{"title":"基于qos的用户到用户自适应路由","authors":"H. Tran, A. Mellouk, S. Hoceini","doi":"10.1109/ISPS.2011.5898883","DOIUrl":null,"url":null,"abstract":"Service quality can be defined as “the collective effect of service performances which determine the degree of satisfaction of a user of the service” [1]. In other words, quality is the customer's perception of a delivered service. As larger varieties of services are offered to customers, the impact of network performance on the quality of service will be more complex. It is vital that service engineers identify network-performance issues that impact customer service. They also must quantify revenue lost due to service degradation. The Quality of Experience (QoE) becomes recently the most important tendency to guarantee the quality of network services. QoE represents the subjective perception of end-users using network services with network functions such as admission control, resource management, routing, traffic control, etc. In this paper, our main focus is routing mechanism driven by QoE end-users. With the purpose of avoiding the NP-complete problem and reducing the complexity problem for the future Internet, we propose two protocols based on user QoE measurement in routing paradigm to construct an adaptive and evolutionary system. Our first approach is a routing driven by terminal QoE basing on a least squares reinforcement learning technique called Least Squares Policy Iteration. The second approach, namely QQAR (QoE Q-learning based Adaptive Routing), is a improvement of the first one. QQAR basing on Q-Learning, a Reinforcement Learning algorithm, uses Pseudo Subjective Quality Assessment (PSQA), a real-time QoE assessment tool based on Random Neural Network, to evaluate QoE. 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It is vital that service engineers identify network-performance issues that impact customer service. They also must quantify revenue lost due to service degradation. The Quality of Experience (QoE) becomes recently the most important tendency to guarantee the quality of network services. QoE represents the subjective perception of end-users using network services with network functions such as admission control, resource management, routing, traffic control, etc. In this paper, our main focus is routing mechanism driven by QoE end-users. With the purpose of avoiding the NP-complete problem and reducing the complexity problem for the future Internet, we propose two protocols based on user QoE measurement in routing paradigm to construct an adaptive and evolutionary system. Our first approach is a routing driven by terminal QoE basing on a least squares reinforcement learning technique called Least Squares Policy Iteration. 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引用次数: 8
摘要
服务质量可以定义为“决定用户对服务满意程度的服务绩效的集体效应”[1]。换句话说,质量是顾客对所提供服务的感知。随着向客户提供的服务种类越来越多,网络性能对服务质量的影响将更加复杂。服务工程师识别影响客户服务的网络性能问题至关重要。他们还必须量化由于服务退化而造成的收入损失。体验质量(Quality of Experience, QoE)是保证网络服务质量的重要趋势。QoE是终端用户使用具有网络功能(如准入控制、资源管理、路由、流量控制等)的网络服务的主观感受。在本文中,我们主要关注由QoE最终用户驱动的路由机制。为了避免未来互联网的np完全问题和降低复杂性问题,我们提出了两种基于路由范式的用户QoE度量协议,以构建一个自适应和进化的系统。我们的第一种方法是基于最小二乘强化学习技术(称为最小二乘策略迭代)的终端QoE驱动路由。第二种方法,即QQAR (QoE基于q学习的自适应路由),是对第一种方法的改进。基于强化学习算法Q-Learning的QQAR,使用基于随机神经网络的实时QoE评估工具伪主观质量评估(PSQA)来评估QoE。实验结果表明,与其他传统路由协议相比,该协议具有显著的性能。
Service quality can be defined as “the collective effect of service performances which determine the degree of satisfaction of a user of the service” [1]. In other words, quality is the customer's perception of a delivered service. As larger varieties of services are offered to customers, the impact of network performance on the quality of service will be more complex. It is vital that service engineers identify network-performance issues that impact customer service. They also must quantify revenue lost due to service degradation. The Quality of Experience (QoE) becomes recently the most important tendency to guarantee the quality of network services. QoE represents the subjective perception of end-users using network services with network functions such as admission control, resource management, routing, traffic control, etc. In this paper, our main focus is routing mechanism driven by QoE end-users. With the purpose of avoiding the NP-complete problem and reducing the complexity problem for the future Internet, we propose two protocols based on user QoE measurement in routing paradigm to construct an adaptive and evolutionary system. Our first approach is a routing driven by terminal QoE basing on a least squares reinforcement learning technique called Least Squares Policy Iteration. The second approach, namely QQAR (QoE Q-learning based Adaptive Routing), is a improvement of the first one. QQAR basing on Q-Learning, a Reinforcement Learning algorithm, uses Pseudo Subjective Quality Assessment (PSQA), a real-time QoE assessment tool based on Random Neural Network, to evaluate QoE. Experimental results showed a significant performance against over other traditional routing protocols.