Cognitive Quaternion Valued Neural Network and some applications
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Date
2016
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
A Meta-cognitive Quaternion Valued Neural Network (Mc-QVNN) learning algorithm and its forecasting
applications is proposed in this paper. The Mc-QVNN has two parts, the cognitive part that contains the QVNN
and a meta-cognitive part, which self-regulates the learning algorithm. At each epoch, when the Mc-QVNN
receives a new sample, the meta-cognitive part makes a decision about the manner, the time and the need to
learn this sample or not. In this case, the algorithm deletes the unneeded samples and keeps just the necessary
ones for learning. The meta-cognitive component makes the decision according to the quaternion magnitude
and phases. Three forecasting problems, which are Mackey–Glass time series, Lorenz attractor and the real
home's power in the city of Honolulu in Hawaii, USA, are taken to test the performance of the proposed
algorithm. Comparison with other existing methods shows that the Mc-QVNN is promising for forecasting
chaotic systems
Description
Keywords
Meta-cognitive, Quaternion-Valued Neural Networks, Forecasting, Renewable energy
