Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, Republic of Korea.
Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, Republic of Korea.
J Biomech. 2020 Dec 2;113:110069. doi: 10.1016/j.jbiomech.2020.110069. Epub 2020 Sep 30.
Inertial-measurement-unit (IMU)-based wearable gait-monitoring systems provide kinematic information but kinetic information, such as ground reaction force (GRF) are often needed to assess gait symmetry and joint loading. Recent studies have reported methods for predicting GRFs from IMU measurement data by using artificial neural networks (ANNs). To obtain reliable predictions, the ANN requires a large number of measurement inputs at the cost of wearable convenience. Recognizing that the dynamic relationship between the center of mass (CoM) and GRF can be well represented by using spring mechanics, in this study we propose two GRF prediction methods based on the implementation of walking dynamics in a neural network. Method 1 takes inputs to the network that were CoM kinematics data and Method 2 employs forces approximated from CoM kinematics by applying spring mechanics. The gait data of seven young healthy subjects were collected at various walking speeds. Leave-one-subject-out cross-validation was performed with normalized root mean square error and r as quantitative measures of prediction performance. The vertical and anteroposterior (AP) GRFs obtained using both methods agreed well with the experimental data, but Method 2 yielded improved predictions of AP GRF compared to Method 1 (p = 0.005). These results imply that knowledge of the dynamic characteristics of walking, combined with a neural network, could enhance the efficiency and accuracy of GRF prediction and help resolve the tradeoff between information richness and wearable convenience of wearable technologies.
基于惯性测量单元(IMU)的可穿戴步态监测系统提供运动学信息,但为了评估步态对称性和关节负荷,通常还需要动力学信息,例如地面反作用力(GRF)。最近的研究报告了通过使用人工神经网络(ANN)从 IMU 测量数据中预测 GRF 的方法。为了获得可靠的预测结果,ANN 需要大量的测量输入,这会牺牲可穿戴便利性。鉴于质量中心(CoM)和 GRF 之间的动态关系可以通过使用弹簧力学很好地表示,在这项研究中,我们提出了两种基于神经网络中行走动力学实现的 GRF 预测方法。方法 1 将 CoM 运动学数据作为网络的输入,方法 2 通过应用弹簧力学来模拟 CoM 运动学的力。在各种行走速度下,收集了 7 名年轻健康受试者的步态数据。使用归一化均方根误差和 r 作为预测性能的定量指标,对每个受试者进行了一次留一交叉验证。这两种方法获得的垂直和前后向(AP)GRF 与实验数据吻合良好,但与方法 1 相比,方法 2 对 AP GRF 的预测有所改善(p = 0.005)。这些结果表明,结合神经网络的行走动力学知识可以提高 GRF 预测的效率和准确性,并有助于解决可穿戴技术的信息丰富度和可穿戴便利性之间的权衡问题。