A new method of optimizing a multi-sensor geometry using neural networ
k function fitting acid sensitivity measures is described. The method
is applied to a multi-angle optical scattering nephelometer for which
theoretical scattering intensities are generated for distributions of
spherical dielectric particles. Neural networks are trained to invert
these angular intensities to determine accurately the size distributio
n of normally distributed particles. The nephelometer model is optimiz
ed to a minimum configuration using the sensitivity analysis. The meth
od is further validated on experimental data by identifying essential
channels in an on-line nephelometer used to determine concentration an
d species of oil-in-water suspensions.