首页> 外文期刊>Meccanica: Journal of the Italian Association of Theoretical and Applied Mechanics >Self-adaptive vibration control of simply supported beam under a moving mass using self-recurrent wavelet neural networks via adaptive learning rates
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Self-adaptive vibration control of simply supported beam under a moving mass using self-recurrent wavelet neural networks via adaptive learning rates

机译:使用自学习小波神经网络通过自适应学习率在运动质量下简支梁的自适应振动控制

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摘要

A self-recurrent wavelet neural network (SRWNN) is used to control suppression of vibration of an Euler-Bernoulli beam under excitation of a moving mass traveling along a vibrating path. The proposed control structure uses one SRWNN as an identifier and one as a controller. The SRWNN identifier is trained to model the dynamic behavior of the process and provide the SRWNN controller with information about system sensitivity. The SRWNN controller uses the sensitivity information provided by the SRWNN identifier to update weights and produce a signal that controls beam vibration. The gradient descent method and adaptive learning rates (ALRs) are used to update all SRWNN weights. The ALRs are obtained using the discrete Lyapunov stability theorem which guarantees the convergence of the proposed control structure. The performance and robustness of the proposed controller are evaluated at different mass ratios of moving mass to beam and for dimensionless velocity of a moving mass. The simulations verify the effectiveness and robustness of the controller.
机译:自递归小波神经网络(SRWNN)用于控制在沿振动路径传播的运动质量的激励下对Euler-Bernoulli光束的振动抑制。所提出的控制结构使用一个SRWNN作为标识符,使用一个SRWNN作为控制器。对SRWNN标识符进行了训练,以对过程的动态行为进行建模,并为SRWNN控制器提供有关系统灵敏度的信息。 SRWNN控制器使用SRWNN标识符提供的灵敏度信息来更新权重并产生控制光束振动的信号。梯度下降法和自适应学习率(ALR)用于更新所有SRWNN权重。使用离散Lyapunov稳定性定理获得ALR,该定理保证了所提出控制结构的收敛性。在运动质量与梁的质量比不同以及运动质量的无量纲速度下,评估了所提出控制器的性能和鲁棒性。仿真验证了控制器的有效性和鲁棒性。

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