Ultrafast Phenomena XI pp 100-102 | Cite as
In-situ Waveform Retrieval and Display of Femtosecond Optical Pulses and Picosecond Electrical Pulses
Conference paper
Abstract
In-situ reconstruction of femtosecond optical pulses and picosecond electrical pulse waveforms was demonstrated using a neural network. A Fuzzy C-means clustering network is so flexible that adding the training data can improve the performance of the network, and also is insensitive to the noise. SHG FROGs are used to train the network and a experimental data from Ti:Sapphire laser is applied to retrieve its pulse.
Keywords
Neural Network Terahertz Pulse Neural Network Output CMOS Chip Ultrafast Laser Pulse
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.
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© Springer-Verlag Berlin Heidelberg 1998