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Parameter identification and robust vibration control of a truck driver's seat system using multi-objective optimization and genetic algorithm

机译:使用多目标优化和遗传算法卡车驾驶员座椅系统的参数识别和鲁棒振动控制

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This paper has developed a 5-DOF driver and seat suspension system model for active vibration control. A novel fast system parameter identification method from vibration measurement data has been proposed for the seat-occupant system based on the multi-objective Genetic Algorithm optimization (GA). This system parameter identification method can identify the seat system parameters of a 5-DOF lumped massspring-dashpot biodynamic seat-occupant model from vibration test results quickly and accurately. Without calculation and measurement of materials, the physical parameters of the seat suspension system such as masses (m), stiffness (k), and damping coefficients (c) are estimated through matching the measured resonant frequency and transmissibility amplitude at a specific frequency with the simulated ones. This is one of the main contributions of this paper. The characteristics of the human body vibration in the low-frequency range are analyzed through the seat to head transmissibility (STHT) ratio. The experimental and simulation results of the STHT values have been calculated and compared to verify each other. The sensitivity analysis of the seat effective amplitude transmissibility (SEAT) values over the seat system parameters have been conducted and validated by the measured results of the transmissibility ratios. A full state feedback controller has been developed to reduce the human body vibration in the seat suspension system, which is another new contribution of this paper. The simulation results show that the proposed controller has better vibration attenuation performance than the conventional PID controller. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文开发了一个5-DOF驱动器和用于主动振动控制的座椅悬挂系统模型。基于多目标遗传算法优化(GA)的座椅占用系统,提出了一种来自振动测量数据的新型快速系统参数识别方法。该系统参数识别方法可以快速准确地从振动测试结果识别5-DOF集成的压头 - DASHPOT生物动力学座椅占用模型的座椅系统参数。无需计算和测量材料,通过将测量的谐振频率和特定频率以特定频率匹配,估计诸如质量(m),刚度(k)和阻尼系数(c)的座椅悬架系统的物理参数估计模拟的。这是本文的主要贡献之一。通过座椅分析低频范围内的人体振动的特性以使头部传输(STHT)的比率分析。已经计算了STHT值的实验和仿真结果,并比较了彼此验证。通过测量的透射性比率进行并验证座椅系统参数上的座椅有效幅度传输(座椅)值的灵敏度分析。已经开发出全状态反馈控制器以减少座椅悬架系统中的人体振动,这是本文的另一个新贡献。仿真结果表明,该控制器具有比传统PID控制器更好的振动衰减性能。 (c)2020 elestvier有限公司保留所有权利。

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