Muscle-Driven Predictive Physics Simulations of Quadrupedal Locomotion in the Horse.

IF 2.2 3区 生物学 Q1 ZOOLOGY
Pasha A van Bijlert, Thomas Geijtenbeek, Ineke H Smit, Anne S Schulp, Karl T Bates
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引用次数: 0

Abstract

Musculoskeletal simulations can provide insights into the underlying mechanisms that govern animal locomotion. In this study, we describe the development of a new musculoskeletal model of the horse, and to our knowledge present the first fully muscle-driven, predictive simulations of equine locomotion. Our goal was to simulate a model that captures only the gross musculoskeletal structure of a horse, without specialized morphological features. We mostly present simulations acquired using feedforward control, without state feedback ("top-down control"). Without using kinematics or motion capture data as an input, we have simulated a variety of gaits that are commonly used by horses (walk, pace, trot, tölt, and collected gallop). We also found a selection of gaits that are not normally seen in horses (half bound, extended gallop, ambling). Due to the clinical relevance of the trot, we performed a tracking simulation that included empirical joint angle deviations in the cost function. To further demonstrate the flexibility of our model, we also present a simulation acquired using spinal feedback control, where muscle control signals are wholly determined by gait kinematics. Despite simplifications to the musculature, simulated footfalls and ground reaction forces followed empirical patterns. In the tracking simulation, kinematics improved with respect to the fully predictive simulations, and muscle activations showed a reasonable correspondence to electromyographic signals, although we did not predict any anticipatory firing of muscles. When sequentially increasing the target speed, our simulations spontaneously predicted walk-to-run transitions at the empirically determined speed. However, predicted stride lengths were too short over nearly the entire speed range unless explicitly prescribed in the controller, and we also did not recover spontaneous transitions to asymmetric gaits such as galloping. Taken together, our model performed adequately when simulating individual gaits, but our simulation workflow was not able to capture all aspects of gait selection. We point out certain aspects of our workflow that may have caused this, including anatomical simplifications and the use of massless Hill-type actuators. Our model is an extensible, generalized horse model, with considerable scope for adding anatomical complexity. This project is intended as a starting point for continual development of the model and code that we make available in extensible open-source formats.

马匹四足运动的肌肉驱动预测物理模拟。
肌肉骨骼模拟可以让我们深入了解动物运动的基本机制。在本研究中,我们介绍了一种新的马肌肉骨骼模型的开发情况,据我们所知,这是首次对马的运动进行完全由肌肉驱动的预测性模拟。我们的目标是模拟一个仅能捕捉马的肌肉骨骼结构,而没有特殊形态特征的模型。我们主要介绍使用前馈控制(无状态反馈)("自上而下控制")获得的模拟结果。在不使用运动学或运动捕捉数据作为输入的情况下,我们模拟了马匹常用的各种步态(步行、踱步、小跑、奔跑和集合奔跑)。我们还发现了一些在马匹中并不常见的步态(半弓步、伸展奔跑、埋伏)。由于小跑与临床相关,我们进行了跟踪模拟,在成本函数中加入了经验关节角度偏差。为了进一步证明我们模型的灵活性,我们还展示了使用脊柱反馈控制进行的模拟,其中肌肉控制信号完全由步态运动学决定。尽管对肌肉组织进行了简化,但模拟的脚步和地面反作用力都遵循了经验模式。在跟踪模拟中,运动学比完全预测模拟有所改进,肌肉激活显示出与肌电信号的合理对应关系,尽管我们没有预测肌肉的任何预期发射。当依次提高目标速度时,我们的模拟自发地预测了根据经验确定的速度从走到跑的转变。然而,除非在控制器中明确规定,否则在几乎整个速度范围内,预测的步长都太短,而且我们也没有恢复自发的不对称步态转换,例如奔跑。总之,我们的模型在模拟单个步态时表现出色,但我们的模拟工作流程无法捕捉步态选择的所有方面。我们指出了工作流程中可能造成这种情况的某些方面,包括解剖学上的简化和无质量希尔型致动器的使用。我们的模型是一个可扩展的通用马匹模型,在增加解剖复杂性方面有相当大的空间。本项目旨在作为持续开发模型和代码的起点,我们将以可扩展的开源格式提供这些代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.70
自引率
7.70%
发文量
150
审稿时长
6-12 weeks
期刊介绍: Integrative and Comparative Biology ( ICB ), formerly American Zoologist , is one of the most highly respected and cited journals in the field of biology. The journal''s primary focus is to integrate the varying disciplines in this broad field, while maintaining the highest scientific quality. ICB''s peer-reviewed symposia provide first class syntheses of the top research in a field. ICB also publishes book reviews, reports, and special bulletins.
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