Abstract :
The problem of comparing, contrasting and combining information from different sets of data is an enduring
one in many practical applications of statistics.Aspecific problem of combining information from different
sources arose in integrating information from three different sets of data generated by three different
sampling campaigns at the input stage as well as at the output stage of a grey-water treatment process.
For each stage, a common process trend function needs to be estimated to describe the input and output
material process behaviours. Once the common input and output process models are established, it is
required to estimate the efficiency of the grey-water treatment method. A synthesized tool for modelling
different sets of process data is created by assembling and organizing a number of existing techniques: (i)
a mixed model of fixed and random effects, extended to allow for a nonlinear fixed effect, (ii) variogram
modelling, a geostatistical technique, (iii) a weighted least squares regression embedded in an iterative
maximum-likelihood technique to handle linear/nonlinear fixed and random effects and (iv) a formulation
of a transfer-function model for the input and output processes together with a corresponding nonlinear
maximum-likelihood method for estimation of a transfer function. The synthesized tool is demonstrated,
in a new case study, to contrast and combine information from connected process models and to determine
the change in one quality characteristic, namely pH, of the input and output materials of a grey-water
filtering process.
Keywords :
Variogram modelling , nonlinear mixed model theory , monitoring grey-water quality before and after treatment , transfer-function estimation