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Emergency Preparedness FMJ Article
Risk-Based Maintenance
The Next Step
Robert Barr
Becoming aware of risk, how to measure it and how to use
it to establish priorities are important keys to successful
maintenance management. The basic premise of risk-based
maintenance management is that risk can be quantified and
then prioritized. The results of this risk-based focus can
be used to establish capital and expense allocations to
preventive, predictive and reactive maintenance management
decisions.
A facility engineer’s staff can usually communicate
the most important equipment in the facility—but what
about the next most important piece and the one after that?
The further down the list one travels, the greater the demand
for a way to objectively analyze the importance of each
piece of equipment in maintenance management decision-making.
How does this translate to the physical plant? Facility
engineers abide by one cardinal rule: keep the important
equipment running at or above capacity. As facility engineers
progress from hands-on equipment maintenance to maintenance
management positions, determining the allocation of resources
becomes increasingly more challenging. The further removed
one is from hands-on equipment maintenance decisions, the
more difficult it is to establish maintenance priorities.
The challenge lies in not only determining which piece of
equipment is important, but also determining its level of
importance.
It is relatively easy to quantify the importance of the
equipment at the point where revenues are generated. An
example of revenue-generating equipment for an office building
would be the equipment that is used to light, heat and cool
the space, which tenants generally pay for. For a service
industry dealing in e-commerce, the revenue-generating equipment
would be the equipment used in customer communications,
such as telephones and computers. For a manufacturing facility,
this would be the equipment that develops the product. In
all cases, each group of revenue-generating equipment, and
likewise, each critical piece of equipment within that group
needs to be assigned a quantifiable level of importance.
As a simplified example for grouping equipment and assigning
risk priorities for a service industry such as office buildings,
consider this scenario. A building has many floors of offices
with different tenants occupying varying sizes of floor
space and some paying a premium for the “best”
offices. A simple method for risk-ranking the equipment
at the point where revenues are generated by the facility
manager is to assign maintenance priorities based on the
relative revenues generated by each tenant. This ranking
becomes a method for resolving conflicting maintenance priorities,
but this is too simplified. This example risk-ranks building
equipment based solely on the consequences of lost revenues
caused by lost tenants. There is another dimension to risk-ranking
equipment that has not been considered: the total maintenance
costs required to maintain the equipment to assure the minimum
possibility of failure.
Here is a manufacturing example that incorporates both
dimensions of risk: if the cooling fan on the hypothetical
line #3 drying tower B were to fail, it would take six hours
to replace. Line #3 will be down 50 percent while the facility
manager takes necessary steps to replace it. As the worst-case
scenario, this will cost $20,000 in lost revenues (that
will have to be somehow made up), plus $1500 for the replacement
installation and repair. Testing to prevent failure costs
$150 per year. The same applies to drying tower A. Therefore;
the importance (risk consequence value) of the cooling fans
in both drying tower A and B is the sum of all three costs,
$21,650. At the end of this process, it should be relatively
easy to make a risk-ranked listing of the other revenue-generating
equipment based on the consequences of failure and the costs
of maintenance.
But what about the rest of the equipment under the facility
engineer’s purview—specifically, the equipment
used to support the revenue generating equipment? What about
the central HVAC systems, electrical distribution systems
and other facility support systems? Developing relative
importance for these support systems is challenging when
you consider that, as in the case of mid-voltage electrical
distribution equipment, one piece of equipment can affect
numerous other systems that are at the point where revenues
are generated. How can the support equipment be ranked in
terms of its relative importance tothe facility? To answer
these questions, let us focus on one facility support system.
Risk-based assessment as applied to electrical
distribution equipment
Because things tend to get muddled when attempting to establish
the relative importance of facility support equipment, programs
have been developed that will assist in this process. One
particular program focuses on mid-voltage electrical distribution
systems (EDS). These methods were initially developed for
a major manufacturing company at their request, where the
efforts focused on their specific requirements. However,
the success of this initial project fostered a more broad-based
program that is applicable to a wide range of service and
manufacturing industries. The basic methodology used for
analysis of the EDS remains the same when applied to other
settings.
Beginning the process
Quantifying the relative importance of the equipment begins
with a walk-through of the facility while determining which
equipment exists at the point where revenues are generated.
Once this is established, another walk-through determines
which EDS equipment affects other equipment used directly
in generating revenues. As you go through the EDS, beginning
at the point where revenues are generated up to the point
where the utilities feed power to the facility, a trend
becomes apparent. Each individual piece of equipment takes
on increasingly more importance because it controls electrical
current to increasingly more pieces of equipment that are
at the point where revenues are generated. The EDS data
gathered during this second walk-through is input to the
programs used to analyze the EDS. The program then begins
the process of quantifying the total risk for each individual
component and connected group of components in the EDS.
Quantifying risk
The method quantifies the two aspects of risk by applying
the probability of downtime caused by failure of an EDS
component and the costs of the equipment, maintenance and
consequences to the facility if the equipment goes down.
The consequences to the facility are the aspects of risk
that are often overlooked when making maintenance management
decisions. As an example, suppose a circuit breaker controls
critical equipment in a facility that, if failure should
occur, would shut down 100 percent of its revenue-generating
capacity for 16 hours. The exact same type of circuit breaker
located next to it controls critical equipment that, if
the same failure occurred, would cause the plant to lose
50 percent of its revenue-generating capacity for 16 hours.
All else being equal, the probability of the two identical
breakers failing is the same. The dollar value to replace
the two identical breakers and the time to replace them
are also the same. The difference is the consequence to
the physical plant. The breaker that would have the entire
revenue-generating capacity of the plant down is more important
to the facility than the breaker that would have half of
the plant revenue-generating capacity down for the same
amount of time.
Risk-based prioritizing
Often, as previously stated, the consequences of failure
can have a much higher dollar impact on a facility than
the direct dollars to repair or replace the equipment involved
in the failure. The program developed for the evaluation
of a facility EDS determines the maintenance management
priorities through interviews with key personnel in a facility,
and the replication of the EDS in a computer-simulated model.
Based on the data gathered and the EDS simulation, the two
components of risk are applied to each piece of EDS equipment,
and an analysis is made by computer simulation of every
possible combination of failures of single and multiple
components of the EDS. This analysis determines the likelihood
of each failure scenario and the consequences. The model
then develops a risk-based listing of EDS equipment ranking
each in its relative importance to the facility.
Using this risk-based priority list, the model evaluates
preventive and predictive maintenance corrective actions
and does a cost-benefit analysis to determine the final
list of recommended actions required to minimize failure
of the facility EDS. This is what is called “the unconstrained
list of recommendations.” Because the EDS is computer-simulated
in the model, it is possible to conduct numerous “what
if” scenarios to fit any particular budget constraints.
For instance, if the unconstrained model recommends a list
of activities that should be conducted and the maintenance
budget can support only half of them, the model will determine
the most advantageous recommendations to reduce the probability
of failure of the critical equipment in the EDS.
Other facility support systems
This model is expandable to include other components of
the facility support equipment such as HVAC equipment and
roofs. By using the integrated model, the facility engineer
gets the advantage of equipment prioritization at the facility
level and not just individual components of the facility
support equipment. This integrated approach makes it easy
to compare, for example, the importance of a specific piece
of HVAC equipment to a component of the EDS. This allows
the most effective cost-benefit analysis in the allocation
of resources to assure that all of the facility support
equipment does not fail.
Quantifiable risk-based decision-making to support the
preventive, predictive and reactive maintenance of a facility
assures optimum usage of the available resources to reduce
the probabilities of a breakdown of facility support equipment.
It is the next step in optimizing maintenance management.
FMJ
About the author: Robert
Barr has been an account engineer with The Hartford Steam
Boiler Inspection and Insurance Co. for four years. Prior
to that, he worked as a plant engineer, production manager
and plant manager in food plants for Frito Lay, among other
Fortune 500 Companies for 20 years. He is currently working
with the HSB Engineering Department in the implementation
of the electrical distribution equipment model discussed
in this article.
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