3 also needs 12 maintenance interventions. The last
replacement of each component occurs at t=48,
leading to a remaining lifetime of 5, 8, 14, 7 and 18,
respectively for components 1 to 5. The minimum
remaining lifetime is 5, thus the remaining lifetimes
are more balanced than in solution C. However,
solution D presents a higher cost than C (5770 vs.
5605).
Table 7: Solution C to Model M2.
Component →
Interval↓
1 2 3 4 5
1 x
4 x x o
8 x x
13 x x x
15 x
22 x x x x o
29 x x
31 x x o
36 x x
40 x x o
43 x
49 x x x x
remaining lifetime 6 9 2 8 19
4 CONCLUSIONS
Single and multiple objective deterministic
optimization models have been presented to support
opportunistic preventive maintenance decisions
regarding a set of components, which are the target
of the replacement/maintenance actions, over a finite
planning horizon. The single objective model
considers the minimization of an overall cost
objective function including fixed costs for
interventions and costs for component replacement
and dismounting whenever the replacement of a
given component implies disassembling others. The
multi-objective models enable to explore the trade-
offs between minimizing replacement and
dismounting costs vs. the number of maintenance
interventions and minimizing total costs vs.
maximizing the remaining lifetime of components at
the end of the planning period. Illustrative examples
have been presented using software developed by
some of the authors for general multiobjective
mixed-integer programming problems to exploit the
practical insights offered by the models.
Further research will involve developing
adequate sensitivity analysis techniques to take into
account the uncertainty associated with the model
coefficients to obtain robust solutions, i.e.
recommendations that are relatively immune to
changes of coefficients within plausible ranges.
Moreover, the models will be exploited in real-world
settings taking into account the particularities raised
by specific situations as well as scalability issues to
tackle large-scale problems in systems with
hundreds of components.
ACKNOWLEDGEMENTS
The authors acknowledge the support of iAsset
Project, ref. 38635/2014, financed by POFC, and
FCT project grants UID/MULTI/00308/2013 and
MITP-TB/CS/0026/2013.
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