2020
DOI: 10.18517/ijaseit.10.4.12211
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Estimation the Natural Frequencies of a Cracked Shaft Based on Finite Element Modeling and Artificial Neural Network

Abstract: The early detection of faults in rotating systems considers an integral approach that has received considerable attention from the industrial sector, as it contributes to preventing catastrophic failures in machines. In this research, the natural frequencies of a shaft, when it is healthy and when cracks with different depths are introduced, have been calculated. The deviation of the computed natural frequencies from the healthy ones is counted as a sign of the presence of an abnormality in the system. For thi… Show more

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Cited by 8 publications
(6 citation statements)
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“…The optimization of project development procedures and the enhancement of the overall efficacy of investments in renewable energy are both positively impacted in this way. The utilization of artificial intelligence and machine learning technology enables the forecasting of maintenance needs in renewable energy infrastructure [127]- [129]. This is accomplished by analyzing data from sensors and monitoring equipment in order to identify potential equipment problems in advance.…”
Section: Photovoltaic Thermal Systemmentioning
confidence: 99%
“…The optimization of project development procedures and the enhancement of the overall efficacy of investments in renewable energy are both positively impacted in this way. The utilization of artificial intelligence and machine learning technology enables the forecasting of maintenance needs in renewable energy infrastructure [127]- [129]. This is accomplished by analyzing data from sensors and monitoring equipment in order to identify potential equipment problems in advance.…”
Section: Photovoltaic Thermal Systemmentioning
confidence: 99%
“…2) Predictive maintenance and condition monitoring Predictive maintenance and condition monitoring, which employ machine learning, are regarded as revolutionary in the marine industry. These methods are anticipated to significantly improve vessel dependability, operational efficiency, and cost-effectiveness [100], [101]. Machine learning empowers ship operators to detect and rectify potential equipment malfunctions proactively.…”
Section: ) Autonomous Navigation and Shippingmentioning
confidence: 99%
“…In engineering and applied sciences, Finite Element Analysis (FEA) is of paramount importance, serving as a potent computational tool for simulating and analyzing complex structures and systems [66][67][68]. FEA has made a great contribution to UAV analysis due to their capability of structural analyzing, design, and topology optimization [38,69,70].…”
Section: Finite Element Analysis Approachmentioning
confidence: 99%