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IDENTIFY AND CLASSIFY VIBRATION FAULT BASED ON ARTIFICIAL INTELLIGENCE TECHNIQUES

机译:基于人工智能技术的振动分类识别与分类

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Steam turbines (ST) need to be protected from damaging faults in the event it ends up in a danger zone. Some examples of faults include vibration, thrust, and eccentricity. Vibration fault represents one of the challenges to designers, as it could cause massive damages and its fault signal is rather complex. Researches in the field intend to prevent or diagnose vibration faults early in order to reduce the cost of maintenance and improve the reliability of machine production. This work aims to diagnose and classify vibration faults by utilized many schemes of Artificial Intelligence (AI) technique and signal processing, such as Fuzzy logic-Sugeno FIS (FLS), Back Propagation Neural Network (BPNN) hybrid with FL-Sugeno (NFS), and BPNN hybrid with FL-Mamdani FIS (NFM). The signal of the fault and the design of the FL and NN were done using MATLB. The results will be compared based on its ability to feed the output signal to the control system without disturbing system behavior. The results showed that the NFS scheme is able to generate linear and stable signals that could be fed to modify the main demand of the ST protection system. This work concluded that the hybrid of more than one AI technique will improve the reliability of protection system and generate smooth signals that are proportional to the fault level, which can then be used to control the speed and generated power in order to prevent the increase of vibration faults.
机译:如果蒸汽轮机(ST)最终进入危险区域,则需要保护其免受破坏性故障的影响。故障的一些示例包括振动,推力和偏心率。振动故障是设计人员面临的挑战之一,因为它可能造成巨大的损害,并且其故障信号相当复杂。该领域的研究旨在及早预防或诊断振动故障,以降低维护成本并提高机器生产的可靠性。这项工作旨在通过利用多种人工智能(AI)技术和信号处理方案来诊断和分类振动故障,例如模糊逻辑-Sugeno FIS(FLS),反向传播神经网络(BPNN)与FL-Sugeno(NFS)混合以及BPNN与FL-Mamdani FIS(NFM)的混合体。故障信号以及FL和NN的设计均使用MATLB完成。将基于其将输出信号馈送到控制系统而不干扰系统行为的能力来比较结果。结果表明,NFS方案能够生成线性且稳定的信号,可以将其馈入以修改ST保护系统的主要需求。这项工作得出的结论是,多种AI技术的混合将提高保护系统的可靠性,并生成与故障水平成比例的平滑信号,然后将其用于控制​​速度和所产生的功率,以防止功率的增加。振动故障。

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