This paper presents a new index system for the performance evaluation and network planning of multimedia communication systems using measurement on actual systems to support several different traffic types. In this in...This paper presents a new index system for the performance evaluation and network planning of multimedia communication systems using measurement on actual systems to support several different traffic types. In this index system, we develop an expert system to evaluate the performance of such multimedia communication networks including channel utilization and call blocking probability and packet delay, and apply the network planning methods to optimize the networks and forecast the demand of the growing multimedia communications systems. Two important planning problems for the multimedia communication systems are presented: optimization problem for construction of the world system and forecast problem for increasing traffic demands. We first discuss analysis methods, performance measures for the multimedia communication systems. Then, we describe network planning methods for the multimedia communication systems and give some efficiency network planning methods. Finally, we present some results studied in traffic forecast for the campus network and show the effectiveness of these methods.展开更多
该文基于网络多媒体业务QoS(Quality of Service)特征特点,提出网络业务QoS类识别算法。探索了新的多媒体业务QoS类划分模式,在QoS分类的基础上,可以通过将具有相同或相似QoS需求特征的业务流聚集生成聚集流。聚集流划分使用较少的QoS特...该文基于网络多媒体业务QoS(Quality of Service)特征特点,提出网络业务QoS类识别算法。探索了新的多媒体业务QoS类划分模式,在QoS分类的基础上,可以通过将具有相同或相似QoS需求特征的业务流聚集生成聚集流。聚集流划分使用较少的QoS特征,借助聚集流可以在合理的粒度上区分多媒体业务。该文从QoS特征出发分析了聚集流识别的特点,利用网络多媒体业务典型QoS特征的稀疏性,使用改进K-SVD(Kernel Singular Value Decomposition)进行字典学习,实现网络多媒体业务QoS类识别。实验结果表明,该文算法比现有方法具有更高的QoS类识别准确性。展开更多
基金This work was supported partly by National Natural Science Foundation of China under Grant No.79990583 and 70221001
文摘This paper presents a new index system for the performance evaluation and network planning of multimedia communication systems using measurement on actual systems to support several different traffic types. In this index system, we develop an expert system to evaluate the performance of such multimedia communication networks including channel utilization and call blocking probability and packet delay, and apply the network planning methods to optimize the networks and forecast the demand of the growing multimedia communications systems. Two important planning problems for the multimedia communication systems are presented: optimization problem for construction of the world system and forecast problem for increasing traffic demands. We first discuss analysis methods, performance measures for the multimedia communication systems. Then, we describe network planning methods for the multimedia communication systems and give some efficiency network planning methods. Finally, we present some results studied in traffic forecast for the campus network and show the effectiveness of these methods.
文摘该文基于网络多媒体业务QoS(Quality of Service)特征特点,提出网络业务QoS类识别算法。探索了新的多媒体业务QoS类划分模式,在QoS分类的基础上,可以通过将具有相同或相似QoS需求特征的业务流聚集生成聚集流。聚集流划分使用较少的QoS特征,借助聚集流可以在合理的粒度上区分多媒体业务。该文从QoS特征出发分析了聚集流识别的特点,利用网络多媒体业务典型QoS特征的稀疏性,使用改进K-SVD(Kernel Singular Value Decomposition)进行字典学习,实现网络多媒体业务QoS类识别。实验结果表明,该文算法比现有方法具有更高的QoS类识别准确性。