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Multilayer ANN indoor location system with area division in WLAN environment 被引量:4

Multilayer ANN indoor location system with area division in WLAN environment
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摘要 An indoor location system based on multilayer artificial neural network(ANN) with area division is proposed.The characteristics of recorded signal strength(RSS),or signal to noise ratio(SNR) from each available access points(APs),are utilized to establish the radio map in the off-line phase.And in the on-line phase,the two or three dimensional coordinates of mobile terminals(MTs) are estimated according to the similarity between the new recorded RSS or SNR and fingerprints pre-stored in radio map.Although the feed-forward ANN with three layers is sufficient to describe any nonlinear mapping relationship between inputs and outputs with finite discontinuous points,the efficient inputs for better training performances are difficult to be determined because of complex and dynamic indoor environment.Then,the discussion of distance relativity for different signal characteristics and optimal strategies for multi-mode phenomenon avoidance is presented.And also,the feasibility and effectiveness of this method are verified based on the experimental comparison with normal ANN without area division,K-nearest neighbor(KNN) and probability methods in typical office environment. An indoor location system based on multilayer artificial neural network(ANN) with area division is proposed.The characteristics of recorded signal strength(RSS),or signal to noise ratio(SNR) from each available access points(APs),are utilized to establish the radio map in the off-line phase.And in the on-line phase,the two or three dimensional coordinates of mobile terminals(MTs) are estimated according to the similarity between the new recorded RSS or SNR and fingerprints pre-stored in radio map.Although the feed-forward ANN with three layers is sufficient to describe any nonlinear mapping relationship between inputs and outputs with finite discontinuous points,the efficient inputs for better training performances are difficult to be determined because of complex and dynamic indoor environment.Then,the discussion of distance relativity for different signal characteristics and optimal strategies for multi-mode phenomenon avoidance is presented.And also,the feasibility and effectiveness of this method are verified based on the experimental comparison with normal ANN without area division,K-nearest neighbor(KNN) and probability methods in typical office environment.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第5期914-926,共13页 系统工程与电子技术(英文版)
基金 supported by the National High Technology Research and Development Program of China (863 Program)(2008AA12Z305)
关键词 indoor location artificial neural network multilayer structure MULTI-MODE relativity. indoor location artificial neural network multilayer structure multi-mode relativity.
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  • 1Y. Y. Gu, A. Lo, I. Niemegeers. A survey of indoor positioning systems for wireless personal networks. IEEE Communications Surveys & Tutorials, 2009, 11(1): 13-32.
  • 2C. A. Patterson, Muntz R R, C. M. Pancake. Challenges in location-aware computing. IEEE Pervasive Computing, 2003, 2(2): 80-89.
  • 3A. M. Ladd, K. E. Bekris, G ethernet for localization. Proc Marceau, et al. Using wireless of lEEE/RSJ International Conference on Intelligent Robots and System, 2002, 1 : 402-408.
  • 4M. Hazas, J. Scott, J. Krumm. Location-aware computing comes of age. IEEE Computer, 2004, 37(2): 95-97.
  • 5R. Want, B. Schilit. Expanding the horizons of location-aware computing. IEEE Computer, 2001, 34(8): 31-34.
  • 6M. Lashley, D. M. Bevly, J. Y. Hung. Performance analysis of vector tracking algorithms for weak GPS signals in high dynamics. IEEE Journal of Selected Topics in Signal Processing, 2009, 3(4): 661-673.
  • 7L. M. B. Wintemitz, W. A. Bamford, G. W. Heckler. A GPS receiver for high-altitude satellite navigation. 1EEE Journal of Selected Topics in Signal Processing, 2009, 3(4): 541-556.
  • 8A. H. Sayed, A. Tarighat, N. Khajehnouri. Network-based wireless location: challenges faced in developing techniques for accurate wireless location. IEEE Signal Processing Magazine, 2005, 22(4): 24-40.
  • 9U. Ahmad, A. Gavrilov, L. Sungyoung, et al. Modular multilayer perceptron for WLAN based localization. Proc. of International Joint Conference on Neural Networks, 2006: 3465- 3471.
  • 10Q. x. Pang, S. C. Liew, V. C. Leung, et al. Design of an effective loss-distinguishable MAC protocol for 802.11 WLAN. 1EEE Communications Letters, 2005, 9(9): 781-783.

同被引文献41

  • 1王开军,张军英,李丹,张新娜,郭涛.自适应仿射传播聚类[J].自动化学报,2007,33(12):1242-1246. 被引量:144
  • 2ZHOU M,XU Y B,MA L. Adaptive autocorrelation ap-proach for fingerprint-based distance dependent positio-ning algorithms in WLAN indoor areas [J]. Journal ofNetwork,2011,6(10):1475-1482.
  • 3RATANA P,PANARAT C. A comparative study on in-door localization based on RSSI measurement in wirelesssensor network[C] / / Proceedings of the 8th InternationalJoint Conference on Computer Science and Software Engi-neering. Nakhon Pathom,Thailand:IEEE,2011:1-6.
  • 4XIE L. A new indoor localization method based on inver-sion propagation model[C] / / Proceedings of the 6th Inter-national Conference on Wireless Communications Networ-king and Mobile Computing. Chengdu:IEEE,2010:1-4.
  • 5CARLOS F,JOSE L,INMACULADA M. Time - spacesampling and mobile device calibration for WIFI indoorlocation systems[J]. IEEE Transactions on Mobile Com-puting,2011,10(7):913-926.
  • 6SUROSO D J, CHERNTANOMWONG P, SOORAKSAP,et al. Fingerprint-based technique for indoor localiza-tion in wireless sensor networks using fuzzy C-meansclustering algorithm[J]. International Symposium on In-telligent Signal Processing and Communication system,2011,2(2):1288-1294.
  • 7JAIN V, TAPASWI S, SHUKLA A. RSS fingerprintsbased distributedsemi-supervised locally linear embed-ding location estimation system for indoorWLAN [J].Wireless Personal Communications,2012(1):1-18.
  • 8HU X, SHANG J, GU F, et al. Improving Wi-Fi indoor positioning via AP sets similarity and semi-supervised affinity propagation clustering[J]. International Journal of Distributed Sensor Networks, 2015, 2015: 1.
  • 9FREY B J, DUECK D. Clustering by passing messages between data points[J]. Science, 2007, 315(5814): 972-976.
  • 10Wikipedia Media. Precision and recall [EB/OL]. [2015-08-12]. http://en.wikipedia.org/wiki/Precision_and_recall.

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