ES2:管理链路级参数,提高高吞吐量WLAN的数据速率和稳定性

Sandip Chakraborty, Subhrendu Chattopadhyay
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引用次数: 6

摘要

高吞吐量(HT) IEEE 802.11n/ac无线网络支持大量配置参数,如多输入多输出(MIMO)流、调制和编码方案、信道绑定、短保护间隔、帧聚合级别等,这些参数决定了其物理数据速率。然而,所有这些参数都有一个基于链路质量和外部干扰的最优性能区域。因此,根据信道条件动态调整链路参数可以显著提高网络性能。动态调整所有这些参数的主要挑战是,在运行时需要枚举大量的特征集以找到最优配置,这在实时情况下是不可行的。因此,本文提出了一种估计和采样机制来动态地过滤掉不可取的特征,然后应用学习机制来动态地找出最优特征。我们应用卡尔曼滤波机制从所有可能的特征组合中找出优选的特征集。定义了一种新的度量,称为diffESNR,用于从采样特征集中选择最佳特征。采用IEEE 802.11n和IEEE 802.11ac HT无线路由器,在混合无线测试平台上实现并测试了所提出的ES2方案,并与文献中提出的其他相关机制进行了性能分析和比较。来自测试平台的分析表明,与标准和其他相关机制相比,ES2的性能提高了约60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ES2: Managing link level parameters for elevating data rate and stability in High Throughput WLAN
High Throughput (HT) IEEE 802.11n/ac wireless networks support a large set of configuration parameters, like Multiple Input Multiple Output (MIMO) streaming, modulation and coding scheme, channel bonding, short guard interval, frame aggregation levels etc., that determine its physical data rate. However, all these parameters have an optimal performance region based on the link quality and external interference. Therefore, dynamically tuning the link parameters based on channel condition can significantly boost up the network performance. The major challenge in adapting all these parameters dynamically is that a large feature set need to be enumerated during run-time to find out the optimal configuration, which is a not feasible in real time. Therefore in this paper, we propose an estimation and sampling mechanism to filter out the non-preferable features on the fly, and then apply a learning mechanism to find out the best features dynamically. We apply a Kalman filtering mechanism to figure out the preferable feature sets from all possible feature combinations. A novel metric has been defined, called the diffESNR, which is used to select the best features from the sampled feature sets. The proposed scheme, Estimate-Sample-Select (ES2) is implemented and tested over a mixed wireless testbed using IEEE 802.11n and IEEE 802.11ac HT wireless routers, and the performance is analyzed and compared with other related mechanisms proposed in the literature. The analysis from the testbed shows that ES2 results in approx 60% performance improvement compared to the standard and other related mechanisms.
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