TY - BOOK
T1 - An integrated process control and diagnostics system for hot rolling mills based on comparison of physical data and mathematical process models using artificial intelligence
T2 - Final report
AU - Mannanal, S.
AU - Drevermann, J.
AU - Jäckel, I.
AU - Tunstall, J.
AU - Walker, T.
AU - Loredo, L. R.
AU - Koskinen, J.
AU - Cola, R.
AU - Colla, V.
AU - Vannucci, M.
PY - 2008
Y1 - 2008
N2 - The aim of this multinational research project is to construct a
generic, intelligent, sophisticated,
portable, modular and configurable monitoring and diagnosis system for HSMs
and other similar processes in steel plants with a view to improve the process
control
strategy. To incorporate as much as possible the multitude of scenarios
prevailing in mills
and for developing generalised strategies, four research locations were
identified to carry
out the three main tasks of the collaborative project.
The main goal to be achieved at TKS and Corus is the earlier detection of
faults and malfunctions
of the measuring devices to greatly reduce mill downtime, periods of unnoticed
non-optimal production and product quality problems. The general aim of the
Arcelor
part was to implement an intelligent diagnosing system to improve the width
performances
in the HSM. At Ilva, regaining the performance of the mill pacing, which had
been
downgraded by the revamping activities in the past decade, was the main
target.
The fault detection system developed using neural network algorithms, filter
functions
and descriptive statistics which has been implemented at TKS and Corus has
significantly
reduced the routine unnoticed malfunctions of pyrometers and other gauges.
Additionally, some application-oriented and case-specific diagnosis routines
for the furnace
thermocouples were implemented at Corus.
At Arcelor, a supervisory system for width gauge performances and several
models to
improve the width quality of strips were developed and installed.
The new mill pacing strategy developed at Ilva using a modified material-flow
control
scheme reduces the gap time considerably and consequently increases annual
production
by about 7 %.
AB - The aim of this multinational research project is to construct a
generic, intelligent, sophisticated,
portable, modular and configurable monitoring and diagnosis system for HSMs
and other similar processes in steel plants with a view to improve the process
control
strategy. To incorporate as much as possible the multitude of scenarios
prevailing in mills
and for developing generalised strategies, four research locations were
identified to carry
out the three main tasks of the collaborative project.
The main goal to be achieved at TKS and Corus is the earlier detection of
faults and malfunctions
of the measuring devices to greatly reduce mill downtime, periods of unnoticed
non-optimal production and product quality problems. The general aim of the
Arcelor
part was to implement an intelligent diagnosing system to improve the width
performances
in the HSM. At Ilva, regaining the performance of the mill pacing, which had
been
downgraded by the revamping activities in the past decade, was the main
target.
The fault detection system developed using neural network algorithms, filter
functions
and descriptive statistics which has been implemented at TKS and Corus has
significantly
reduced the routine unnoticed malfunctions of pyrometers and other gauges.
Additionally, some application-oriented and case-specific diagnosis routines
for the furnace
thermocouples were implemented at Corus.
At Arcelor, a supervisory system for width gauge performances and several
models to
improve the width quality of strips were developed and installed.
The new mill pacing strategy developed at Ilva using a modified material-flow
control
scheme reduces the gap time considerably and consequently increases annual
production
by about 7 %.
M3 - Report
SN - 978-92-79-08175-0
T3 - EU Publications
BT - An integrated process control and diagnostics system for hot rolling mills based on comparison of physical data and mathematical process models using artificial intelligence
PB - Office for Official Publications of the European Communities
ER -