The use of time delay feed-forward neural networks to predict the hourly va
lues of the ionospheric F-2 layer critical frequency, f(0)F(2), 24 hours ah
ead, have been examined. The 24 measurements of f(0)F(2) per day are reduce
d to five coefficients with principal component analysis. A time delay line
of these coefficients is then used as input to a feed-forward neural netwo
rk. Also included in the input are the 10.7 cm solar flux and the geomagnet
ic index Ap. The network is trained to predict measured f(0)F(2) data from
1965 to 1985 at Slough ionospheric station and validated on an independent
validation set from the same station for the periods 1987-1990 and 1992-199
4. The results are compared with two different autocorrelation methods for
the years 1986 and 1991, which correspond to low and high solar activity, r
espectively.