Failure rate is the frequency with which an engineered system or component fails. Usually it is expressed in a number of failures per time period, like failures per hour. It is often written as the Greek letter λ (lambda) and is important in reliability theory. In practice, the closely related Mean Time Between Failures is more commonly expressed and used for high quality components or systems.
Failure rate usually increases with time. For example, a car failure rate in its fifth year of service may be many times greater than in the first year of service. Nobody expects to replace an exhaust pipe or worn brake pads in a new car.
Mean Time Between Failures is closely related to failure rate. If the likelihood of failure is constant with respect to time (for example, in some product like a brick or protected steel beam), and ignoring the time to recover from failure, failure rate is simply the inverse of the Mean Time Between Failures (MTBF). MTBF is an important specification parameter in all aspects of high importance engineering design–such as naval architecture, aerospace engineering, automotive design, etc.–in short, any task where failure in a key part or of the whole of a system needs be minimized and stopped, particularly where lives might be lost if such factors are not taken into account. These factors account for many safety and maintenance practices in engineering and industry practices and government regulations, such as how often inspections and overhauls are required on an aircraft.
A similar ratio used in the transport industries, especially in railways and trucking is 'Mean Distance Between Failure', a variation which attempts to correlate actual loaded distances to similar reliability needs and practices.
Failure rates are important factors in insurance, business, and regulation practices as well as fundamental to design of safe systems throughout a national or international economy.
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Continuous data | |
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Count data | |
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Summary tables | |
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Dependence | |
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Graphics |
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Study design |
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Survey methodology | |
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Observational Studies |
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Statistical theory | |
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Frequentist inference | Point estimation |
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Interval estimation | |
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Testing hypotheses |
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Parametric tests |
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Specific tests | | Goodness of fit | |
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Bayesian inference | |
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Partition of variance |
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Categorical / Multivariate / Time-series / Survival analysis |
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Categorical |
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Multivariate |
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Time domain |
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Frequency domain | |
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Survival | Survival function |
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Hazard function | |
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Test | |
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Biostatistics | |
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Social statistics | |
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