M. Hattori et al., ESTIMATION OF THERMAL-DEFORMATION IN MACHINE-TOOLS USING NEURAL-NETWORK TECHNIQUE, Journal of materials processing technology, 56(1-4), 1996, pp. 765-772
To reduce energy consumption in air-conditioned factories, a new metho
d to compensate for thermal displacement using a neural network techni
que has been investigated, Three-layered feed forward neural networks
have been trained using experimental data from a vertical milling mach
ine. After confirming the potential of this method fundamentally, effo
rts have concentrated on compacting networks and reducing training dat
a. Experimental results have shown that selection of optimal positions
of temperature measurement, not using the spindle revolution speed as
an input parameter, and preparation of training data sets under the s
ame operation condition as the test data', are helpful in producing a
compact and efficient neural network.