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Identification of Hybrid Dynamical Models for Human Movement via Switched System Optimal Control.

机译:通过切换系统最优控制来识别人体运动的混合动力模型。

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摘要

The empirical observation of human locomotion has found considerable utility in the diagnosis of numerous neuromuscular pathologies. Unfortunately without the construction of a dynamical system model of the measured gait, the effectualness of these observations is restricted to just the existing diagnostic variety rather than the prediction of potential instabilities in gait or guiding the construction of user specific prosthetics. In order to construct a dynamical system model of an observed gait in an automated fashion, one requires a family of representations rich enough to describe the dynamics of gait and an automated procedure to select a particular representation capable of describing a given observation from this family.;The goal of this thesis is to address these two problems. First, a hybrid dynamical system representation is introduced that is shown to be capable of describing the discontinuities in dynamics that occur during locomotion. In particular, such a representation is constructible from observation given an unconstrained Lagrangian which is intrinsic to the biped after the identification of the sequence of contact points that are enforced during the observed motion. Second, a specific hybrid dynamical system representation is shown to be constructible from observed data by optimally switching between the set of vector fields corresponding to all possible combinations of contact point enforcements.;At this point an algorithm for the computation of an optimal control of constrained nonlinear switched dynamical systems is devised. The control parameter for such systems include a continuous-valued input and discrete-valued input, where the latter corresponds to the mode of the switched system that is active at a particular instance in time. The presented approach, which this thesis proves converges to local minimizers of the constrained optimal control problem, first relaxes the discrete-valued input, performs traditional optimal control, and then projects the constructed relaxed discrete-valued input back to a pure discrete-valued input by employing an extension of the classical Chattering Lemma. This algorithm is extended by formulating a computationally implementable algorithm that works by discretizing the time interval over which the switched dynamical system is defined. Importantly, this thesis proves that the implementable algorithm constructs a sequence of points by recursive application that converge to the local minimizers of the original constrained optimal control problem. Four simulation experiments are included to validate the theoretical developments and illustrate its superiority when compared to standard mixed integer optimization techniques.;The thesis concludes by applying the presented algorithm to perform the identification of a hybrid dynamical system representation of two classes of gaits. The first is a synthetic gait generated by the application of feedback linearization to a classical robotic bipedal model. For this synthetic observation, the presented identification scheme is able to correctly identify the correct model. The second set of gaits is one constructed from motion capture observations of 9 subjects during a flat ground walking experiment. For each subject, the presented identification scheme determines a distinct hybrid dynamical system representation. Surprisingly, the identified models for each participant share an identical discrete structure, or an identical sequence of contact point enforcements.
机译:对人类运动的经验观察发现在诊断许多神经肌肉病理学方面具有相当大的实用性。不幸的是,如果没有构建一个被测步态的动力学系统模型,这些观察结果的有效性就仅限于现有的诊断品种,而不是对步态中潜在的不稳定性的预测或指导用户专用假肢的构建。为了以自动化的方式构建观察到的步态的动力学系统模型,需要一个足够丰富的表征来描述步态的动力学的表示形式,并需要一种自动过程来选择能够从该家族中描述给定观察结果的特定表征。本文的目的是解决这两个问题。首先,介绍了一种混合动力系统表示形式,该表示形式能够描述运动过程中发生的动力学不连续性。特别是,在确定不受约束的拉格朗日坐标的基础上,从观察中可以构造这种表示形式,该坐标对两足动物是固有的,这是在确定观察到的运动期间强制执行的接触点序列之后。其次,通过在与接触点执行的所有可能组合相对应的向量场集合之间进行最佳切换,可以显示出一种特定的混合动力系统表示形式,可从观察到的数据中构造出该点;此时,一种用于计算约束条件最优控制的算法设计了非线性切换动力系统。用于此类系统的控制参数包括连续值输入和离散值输入,其中后者对应于在特定时间点处于活动状态的交换系统的模式。本文证明了所提出的方法收敛于约束最优控制问题的局部极小值,首先放松离散值输入,执行传统的最优控制,然后将构造的松弛离散值输入投影回纯离散值输入通过使用经典Chattering Lemma的扩展。通过制定可计算实现的算法来扩展该算法,该算法通过离散化定义切换动力系统的时间间隔来工作。重要的是,本文证明了该可实现算法通过递归应用构造了点序列,该点收敛于原始约束最优控制问题的局部极小值。包括四个仿真实验,以验证理论发展并证明了与标准混合整数优化技术相比的优越性。本文通过应用提出的算法对两类步态的混合动力系统表示进行辨识,得出结论。首先是通过将反馈线性化应用于经典机器人双足模型而产生的综合步态。对于这种综合观察,提出的识别方案能够正确识别正确的模型。第二组步态是在平坦的地面行走实验中从9位受试者的运动捕捉观察中得出的。对于每个主题,提出的识别方案确定不同的混合动力系统表示形式。令人惊讶的是,为每个参与者标识的模型共享相同的离散结构或相同的联系点执行顺序。

著录项

  • 作者

    Vasudevan, Ramanarayan.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Engineering Electronics and Electrical.;Biophysics Biomechanics.;Engineering Robotics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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