Adaptive Neuro-Fuzzy Location Indicator in Wireless Sensor Networks

被引:0
作者
Noura Baccar
Mootez Jridi
Ridha Bouallegue
机构
[1] University of Tunis El Manar,Innov’COM/ENIT/Cynapsys
[2] University of Carthage,INSAT/Cynapsys
[3] University of Carthage,Innov’COM
来源
Wireless Personal Communications | 2017年 / 97卷
关键词
Localization; WSN; Indoor; Fuzzy logic; ANFIS neuro-fuzzy; Sugeno model;
D O I
暂无
中图分类号
学科分类号
摘要
Indoor localization is a basic process in Wireless Sensor Networks (WSN) monitoring. This paper presents a new approach for localization of mobile nodes in WSNs. The proposed approach is based on the design of an adaptive fuzzy localization system. First proposed contribution is to consider the rooms of the target environment as a fuzzy sets made by adjacent zones described by a Fuzzy Location Indicator (FLI). FLI provides a fuzzy linearization of the building map hence the creation of a fuzzy linguistic model of the system. Fingerprints of the Radio Signal Strength Indicators (RSSI) are collected from different anchors according to each FLI. A Sugeno type-0 fuzzy inference system is proposed and submitted to a supervised learning through the neuro-fuzzy ANFIS algorithm. Simulation results as well as experimentations in Cynapsys company premises have proved that a good learning process leads to high success rate. Finally, a comparative study with two fuzzy localization systems proved the lower localization error average of the proposed approach.
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收藏
页码:3165 / 3181
页数:16
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