Computation
Time-Delayed Neural Networks (TDNN) deployed on Fundacion Entropika Computers
Abstract
This computation involved: Time-Delayed Neural Networks (TDNN) deployed on Fundacion Entropika Computers. Time Delayed Neural Networks are Multi-Layer Perceptrons that keep the previous states of the input layer in memory. Such networks have shown to be efficient in the prediction of time series, the hypothesis being that a climate variable depends or relates to the previous state of that same variable (i.e. that climate variables are temporally dependent). The exact architecture of the network (i.e. number of hidden layers, number of nodes in the hidden layers, adaptative learning function, transfer function and number of previous input states kept in memory) has to be arbitrarily determined by testing the performance of various structures.
keywords: | |
---|---|
inputDescription: | None |
outputDescription: | None |
softwareReference: | None |
Previously used record indentifiers: |
http://badc.nerc.ac.uk/view/badc.nerc.ac.uk__ATOM__DPT_630f23f2-0c13-11e3-b36e-00163e251233
http://badc.nerc.ac.uk/view/badc.nerc.ac.uk__ATOM__OBS_742cd3f4-0c14-11e3-9a2d-00163e251233
|
More Information (under review)
Empty content