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Cites:

Information Journal Paper

Title

USING NEURAL NETWORK AND GENETIC ALGORITHM TO OBTAIN MAXIMUM RESPONSE OF MISTUNED SYSTEM

Pages

  37-46

Abstract

 Ideally, bladed disk systems are tuned and all blades are identical but, in practice there always exist small, random differences among the blades. Mistuning, imperfections in cyclical symmetry of bladed disks is an inevitable and perilous occurrence due to many factors including manufacturing tolerances and wear in service.It can cause some unpredictable phenomena such as dramatic difference in forced vibration response. In this paper first a finite element model of bladed disk system with 24 blades were created in ANSYS. The model is then used to calculate the frequency response of the blades for the tuned system. Next, two hundred experiments, with different density for each blade, were selected in a specified range. For each test case calculations were performed and the maximum response was obtained. Then, by integrating NEURAL NETWORKs and GENETIC ALGORITHM the worst frequency response of the MISTUNED bladed-disk system was calculated. The problem of finding the worst specification is formulated as an optimization problem subjected to constraints such as the manufacturing tolerances. Based on the calculated parameters, a new model was created and the maximum response of the MISTUNED system was calculated. The results indicate that the responses obtained from the NEURAL NETWORK and GENETIC ALGORITHM have reasonable accuracy and are in good agreement with responses obtained from the ANSYS and shows the efficiency of the method.

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  • Cite

    APA: Copy

    RAEISI ESTABRAGH, EHSAN, ZIAEI RAD, SAEED, & DEHGHAN, HOSSEIN. (2011). USING NEURAL NETWORK AND GENETIC ALGORITHM TO OBTAIN MAXIMUM RESPONSE OF MISTUNED SYSTEM. JOURNAL OF SOLID AND FLUID MECHANICS, 1(2), 37-46. SID. https://sid.ir/paper/212774/en

    Vancouver: Copy

    RAEISI ESTABRAGH EHSAN, ZIAEI RAD SAEED, DEHGHAN HOSSEIN. USING NEURAL NETWORK AND GENETIC ALGORITHM TO OBTAIN MAXIMUM RESPONSE OF MISTUNED SYSTEM. JOURNAL OF SOLID AND FLUID MECHANICS[Internet]. 2011;1(2):37-46. Available from: https://sid.ir/paper/212774/en

    IEEE: Copy

    EHSAN RAEISI ESTABRAGH, SAEED ZIAEI RAD, and HOSSEIN DEHGHAN, “USING NEURAL NETWORK AND GENETIC ALGORITHM TO OBTAIN MAXIMUM RESPONSE OF MISTUNED SYSTEM,” JOURNAL OF SOLID AND FLUID MECHANICS, vol. 1, no. 2, pp. 37–46, 2011, [Online]. Available: https://sid.ir/paper/212774/en

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