"On-Line" Time Series Prediction System------EFuNN-T
نویسنده
چکیده
An "on-line" time series prediction system EFuNN-T based on a model of evolving fuzzy neural network------EFuNN is presented in this paper. EFuNN, as a particular type of evolving fuzzy neural network, evolves both its structure and parameters to accommodate new coming data. EFuNN-T, as an application of EFuNN in the field of time series prediction, performs "one-step" ahead prediction in an "on-line" mode and has the functions of network refining both on structure and parameters, such as node pruning, node aggregation, parameters selftuning, and knowledge insertion/extraction while it is performing the "on-line" operation.
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