prediction

Integrated automated system for the implementation of forecast of consumption electrical energy in lviv region

The IAS "Forecast" is developed for forecasting the electricity consumption in the original production conditions at PJSC "Lvivoblenergo." The statistical and neural network methods are used for the input data verification; is enhanced the space dimensions extending methods for the incoming data to use them with the ANN with non-iterative training

An evolving reservoir neo-fuzzy network for time series prediction

Reservoir Computing is a paradigm of training Recurrent Neural Networks based on treating the recurrent part (the so-called “reservoir”) differently from the readouts. This paradigm has become so popular recently due to its computational efficiency and the fact that it’s enough to train only a supervised readout. Meanwhile Evolving Systems define a new approach which focuses on learning fuzzy systems that have both their parameters and their structure adapting on-line.