Estimation of maintenance indicators for Rumaila Power Station
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Abstract
Abstract:
The research aims to employ the Modified Cubic Transmuted Sujatha distribution (MCT-SUJATHA) to estimate the maintenance indicators of the fifth turbine in Rumaila Power Station, which are represented in (Estimation of Mean Time Between Failures (MTBF), Mean Time to Repair (MTTR), Failure Rate (F.R), and Availability). This is due to the data of the time period between turbine malfunctions and the time period for repair and the probability of survival the turbine working well, and the appropriate distribution of maintenance indicators has been reached, which is the distribution of the modified cubic transmuted (MCT-SUJATHA), The practical application showed that the ratio of the mean time to repair to the mean time between failures was equal to (0.39). This is a good indicator indicating a decrease in failures times or stoppages, which in turn led to an increase in the availability index of the fifth turbine in the Rumaila Power Station, which amounted to (0.719) the percentage of its ability to work and carry out its function.
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References
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