Proceedings Article10.1109/IJCNN.2000.860811
Sensor errors prediction using neural networks
A. Sachenko,Volodymyr Kochan,Volodymyr Turchenko,Vladimir Golovko,J. Savitsky,A. Dunets,Th. Laopoulos +6 more
- 24 Jul 2000
- Vol. 4, pp 4441
TL;DR: The features of neural networks used for increasing the accuracy of physical quantity measurement are considered by prediction of sensor drift and the technique of data volume increasing for predicting neural networkTraining is offered at the expense of various data types replacement for neural network training.
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Abstract: The features of neural networks used for increasing the accuracy of physical quantity measurement are considered by prediction of sensor drift. The technique of data volume increasing for predicting neural network training is offered at the expense of various data types replacement for neural network training and at the expense of the separate approximating neural network use.
read more
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