Motion Control Laboratory, School of Mechanical Engineering, Yonsei University, Seoul 03722, Korea.
Sensors (Basel). 2018 Dec 10;18(12):4349. doi: 10.3390/s18124349.
As an alternative to high-cost shoe insole pressure sensors that measure the insole pressure distribution and calculate the center of pressure (CoP), researchers developed a foot sensor with FSR sensors on the bottom of the insole. However, the calculations for the center of pressure and ground reaction force (GRF) were not sufficiently accurate because of the fundamental limitations, fixed coordinates and narrow sensing areas, which cannot cover the whole insole. To address these issues, in this paper, we describe an algorithm of virtual forces and corresponding coordinates with an artificial neural network (ANN) for low-cost flexible insole pressure measurement sensors. The proposed algorithm estimates the magnitude of the GRF and the location of the foot plantar CoP. To compose the algorithm, we divided the insole area into six areas and created six virtual forces and the corresponding coordinates. We used the ANN algorithm with the input of magnitudes of FSR sensors, 1st and 2nd derivatives of them to estimate the virtual forces and coordinates. Eight healthy males were selected for data acquisition. They performed an experiment composed of the following motions: standing with weight shifting, walking with 1 km/h and 2 km/h, squatting and getting up from a sitting position to a standing position. The ANN for estimating virtual forces and corresponding coordinates was fitted according to those data, converted to c script, and downloaded to a microcontroller for validation experiments in real time. The results showed an average RMSE the whole experiment of 31.154 N for GRF estimation and 8.07 mm for CoP calibration. The correlation coefficients of the algorithm were 0.94 for GRF, 0.92 and 0.76 for the X and Y coordinate respectively.
作为替代高成本鞋内底压力传感器的方法,这些传感器可以测量内底压力分布并计算压力中心(CoP),研究人员开发了一种带有 FSR 传感器的足底传感器,该传感器位于内底的底部。然而,由于基本限制、固定坐标和狭窄的感应区域,无法覆盖整个内底,因此压力中心和地面反力(GRF)的计算不够准确。为了解决这些问题,本文介绍了一种使用人工神经网络(ANN)的虚拟力和相应坐标的算法,用于低成本柔性内底压力测量传感器。所提出的算法估计 GRF 的大小和足底 CoP 的位置。为了组成算法,我们将内底区域分为六个区域,并创建了六个虚拟力和相应的坐标。我们使用 ANN 算法,输入 FSR 传感器的大小及其一阶和二阶导数,来估计虚拟力和坐标。选择了 8 名健康男性进行数据采集。他们进行了以下运动组成的实验:在重量转移时站立,以 1 公里/小时和 2 公里/小时行走,下蹲和从坐姿站起来。根据这些数据拟合用于估计虚拟力和相应坐标的 ANN,并将其转换为 c 脚本,然后将其下载到微控制器中以进行实时验证实验。结果表明,整个实验的 GRF 估计平均 RMSE 为 31.154N,CoP 校准的平均 RMSE 为 8.07mm。算法的相关系数分别为 0.94、0.92 和 0.76。