A prediction of reliability is an important element in the process of selecting equipment for use by telecommunications service providers and other buyers of electronic equipment, and it is essential during the design stage of engineering systems life cycle. Reliability is a measure of the frequency of equipment failures as a function of time. has a major impact on maintenance and repair costs and on the continuity of service.
Every product has a failure rate, û which is the number of units failing per unit time. This failure rate changes throughout the life of the product. It is the manufacturer's aim to ensure that product in the âÂÂinfant mortality periodâ does not get to the customer. This leaves a product with a useful life period during which failures occur randomly i.e., û is constant, and finally a wear-out period, usually beyond the product's useful life, where û is increasing.
A practical definition of reliability is âÂÂthe probability that a piece of equipment operating under specified conditions shall perform satisfactorily for a given period of timeâÂÂ. The reliability is a number between 0 and 1 respectively.
MTBF (mean operating time between failures) applies to equipment that is going to be repaired and returned to service, MTTF (mean time to failure) applies to parts that will be thrown away on failing. During the âÂÂuseful life periodâ assuming a constant failure rate, MTBF is the inverse of the failure rate and the terms can be used interchangeably.
Reliability predictions:
The telecommunications industry has devoted much time over the years to concentrate on developing reliability models for electronic equipment. One such tool is the automated reliability prediction procedure (ARPP), which is an Excel-spreadsheet software tool that automates the reliability prediction procedures in SR-332, Reliability prediction procedure for electronic equipment. FD-ARPP-01 provides suppliers and manufacturers with a tool for making reliability prediction procedure (RPP) calculations. It also provides a means for understanding RPP calculations through the capability of interactive examples provided by the user.
The RPP views electronic systems as hierarchical assemblies. Systems are constructed from units that, in turn, are constructed from devices. The methods presented predict reliability at these three hierarchical levels:
Data-driven models for reliability prediction utilise data acquired from tests to failure on electronic components by establishing relationships between the different variables presented in the data. As such relationships can be complex, data-driven models often require computations in high dimensions, which means that a large dataset is needed to optimize the output of the model.
Physics based reliability predictions use physical equations and formulae to determine failure. This approach requires precise knowledge of the degradation process and the physical properties to ensure accuracy. These models often utilise numerical simulations to infer the quantities needed by the model.