van Mourik Anke M, Daffertshofer Andreas, Beek Peter J
Research Institute MOVE, Faculty of Human Movement Sciences, VU University Amsterdam, The Netherlands.
J Mot Behav. 2008 May;40(3):214-31. doi: 10.3200/JMBR.40.3.214-231.
The authors examined the dynamics governing rhythmic forearm movements that 9 participants performed under a variety of task constraints by using a generic, unbiased analysis technique for extracting the drift coefficients of Fokker-Planck equations from stochastic data. From those coefficients, they reconstructed and analyzed vector fields and phase portraits to identify characteristic, task-dependent kinematic and dynamical features. They first directly estimated the parameters of weakly nonlinear self-sustaining oscillators from the extracted drift coefficients. The estimated parameters that the authors had selected instinctively and then particularized by using averaging methods largely confirmed previously derived limit-cycle models. Next, they ventured beyond limit-cycle models to examine global and local dynamical features that those models cannot adequately address, particularly task-dependent changes in flow strength and curvature and distinct dynamical features associated with flexion and extension. The authors argue that those features should be focal points of researchers' future modeling efforts to formulate a more adequate and encompassing account of the dynamics of rhythmic movement.
作者通过使用一种通用的、无偏的分析技术,从随机数据中提取福克-普朗克方程的漂移系数,研究了9名参与者在各种任务约束下进行的有节奏前臂运动的动力学。根据这些系数,他们重建并分析了向量场和相图,以识别特征性的、与任务相关的运动学和动力学特征。他们首先从提取的漂移系数中直接估计弱非线性自持振荡器的参数。作者本能选择然后通过平均方法具体化的估计参数在很大程度上证实了先前推导的极限环模型。接下来,他们超越了极限环模型,以研究那些模型无法充分解决的全局和局部动力学特征,特别是与任务相关的流动强度和曲率变化以及与屈伸相关的独特动力学特征。作者认为,这些特征应该是研究人员未来建模工作的重点,以便更充分、更全面地描述有节奏运动的动力学。