会议专题

WIFI INDOOR LOCATION DETERMINATION VIA ANFIS WITH PCA METHODS

This paper proposes the WiFi indoor location determination method based on adaptive neurofuzzy inference system (ANFIS) with principal component analysis (PCA). It reduces the WiFi signal vectors dimensions and saves the storage cost and simplifies the fuzzy rules generated by subtractive clustering method for ANFIS training. In the off-line phase, the received signal strength (RSS) or signal to noise ratio (SNR) from multiple access points (APs) is recorded for the establishment of radio map. And in the on-line phase, two steps should be considered for the position determination. The first step is space transformation to principal component space with lower dimensions compared to original space for the signal vectors. And the second step is the estimation of real two or three dimensional coordinates of mobile terminal (MT). Feasibility and effectiveness of ANFIS system based on FCA method are verified according to the analysis of the iterative number of training and experimental comparison with K-nearest neighbor (KNN), probability, artificial neural network (ANN) and ANFIS indoor location system without FCA.

WiFi indoor location clustering fuzzy inference system principal component

Yubin Xu Mu Zhou Lin Ma

Harbin Institute of Technology, Harbin

国际会议

2009 IEEE International Conference on Network Infrastructure and Digital Content(2009年IEEE网络基础设施与数字内容国际会议 IEEE IC-NIDC2009)

北京

英文

647-651

2009-11-06(万方平台首次上网日期,不代表论文的发表时间)