This paper attempts to summarise the findings of a large number of res
earch papers concerning the application of neural networks to transpor
tation. A brief introduction to neural networks is included, for the b
enefit of readers unfamiliar with the techniques. Because the subject
is so young, some of the papers appear only in conference proceedings
or other less formal publications. I make no apology for this; I felt
it was important to cover as much of the contemporary work as was poss
ible. The paper surveys both the application areas found to be fruitfu
l and the range of neural network paradigms which have been used. Not
surprisingly, multilayer feedforward networks such as backpropagation
have so far been by far the most popular, but there are signs of a gro
wing diversity; practitioners using neural networks are urged to seek
out the less well known paradigms and experiment with them themselves.
A particular weakness noted in much of the work is the informal appro
ach taken to detailed analysis of the results of the research. It is p
ostulated that a more rigorous approach to matters such as comparison
with other techniques and also the methodology used to design the neur
al networks would help a clearer picture to emerge as to best practice
and future research directions.