DocumentCode
2831982
Title
Improvement of fault identification performance using neural networks in passive double star optical networks
Author
Araki, N. ; Enomoto, Y. ; Tomita, N.
Author_Institution
NTT Access Network Syst. Labs., Ibaraki, Japan
fYear
1998
fDate
22-27 Feb. 1998
Firstpage
223
Lastpage
224
Abstract
Summary form only given. Passive double star (PDS) optical networks are expected to be used to construct low cost access networks for broadband services. We have already proposed a testing method with a dichroic reflective optical (DRO) filter for PDS networks, which identifies faults between an optical line and transmission equipment on the subscriber side. When the reflections are completely separated, we can identify faults with the conventional method described above. However, when the reflections from the filters are superimposed, this becomes difficult and the identification resolution is greatly degraded. This paper proposes a novel software method using neural networks (NN) to overcome this problem.
Keywords
broadband networks; fault location; identification; optical fibre subscriber loops; optical fibre testing; optical neural nets; optical time-domain reflectometry; PDS networks; broadband services; dichroic reflective optical filter; fault identification performance; identification resolution; low cost access networks; neural networks; optical line; passive double star optical networks; software method; subscriber side; testing method; Fault diagnosis; Intelligent networks; Neural networks; Optical attenuators; Optical fiber networks; Optical filters; Optical reflection; Optical sensors; Power measurement; Wavelength measurement;
fLanguage
English
Publisher
ieee
Conference_Titel
Optical Fiber Communication Conference and Exhibit, 1998. OFC '98., Technical Digest
Conference_Location
San Jose, CA, USA
Print_ISBN
1-55752-521-8
Type
conf
DOI
10.1109/OFC.1998.657350
Filename
657350
Link To Document