Br. Bakshi et G. Stephanopoulos, REPRESENTATION OF PROCESS TRENDS .3. MULTISCALE EXTRACTION OF TRENDS FROM PROCESS DATA, Computers & chemical engineering, 18(4), 1994, pp. 267-302
This paper presents a formal methodology for the analysis of process s
ignals and the automatic extraction of temporal features contained in
a record of measured data. It is based on the multiscale analysis of t
he measured signals using wavelets, which allows the extraction of sig
nificant temporal features that are localized in the frequency domain,
from segments of the record of measured data (i.e. localized in the t
ime domain). The paper provides a concise framework for the multiscale
extraction and description of temporal process trends. The resulting
algorithms are analytically sound, computationally very efficient and
can be easily integrated with a large variety of methods for the inter
pretation of process trends and the automatic learning of relationship
s between causes and symptoms in a dynamic environment. A series of ex
amples illustrate the characteristics of the approach and outline its
use in various settings for the solution of industrial problems.