Abstract

Predicting system reliability is often a core task in systems design. System reliability depends on component reliability and dependence of components. Component reliability can be predicted with a physics-based approach if the associated physical models are available. If the models do not exist, component reliability may be estimated from data. When both types of components coexist, their dependence is often unknown, and therefore, the component states are assumed independent by the traditional method, which can result in a large error. This study proposes a new system reliability method to recover the missing component dependence, thereby leading to a more accurate estimate of the joint probability density function (PDF) of all the component states. The method works for series systems whose load is shared by its components that may fail due to excessive loading. For components without physical models available, the load data are recorded upon failure, and equivalent physical models are created; the model parameters are estimated by the proposed Bayesian approach. Then models of all component states become available, and the dependence of component states, as well as their joint PDF, can be estimated. Four examples are used to evaluate the proposed method, and the results indicate that the method can produce more accurate predictions of system reliability than the traditional method that assumes independent component states.

References

1.
Bae
,
S.
,
Kim
,
N. H.
, and
Jang
,
S. G.
,
2019
, “
System Reliability-Based Design Optimization Under Tradeoff Between Reduction of Sampling Uncertainty and Design Shift
,”
ASME J. Mech. Des.
,
141
(
4
), p.
041403
.
2.
Liang
,
J.
,
Mourelatos
,
Z. P.
, and
Nikolaidis
,
E.
,
2007
, “
A Single-Loop Approach for System Reliability-Based Design Optimization
,”
ASME J. Mech. Des.
,
129
(
12
), pp.
1215
1224
.
3.
Jung
,
Y.
,
Kang
,
K.
,
Cho
,
H.
, and
Lee
,
I.
,
2021
, “
Confidence-Based Design Optimization (CBDO) for a More Conservative Optimum Under Surrogate Model Uncertainty Caused by Gaussian Process
,”
ASME J. Mech. Des.
,
143
(
9
), p.
091701
.
4.
Xi
,
Z.
,
2019
, “
Model-Based Reliability Analysis With Both Model Uncertainty and Parameter Uncertainty
,”
ASME J. Mech. Des.
,
141
(
5
), p.
051404
.
5.
Hu
,
Z.
, and
Du
,
X.
,
2018
, “
Integration of Statistics-and Physics-Based Methods—A Feasibility Study on Accurate System Reliability Prediction
,”
ASME J. Mech. Des.
,
140
(
7
), p.
074501
.
6.
O'Connor
,
P.
, and
Kleyner
,
A.
,
2012
,
Practical Reliability Engineering
,
John Wiley & Sons
,
Chichester, UK
.
7.
Hu
,
Z.
, and
Du
,
X.
,
2017
, “
System Reliability Prediction With Shared Load and Unknown Component Design Details
,”
Artificial Intelligence Eng. Des., Anal. Manuf.
,
31
(
3
), pp.
223
234
.
8.
Chiralaksanakul
,
A.
, and
Mahadevan
,
S.
,
2004
, “
First-Order Approximation Methods in Reliability-Based Design Optimization
,”
ASME J. Mech. Des.
,
127
(
5
), pp.
851
857
.
9.
Du
,
X.
, and
Hu
,
Z.
,
2012
, “
First Order Reliability Method With Truncated Random Variables
,”
ASME J. Mech. Des.
,
134
(
9
), p.
091005
.
10.
Zhao
,
Y.
, and
Ono
,
T.
, “
A General Procedure for First/Second-Order Reliabilitymethod (FORM/SORM)
,”
Struct. Saf.
,
21
(
2
), pp.
95
112
.
11.
Lee
,
I.
,
Noh
,
Y.
, and
Yoo
,
D.
,
2012
, “
A Novel Second-Order Reliability Method (SORM) Using Noncentral or Generalized Chi-Squared Distributions
,”
ASME J. Mech. Des.
,
134
(
10
), p.
100912
.
12.
Mansour
,
R.
, and
Olsson
,
M.
,
2014
, “
A Closed-Form Second-Order Reliability Method Using Noncentral Chi-Squared Distributions
,”
ASME J. Mech. Des.
,
136
(
10
), p.
100912
.
13.
Choi
,
S.-K.
,
Grandhi
,
R.
, and
Canfield
,
R. A.
,
2006
,
Reliability-Based Structural Design
,
Springer Science & Business Media
,
London, UK
.
14.
Zhu
,
Z.
, and
Du
,
X.
,
2016
, “
Reliability Analysis With Monte Carlo Simulation and Dependent Kriging Predictions
,”
ASME J. Mech. Des.
,
138
(
12
), p.
121403
.
15.
Du
,
X.
, and
Sudjianto
,
A.
,
2004
, “
First Order Saddlepoint Approximation for Reliability Analysis
,”
AIAA J.
,
42
(
6
), pp.
1199
1207
.
16.
Papadimitriou
,
D. I.
, and
Mourelatos
,
Z. P.
,
2018
, “
Reliability-Based Topology Optimization Using Mean-Value Second-Order Saddlepoint Approximation
,”
ASME J. Mech. Des.
,
140
(
3
), p.
031403
.
17.
Papadimitriou
,
D. I.
,
Mourelatos
,
Z. P.
, and
Hu
,
Z.
,
2019
, “
Reliability Analysis Using Second-Order Saddlepoint Approximation and Mixture Distributions
,”
ASME J. Mech. Des.
,
141
(
2
), p.
021401
.
18.
Du
,
X.
,
2008
, “
Saddlepoint Approximation for Sequential Optimization and Reliability Analysis
,”
ASME J. Mech. Des.
,
130
(
1
), p.
011011
.
19.
Jin
,
R.
,
Du
,
X.
, and
Chen
,
W.
,
2003
, “
The Use of Metamodeling Techniques for Optimization Under Uncertainty
,”
Struct. Multidiscipl. Optim.
,
25
(
2
), pp.
99
116
.
20.
Wang
,
Y.
,
Hong
,
D.
,
Ma
,
X.
, and
Zhang
,
H.
,
2018
, “
A Radial-Based Centralized Kriging Method for System Reliability Assessment
,”
ASME J. Mech. Des.
,
140
(
7
), p.
071403
.
21.
Wu
,
H.
,
Zhu
,
Z.
, and
Du
,
X.
,
2020
, “
System Reliability Analysis With Autocorrelated Kriging Predictions
,”
ASME J. Mech. Des.
,
142
(
10
), p.
101702
.
22.
Du
,
X.
,
2010
, “
System Reliability Analysis With Saddlepoint Approximation
,”
Struct. Multidiscipl. Optim.
,
42
(
2
), pp.
193
208
.
23.
Hohenbichler
,
M.
, and
Rackwitz
,
R.
,
1982
, “
First-Order Concepts in System Reliability
,”
Struct. Saf.
,
1
(
3
), pp.
177
188
.
24.
Hu
,
Z.
,
Hu
,
Z.
, and
Du
,
X.
,
2019
, “
One-Class Support Vector Machines With a Bias Constraint and Its Application in System Reliability Prediction
,”
Artificial Intelligence Eng. Des., Anal. Manuf.
,
33
(
3
), pp.
346
358
.
25.
Hu
,
Z.
, and
Du
,
X.
,
2019
, “
An Exploratory Study for Predicting Component Reliability With New Load Conditions
,”
Front. Mech. Eng.
,
14
(
1
), pp.
76
84
.
26.
Yin
,
J.
, and
Du
,
X.
,
2021
, “
A Safety Factor Method for Reliability-Based Component Design
,”
ASME J. Mech. Des.
,
143
(
9
), p.
091705
.
27.
Rosenblatt
,
M.
,
1952
, “
Remarks on a Multivariate Transformation
,”
Ann. Math. Statistics
,
23
(
3
), pp.
470
472
.
28.
Huang
,
Z.
, and
Jin
,
Y.
,
2009
, “
Extension of Stress and Strength Interference Theory for Conceptual Design-for-Reliability
,”
ASME J. Mech. Des.
,
131
(
7
), p.
071001
.
29.
Sundararajan
,
C.
, and
Witt
,
F.
,
1995
,
Stress-Strength Interference Method, Probabilistic Structural Mechanics Handbook
,
Springer
,
Boston, MA
, pp.
8
26
.
30.
Liu
,
K.
,
Wu
,
T.
,
Detwiler
,
D.
,
Panchal
,
J.
, and
Tovar
,
A.
,
2019
, “
Design for Crashworthiness of Categorical Multimaterial Structures Using Cluster Analysis and Bayesian Optimization
,”
ASME J. Mech. Des.
,
141
(
12
), p.
121701
.
31.
Hu
,
Z.
,
Mourelatos
,
Z. P.
,
Gorsich
,
D.
,
Jayakumar
,
P.
, and
Majcher
,
M.
,
2020
, “
Testing Design Optimization for Uncertainty Reduction in Generating Off-Road Mobility Map Using a Bayesian Approach
,”
ASME J. Mech. Des.
,
142
(
2
), p.
021402
.
32.
Drezner
,
Z.
,
1994
, “
Computation of the Trivariate Normal Integral
,”
Math. Comput.
,
62
(
205
), pp.
289
294
.
33.
Drezner
,
Z.
, and
Wesolowsky
,
G. O.
,
1990
, “
On the Computation of the Bivariate Normal Integral
,”
J. Statistical Comput. Simul.
,
35
(
1–2
), pp.
101
107
.
34.
Genz
,
A.
, and
Bretz
,
F.
,
1999
, “
Numerical Computation of Multivariate t-Probabilities With Application to Power Calculation of Multiple Contrasts
,”
J. Statistical Comput. Simul.
,
63
(
4
), pp.
103
117
.
35.
Wei
,
X.
,
Han
,
D.
, and
Du
,
X.
,
2021
, “
Approximation to Multivariate Normal Integral and Its Application in Time-Dependent Reliability Analysis
,”
Struct. Saf.
,
88
, p.
102008
.
36.
Wu
,
H.
, and
Du
,
X.
,
2020
, “
System Reliability Analysis With Second-Order Saddlepoint Approximation
,”
ASCE-ASME J. Risk Uncertainty Eng. Syst.
,
6
(
4
), p.
041001
.
You do not currently have access to this content.