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Title: University of Cambridge


1
Neural network A set of four case studies
University of Cambridge Stéphane Forsik 5th June
2006
2
What does  Neural network analysis  mean for
you?
Neural network?
3
4 examples of neural network analysis
  • Estimation of the amount of retained austenite in
    austempered ductile irons
  • Neural network model of creep strength of
    austenitic stainless steels
  • Neural-network analysis of irradiation hardening
    in low-activation steels
  • Application of Bayesian Neural Network for
    modeling and prediction of ferrite number in
    austenitic stainless steel welds

Four practical examples
4
1 - Identification of a problem which is too
complex to be solved.
2 - Compilation of a set of data.
3 - Testing and training of the neural network.
4 - Predictions.
How to build a neural network?
5
4 examples of neural network analysis
  • Estimation of the amount of retained austenite in
    austempered ductile irons
  • Neural network model of creep strength of
    austenitic stainless steels
  • Neural-network analysis of irradiation hardening
    in low-activation steels
  • Application of Bayesian Neural Network for
    modeling and prediction of ferrite number in
    austenitic stainless steel welds

Estimation of the amount of retained austenite in
austempered ductile irons
6
Retained austenite helps to optimize the
mechanical properties of austempered ductile
irons.
The maximization of the amount of retained
austenite gives the best mechanical properties.
Many variables are involved in this calculation
and no models can give quantitative accurate
predictions.
A neural network is the solution.
Analysis of the problem
7
Input parameters
8
  • wt C, wt Si, wt Mn, wt Ni, wt Cu
  • Austenising time (min) and temperature (K)
  • Austempering time (min) and temperature (K)

HIDDEN UNITS
  • Volume fraction of retained austenite ()

Inputs/outputs
9
Training and testing of the model
10
Volume fraction max for 3-3.25 wt Si.
Below 3.1 wt Si, more bainitic transformation
and more austenite carbon enrichment.
Over 3.1 wt Si, formation of islands of
pro-eutectoïd ferrite in the bainite structure.
No effect below 3.6 wt C.
Slight stabilization over 3.6 wt C, possibly
longer time to reach equilibrium for high
concentrations.
Predictions of Si and C
11
  • No effect below 2 wt Ni
  • Slight stabilization below 1 wt Cu

Predictions of Ni and Cu
12
  • A neural network can give predictions in
    agreement with theory and experimental values.
  • Error bars are an indication of the reliability
    of the model.
  • More data should be collected or more experiments
    should be carried out in the range of
    concentration where error bars are large.

First conclusion
13
4 examples of neural network analysis
  • Estimation of the amount of retained austenite in
    austempered ductile irons
  • Neural network model of creep strength of
    austenitic stainless steels
  • Neural-network analysis of irradiation hardening
    in low-activation steels
  • Application of Bayesian Neural Network for
    modeling and prediction of ferrite number in
    austenitic stainless steel welds

Neural network model of creep strength of
austenitic stainless steels
14
Austenitic stainless steels are used in the power
generation industry at 650 C, 50 MPa or more for
more than 100 000 hours.
Creep stress rupture is a major problem for those
steels.
No experiments can be carried out for 100 000
hours and pseudo-linear relations cannot take in
account complex interactions between components.
A neural network is the solution.
Analysis of the problem
15
Input parameters
16
  • wt Cr, wt Ni, wt Mo, wt Mn, wt Si, wt Nb,
    wt Ti, wt V, wt Cu, wt N, wt C, wt B, wt
    B, wt P, wt S, wt Co, wt Al
  • Test stress (Mpa), test temp. (C), log(rupture
    life, h)
  • Solution treatment temperature (C)

HIDDEN UNITS
  • 104 h creep rupture stress

Inputs/outputs
17
Training and testing of the model
18
Mechanism is not understood
Predictions
19
Comparison with other methods
20
  • Good agreement in trend, limited by error bars.
  • Good agreement when predictions are compared to
    experimental values, more precise than other
    models.

Second conclusion
21
4 examples of neural network analysis
  • Estimation of the amount of retained austenite in
    austempered ductile irons
  • Neural network model of creep strength of
    austenitic stainless steels
  • Neural-network analysis of irradiation hardening
    in low-activation steels
  • Application of Bayesian Neural Network for
    modeling and prediction of ferrite number in
    austenitic stainless steel welds

Neural-network analysis of irradiation hardening
in low-activation steels
22
  • Insterstitials, vacancies
  • Transmuted helium
  • Precipitates

dpa displacement-per-atom
Hardening, embrittlement
Fusion reaction
23
Future fusion power plants will be based on a 100
million degree plasma which will produce 14 MeV
neutrons.
Energetic neutrons are a major problem for
materials composing the magnetic confinement.
Today, no fusion sources, no sources of 14 MeV
neutrons. Need to extrapolate from fission
results.
A neural network is the solution.
Analysis of the problem
24
Input parameters
25
  • wt C, wt Cr, wt W, wt Mo, wt Ta, wt V,
    wt Si, wt Mn, wt Mn, wt N, wt Al, wt As,
    wt B, wt Bi, wt Ce, wt Co, wt Cu, wt Ge,
    wt Mg, wt Nb, wt Ni, wt O, wt P, wt Pb, wt
    S, wt Sb, wt Se, wt Sn, wt Te, wt Ti, wt
    Zn, wt Zr
  • Irradiation and test temperatures (K)
  • Dose (dpa) and helium concentration (He)
  • Cold working ()

HIDDEN UNITS
  • Yield strength (Ys)

Inputs/outputs
26
Training and testing of the model
27
Good description of the non-linear dependancy of
Ys on the temperature.
Prediction for an unirradiated steel
28
Trend hardening until 10 dpa, Ys increases from
450 MPa to 650 MPa.
In agreement with theory which predicts a
saturation with increasing doses and with
experiments.
Prediction for an irradiated steel
29
Heat treatment missing !
Comparison with experimental data
30
  • Model gives good predictions.
  • Good knowledge of the theory and mechanisms is
    needed. Missing parameters like heat treatment
    can induce shifts in predictions.

Third conclusion
31
4 examples of neural network analysis
  • Estimation of the amount of retained austenite in
    austempered ductile irons.
  • Neural network model of creep strength of
    austenitic stainless steels.
  • Neural-network analysis of irradiation hardening
    in low-activation steels.
  • Application of Bayesian Neural Network for
    modeling and prediction of ferrite number in
    austenitic stainless steel welds.

Application of Bayesian Neural Network for
modeling and prediction of ferrite number in
austenitic stainless steel welds
32
Fabrication and service performance of welded
structures are determined the amount of ferrite.
Hot cracking resistance, embrittlement can be
avoided by an appropriate content of ferrite.
Constitution diagrams using Creq and Nieq are
used to predict the amount of ferrite but no
accurate results.
A neural network is the solution.
Analysis of the problem
33
Input parameters
34
  • wt C, wt Mn, wt Si, wt Cr, wt Ni, wt Mo,
    wt N, wt Nb, wt Ti, wt Cu, wt V, wt Co, wt

HIDDEN UNITS
  • Ferrite content ()

Inputs/outputs
35
Training and testing of the model
36
Test of the model
37
Chromium is a strong ferrite stabilizer
Significance and influence 1
38
Nickel is a strong austenite stabilizer
Significance and influence 2
39
Trend is correctly predicted.
Significance is important to determine the
influence of an element and can explain some
behaviour.
Fourth conclusion
40
Sum up
41
Sum up 2
42
Neural network is a powerful tool when complex
relations between parameters cannot be modeled.
Building a network is not difficult if care are
taken.
A neural network can predict trends and be in
agreement with experimental data.
Reliability of the predictions depends on the
precision, size and preparation of the database.
Theory and mechanisms of the predicted parameters
should be understood before analysis.
Conclusions
43
Thank you for you attention
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