法要快得多,可以获得最佳平均奖励。该属性对于处理实时资源请求和用户的动态需求特别理想。大量的模拟表明,与最新的网络切片方法相比,该框架的长期平均回报率高40%,但速度却快了数千倍。

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