1
Project Summary
Machinery for
manufacturing and plant/asset operation needs to be maintained to ensure
continued functionality. Preventative maintenance
is not sufficient to avoid unscheduled and costly downtime of equipment,
particularly those
that involve heavy
loads and intermittent service.
Traditionally maintenance
has followed the philosophy of either run-to-failure or planned maintenance
at regular intervals. Each of these approaches has been found to be more
expensive and time-consuming when compared to condition-based methods,
under which the condition of a machine is monitored and maintenance is only
undertaken if conditions warrant it. This method equally applies to
manufacturing processes where the settings of some machines or components
may need to be altered based on the monitored condition of the process.
There exists a great need
within the DoD and industry for reliable, cost effective condition-based
maintenance (CBM) systems. CBM when correctly implemented reduces costs,
improves safety, extends life and yields products of better quality in
manufacturing. Such systems can only
emerge from adequate
research and development in the areas of monitoring, diagnostics and
efficient modeling of the CBM system.
Improved prognostic data
would enable more accurate development of depot and intermediate level work
packages and save man-hours by enhancing existing CBM methodologies to
improve machinery availability and reduce costly emergent repairs. It is
widely recognized that unplanned emergency maintenance is up to
ten times more costly
than planned maintenance. Even in the case of “emergent” work during
planned availability (Naval vessels) the cost is 175% of work bid in an
initial work package.
In the case of the CVN/CV,
fleet studies show that some 20% of funding for each ship availability is
spent on various repairs to rotating machinery ($2 million). An additional
$10K is spent on express shipping of critical parts. NAVSEA estimates
regarding earlier detection of needed work, suggest a saving of in excess of
$250,000 per ship per availability for emergent work. In addition,
substantial savings would be generated from reducing failure of equipment at
sea. It has been forecast that total savings for the CVN/CV fleet would be
in the order of $32 million.
In the modern military
and industrial setting, there exist many methods for assessing the
condition of
machines, with vibration analysis being
most commonly used and
understood. To a lesser extent, other techniques such as thermography
and wear monitoring are also adopted.
The significant
advancements in development of high-frequency acoustic emission (AE) have
provided another option for monitoring the condition of rotating equipment.
During controlled laboratory based tests, AE has shown the ability to detect
faults earlier than more traditional and established methods of condition
monitoring.
The aim of the Damage and
Wear project was to investigate the comparative effectiveness and ease of
use of AE, vibration analysis and some supplementary signals in the areas of
machine condition monitoring and diagnostics. The goal was to develop a
simple and cost-effective method of early detection of failure in rotating
machinery to:
-
Qualitatively assess a machine’s condition
-
Rank identical machines against one
another
-
Monitor the rate of degradation
-
Provide information as to when
intervention was required.
The breadth of
applications ranged from traditional rotating equipment (motors, pumps, and
fans that operate as low as ½ rpm) to leaking valves, seals and even cracks
in machinery structures.
1.1
Project Partners
-
IMES Inc. (formerly Water Weights)
-
NCMS
-
Cincinnati Machine
-
Ford Motor Company
-
Ford Windsor Aluminum Plant
-
Ford Sharonville Transmission Plant
-
Ford Van Dyke Transmission Plant
-
Ford Essex Engine Plant
-
Ford Windsor Casting Plant
1.2
Main Findings
Use of AE technology by
project partners was new compared to years of experience using vibration
analysis. In particular, there was concern over the reliability of some of
the collected AE data due to the technology’s dependency on a good coupling
between the sensor and the machine under test.
From the results, it
appears that the use of an
AE signal is indeed
viable, and serves as a strong complement to vibration analysis.
While the science of detailed diagnostics by AE is still being developed, a
combination of AE and vibration analysis seems to be a viable solution that
is ready for application now.
The challenges of this
application have been explored with hands-on usage results, with respect to
a prototype AE monitor, the PUMA™ Bearing Health Monitor. In
summary the main findings of the project were:
-
The PUMA™ Bearing
Health Monitor AE sensor and data acquisition system appears to be
accurate and useful, although a number of improvements to the prototype
unit are suggested. These mainly relate to sensor size, cabling, hook-up
and some software issues (see Section 6.1 for detail).
-
AE signals appear to be
generally faithful vectors of machine condition.
-
RMS
AE signals also appear to be generally useful as vibration
signals when used to trend machine health. In specific cases, such as
for diesel equipment, where background vibrations usually make vibration
monitoring problematic, AE signals may be more useful.
-
AE monitoring appears to have
the advantage of ease of use, if the major concern is to ascertain
whether a machine fault exists and/or is progressing. As at now,
vibration-based diagnostics may then be used for more detailed
investigation of a particular, identified fault situation.
In 53% of cases AE
detected a change in
machine state before vibration analysis. Vibration analysis only
detected a change in machine state before AE in 43% of cases. Overall the
two technologies performed equally in 4% of cases.
From examining the
results, specifically the first technology to detect changes in the trend of
readings, it can be seen that AE does provide advanced warning over
vibration analysis. The consistency of the results obtained from AE is
generally lower than those obtained with vibration analysis technology;
however, the variation in the performance of AE technology across different
sites may be attributed to the processes applied to taking the readings when
using the AE instrument.
The most appropriate
technology for each machine type monitored during the project was collated
from the results of the analyses performed on the data collected during the
project. The results are shown in Table 1-1.
It can be seen that AE
outperformed vibration for the majority of machine types. Vibration analysis
appears to perform marginally better than AE for the assessment of the
health gearboxes and low-speed axles.
1.3
Benefits
Depot users agreed that
the PUMA™ Bearing Health Monitor was a useful addition to their
suite of machine-monitoring tools.
1.3.1
Albany MC3
Albany has reported the
AE equipment provided by the Damage and Wear project is still in use and
considered a success. The technology works even better with a well-planned
preventative maintenance program. The equipment proved to be a value in the
fact that it identified pending
failures in production equipment before an actual failure occurred. A
great potential is seen in a networking system if a permanent mount sensor
could be manufactured at a reasonable price. Future plans are to expand
usage and possibly automate the process throughout the depot. In addition,
there is an interest in development of a project to see if this technology
will work on diesel engines.
Table 1-1. Summary
of Most Appropriate Technology for Each Machine Type
|
Machine Type |
1st to Respond |
Most Sensitive |
Most Appropriate |
|
Fan/Blower |
AE |
AE |
AE |
|
Pump |
AE |
AE |
AE |
|
Trunnion |
AE |
AE |
AE |
|
Compressor |
AE |
AE |
AE |
|
Motor
(Electric) |
Similar |
Similar |
Either |
|
Spindle
(High-Speed) |
Similar |
Similar |
Either |
|
Compressor
(Screw) |
Similar |
Similar |
Either |
|
Gearbox |
Similar |
Vibration |
Vibration |
|
Axle
(Low-Speed) |
Similar |
Vibration |
Vibration |
|
Generator
(Steam) |
Insufficient number of machines in
results population to draw any firm conclusions |
|
Generator
(Diesel) |
|
Crank |
|
Turbine
(Steam) |
|
Engine
(Diesel) |
1.3.2
Portsmouth Naval Shipyard
Portsmouth used the
Damage and Wear equipment on cranes and indicated that it is far better than
Fast Fourier Transform (FFT). However, at this time, without the support of
their business office and the BRAC outcome, Portsmouth cannot move the
technology forward towards real-time monitoring using wireless technology.
1.4
Conclusions
From the recorded data,
AE correlates to a level considered “Good” or ”Fair” in 80.5% of cases.
However, considering that the operators are inexperienced in the use of AE
equipment, this statistic becomes more significant. Using a simple AE
instrument, relatively novice operators were able to obtain a similar level
of trending information to that obtained from vibration analysis.
During the project period
AE performed better than vibration analysis or at a similar level on the
majority of machine types with a large enough population from which to draw
conclusions.
The consistency of
results obtained from the AE
instrument does vary
across the sites that participated in the project. It is believed
that this is due to
the processes used to acquire the AE readings,
because as project
partners became more familiar with the instrument the consistency of
results improved.
It appears, from this
project, that AE is an effective tool for the assessment of machine health.
AE has performed more effectively than vibration analysis in terms of being
the first technology to detect a change in machine state and in the relative
magnitude of response for a change in machine health. However, it should be
recognized that the AE instrument supplied does not have the same diagnostic
capabilities as the more widely available vibration analysis technology,
although the AE instrument is simpler and more suitable for a novice
operator. From this, it would be logical to conclude that, for optimum
machinery fault detection, a combination of the earlier detection of AE
technology and vibration analysis technology’s diagnosis capabilities should
be used.
The prototype AE PUMA™
Bearing Health Monitor has performed well overall. Unfortunately some
project partners ceased using equipment driven more by logistic, economic
and other issues rather than “lack of performance.”
1.5
Further Work
As expected, there is
work to be done on the existing prototype AE hardware before it is ready for
full-scale commercial use. Most importantly, the sensor size has to be
reduced, but there is also work to be done on the process
used to take readings.
It is hoped that a reduction in AE sensor size will permit it to be
positioned closer to the component under test, and by optimizing the process
used to take readings, that the consistency of the readings taken with this
particular piece of AE technology can be improved so that it becomes a
valuable tool for plant managers.
This project has
determined that AE provided warning of a change in machine state before
vibration in a majority of cases, and equally that the relative magnitude of
response from AE technology is higher for a change in machine state than it
is from vibration technology. In a majority of cases these assessments have
been obtained qualitatively.
It is strongly suggested
that a project be initiated to fully quantify improvements AE offers over
vibration technology and at the same time calculate detailed projected
savings for specific military and industrial use.