A Weibull Distribution describes the type of failure mode experienced by the population (infant mortality, early wear out, random failures, rapid wear-out). Estimates are given for Beta (shape factor) and Eta (scale). MTBF (Mean Time Between Failures) is based on characteristic life curve, not straight arithmetic average.
A Weibull Distribution uses the following parameters:
If the value of Beta is greater than one (1), you can perform Preventative Maintenance (PM) Optimizations. A Gamma different from a value zero (0) means that the distribution is shifted to fit the datapoints more closely.
Note: This is an advanced feature and should be used in the proper context and with a good understanding of how to apply a three-parameter Weibull distribution.
You can use the following information to compare the results of individual Weibull analyses. The following results are for good populations of equipment.
Beta Values Weibull Shape Factor | ||||||
---|---|---|---|---|---|---|
Components |
Low |
Typical |
High |
Low (days) |
Typical (days) |
High (days) |
Ball bearing |
0.7 |
1.3 |
3.5 |
583 |
1667 |
10417 |
Roller bearings |
0.7 |
1.3 |
3.5 |
375 |
2083 |
5208 |
Sleeve bearing |
0.7 |
1 |
3 |
417 |
2083 |
5958 |
Belts drive |
0.5 |
1.2 |
2.8 |
375 |
1250 |
3792 |
Bellows hydraulic |
0.5 |
1.3 |
3 |
583 |
2083 |
4167 |
Bolts |
0.5 |
3 |
10 |
5208 |
12500 |
4166667 |
Clutches friction |
0.5 |
1.4 |
3 |
2792 |
4167 |
20833 |
Clutches magnetic |
0.8 |
1 |
1.6 |
4167 |
6250 |
13875 |
Couplings |
0.8 |
2 |
6 |
1042 |
3125 |
13875 |
Couplings gear |
0.8 |
2.5 |
4 |
1042 |
3125 |
52083 |
Cylinders hydraulic |
1 |
2 |
3.8 |
375000 |
37500 |
8333333 |
Diaphragm metal |
0.5 |
3 |
6 |
2083 |
2708 |
20833 |
Diaphragm rubber |
0.5 |
1.1 |
1.4 |
2083 |
2500 |
12500 |
Gaskets hydraulics |
0.5 |
1.1 |
1.4 |
29167 |
3125 |
137500 |
Filter oil |
0.5 |
1.1 |
1.4 |
833 |
1042 |
5208 |
Gears |
0.5 |
2 |
6 |
1375 |
3125 |
20833 |
Impellers pumps |
0.5 |
2.5 |
6 |
5208 |
6250 |
58333 |
Joints mechanical |
0.5 |
1.2 |
6 |
58333 |
6250 |
416667 |
Knife edges fulcrum |
0.5 |
1 |
6 |
70833 |
83333 |
695833 |
Liner recip. comp. cyl. |
0.5 |
1.8 |
3 |
833 |
2083 |
12500 |
Nuts |
0.5 |
1.1 |
1.4 |
583 |
2083 |
20833 |
"O"-rings elastomeric |
0.5 |
1.1 |
1.4 |
208 |
833 |
1375 |
Packings recip. comp. rod |
0.5 |
1.1 |
1.4 |
208 |
833 |
1375 |
Pins |
0.5 |
1.4 |
5 |
708 |
2083 |
7083 |
Pivots |
0.5 |
1.4 |
5 |
12500 |
16667 |
58333 |
Pistons engines |
0.5 |
1.4 |
3 |
833 |
3125 |
7083 |
Pumps lubricators |
0.5 |
1.1 |
1.4 |
542 |
2083 |
5208 |
Seals mechanical |
0.8 |
1.4 |
4 |
125 |
1042 |
2083 |
Shafts cent. pumps |
0.8 |
1.2 |
3 |
2083 |
2083 |
12500 |
Springs |
0.5 |
1.1 |
3 |
583 |
1042 |
208333 |
Vibration mounts |
0.5 |
1.1 |
2.2 |
708 |
2083 |
8333 |
Wear rings cent. pumps |
0.5 |
1.1 |
4 |
417 |
2083 |
3750 |
Valves recip comp. |
0.5 |
1.4 |
4 |
125 |
1667 |
3333 |
Equipment Assemblies |
Low |
Typical |
High |
Low (days) |
Typical (days) |
High (days) |
Circuit breakers |
0.5 |
1.5 |
3 |
2792 |
4167 |
58333 |
Compressors centrifugal |
0.5 |
1.9 |
3 |
833 |
2500 |
5000 |
Compressor blades |
0.5 |
2.5 |
3 |
16667 |
33333 |
62500 |
Compressor vanes |
0.5 |
3 |
4 |
20833 |
41667 |
83333 |
Diaphgram couplings |
0.5 |
2 |
4 |
5208 |
12500 |
25000 |
Gas turb. comp. blades/vanes |
1.2 |
2.5 |
6.6 |
417 |
10417 |
12500 |
Gas turb. blades/vanes |
0.9 |
1.6 |
2.7 |
417 |
5208 |
6667 |
Motors AC |
0.5 |
1.2 |
3 |
42 |
4167 |
8333 |
Motors DC |
0.5 |
1.2 |
3 |
4 |
2083 |
4167 |
Pumps centrifugal |
0.5 |
1.2 |
3 |
42 |
1458 |
5208 |
Steam turbines |
0.5 |
1.7 |
3 |
458 |
2708 |
7083 |
Steam turbine blades |
0.5 |
2.5 |
3 |
16667 |
33333 |
62500 |
Steam turbine vanes |
0.5 |
3 |
3 |
20833 |
37500 |
75000 |
Transformers |
0.5 |
1.1 |
3 |
583 |
8333 |
591667 |
Instrumentation |
Low |
Typical |
High |
Low (days) |
Typical (days) |
High (days) |
Controllers pneumatic |
0.5 |
1.1 |
2 |
42 |
1042 |
41667 |
Controllers solid state |
0.5 |
0.7 |
1.1 |
833 |
4167 |
8333 |
Control valves |
0.5 |
1 |
2 |
583 |
4167 |
13875 |
Motorized valves |
0.5 |
1.1 |
3 |
708 |
1042 |
41667 |
Solenoid valves |
0.5 |
1.1 |
3 |
2083 |
3125 |
41667 |
Transducers |
0.5 |
1 |
3 |
458 |
833 |
3750 |
Transmitters |
0.5 |
1 |
2 |
4167 |
6250 |
45833 |
Temperature indicators |
0.5 |
1 |
2 |
5833 |
6250 |
137500 |
Pressure indicators |
0.5 |
1.2 |
3 |
4583 |
5208 |
137500 |
Flow instrumentation |
0.5 |
1 |
3 |
4167 |
5208 |
416667 |
Level instrumentation |
0.5 |
1 |
3 |
583 |
1042 |
20833 |
Electro-mechanical parts |
0.5 |
1 |
3 |
542 |
1042 |
41667 |
Static Equipment |
Low |
Typical |
High |
Low (days) |
Typical (days) |
High (days) |
Boilers condensers |
0.5 |
1.2 |
3 |
458 |
2083 |
137500 |
Pressure vessels |
0.5 |
1.5 |
6 |
52083 |
83333 |
1375000 |
Filters strainers |
0.5 |
1 |
3 |
208333 |
208333 |
8333333 |
Check valves |
0.5 |
1 |
3 |
4167 |
4167 |
52083 |
Relief valves |
0.5 |
1 |
3 |
4167 |
4167 |
41667 |
Service Liquids |
Low |
Typical |
High |
Low (days) |
Typical (days) |
High (days) |
Coolants |
0.5 |
1.1 |
2 |
458 |
625 |
1375 |
Lubricants screw compr. |
0.5 |
1.1 |
3 |
458 |
625 |
1667 |
Lube oils mineral |
0.5 |
1.1 |
3 |
125 |
417 |
1042 |
Lube oils synthetic |
0.5 |
1.1 |
3 |
1375 |
2083 |
10417 |
Greases |
0.5 |
1.1 |
3 |
292 |
417 |
1375 |
GE Digital APM Reliability shows the failure pattern of a single piece of equipment or groups of similar equipment using Weibull analysis methods. This helps you determine the appropriate repair strategy to improve reliability.
Follow these steps to determine whether or not the plot is a good fit:
The following chart demonstrates how to interpret the Weibull analysis data using the Beta parameter, Eta parameter, and typical failure mode to determine a failure cause.
Weibull Results | Interpretation | ||
---|---|---|---|
Beta |
Eta |
Typical Failure Mode |
Failure Cause |
Greater than 4 |
Low compared with standard values for failed parts (less than 20%) |
Old age, rapid wear out (systematic, regular) |
Poor machine design |
Greater than 4 |
Low compared with standard values for failed parts (less than 20%) |
Old age, rapid wear out (systematic, regular) |
Poor material selection |
Between 1 and 4 |
Low compared with standard values for failed parts (less than 20%) |
Early wear out |
Poor system design |
Between 1 and 4 |
Low |
Early wear out |
Construction problem |
Less than 1 |
Low |
Infant Mortality |
Inadequate maintenance procedure |
Between 1 and 4 |
Between 1 and 4 |
Less than manufacturer recommended PM cycle |
Inadequate PM schedule
|
Around 1 |
Much less than |
Random failures with definable causes |
Inadequate operating procedure |
A Goodness of Fit test is a statistical test that determines whether the analysis data follows the distribution model.
Weibull results are valid if Goodness of Fit (GOF) tests are satisfied. Goodness of Fit tests for a Weibull distribution include the following types:
Note:The R-Squared test statistic is calculated only for reference. The GE Digital APM system uses the Kolmogorov-Smirnov test as the Goodness of Fit test.
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