Optimizing the parameters of a biodynamic responses to vibration model using Particle Swarm and Genetic Algorithms

N. Nawayseh, A. Jarndal, Sadeque Hamdan
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引用次数: 5

Abstract

Various local optimization techniques such as Interior Point Algorithm have been widely used to optimize the parameters of models representing biodynamic responses to vibration. The quality of the obtained solutions depends on the initial guesses. This paper presents a comparison between the performance of Particle Swarm Optimization and Genetic Algorithm in optimizing the parameters of a human body model, where these techniques do not require initial guesses. The model represents the vertical apparent mass and the fore-and-aft cross-axis apparent mass of the seated human body during vertical excitation. With both optimization methods, the model provided close fits to the moduli and phases for both median data and the responses of 12 individual subjects. However, it was noted that using PSO provided a better solution with less mean error than GA and a faster solution in most of the cases.
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利用粒子群和遗传算法优化生物动力响应振动模型的参数
各种局部优化技术,如内点算法,已被广泛用于优化生物动力响应模型的参数。得到的解的质量取决于最初的猜测。本文比较了粒子群算法和遗传算法在优化人体模型参数方面的性能,这些技术不需要初始猜测。该模型表示人体在垂直激励下的垂直视质量和前后横轴视质量。通过两种优化方法,该模型对中位数数据和12个个体受试者的反应都提供了接近的模和相位拟合。然而,有人指出,在大多数情况下,使用粒子群算法提供了比遗传算法更好的解决方案,平均误差更小,解决方案更快。
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