The Radial Basis Function (RBF) network has gained in popularity in
recent years. This is due to its desirable properties in classification
and functional approximation applications, accompanied by training that
is more rapid than that of many other neural-network techniques. RBF
network research has focused on enhanced training algorithms and
variations on the basic architecture to improve the performance of the
network. In addition, the RBF network is proving to be a valuable tool
in a diverse range of applications areas, for example, robotics,
biomedical engineering, and the financial sector. The two-title series
Theory and Applications of Radial Basis Function Networks provides a
comprehensive survey of recent RBF network research. This volume, New
Advances in Design, contains a wide range of applications in the
laboratory and case-studies describing current use. The sister volume to
this one, Recent Developments in Theory and Applications, covers
advances in training algorithms, variations on the architecture and
function of the basis neurons, and hybrid paradigms. The combination of
the two volumes will prove extremely useful to practitioners in the
field, engineers, researchers, students and technically accomplished
managers.