城市GSM和WCDMA频段路径损耗预测的ANFIS模型

N. Faruk, N. Surajudeen-Bakinde, A. Abdulkarim, S. Popoola, A. Abdulkarim, L. Olawoyin, Atayero
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引用次数: 12

摘要

在移动通信系统的网络设计和规划中,路径损耗传播是一个非常重要的问题。经验模型、确定性模型和理论模型等传播模型具有复杂、不一致、耗时和不适应等特点,在无线系统设计中效率低下,因此需要更可靠的模型。人工智能方法似乎克服了传播模型预测路径损失的缺点。本文针对尼日利亚选定的城市地区,提出了一种用于GSM和WCDMA频段路径损耗预测的ANFIS方法。此外,还研究了隶属函数数目的影响。预测结果表明,ANFIS模型在卡诺和阿布贾城市地区的表现优于Hata、成本-231、Egli和ECC-33模型。此外,广义钟形MF的RMSE结果随着MF数量的增加而有所改善。本研究的总体性能和结果表明,ANFIS模型在提高传播模型的预测精度方面是有效和有用的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANFIS Model for Path Loss Prediction in the GSM and WCDMA Bands in Urban Area
Path loss propagation is a vital concern when designing and planning networks in mobile communication systems. Propagation models such as the empirical, deterministic and theoretical models, which possess complex, inconsistent, time-consuming and non-adaptable features, have proven to be inefficient in designing of wireless systems, thereby resulting in the need for a more reliable model. Artificial Intelligence methods seem to overcome the drawbacks of the propagation models for predicting path loss. In this paper, the ANFIS approach to path loss prediction in the GSM and WCDMA bands is presented for selected urban areas in Nigeria. Furthermore, the effects of the number of Membership Functions (MFs) are investigated. The prediction results indicated that the ANFIS model outperformed the Hata, Cost-231, Egli and ECC-33 models in both Kano and Abuja urban areas. In addition, an increase in the number of MFs conceded an improved RMSE result for the generalized bell-shaped MF. The general performance and outcome of this research work show the efficiency and usefulness of the ANFIS model in improving prediction accuracy over propagation models
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