Hybrid machine learning approach for accurate and expeditious 3D scanning to enhance rapid prototyping reliability in orthotics using RSM-RSMOGA-MOGANN

AI EDAM Pub Date : 2024-05-10 DOI:10.1017/s0890060424000064
Ashwani Kumar, Deepak Chhabra
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Abstract

This study aims to develop a multidisciplinary artificial hybrid machine learning (AHML) approach to reduce the scanning time (ST) of the human wrist and improve the accuracy of 3D scanning for anthropometric data collection. A systematic AHML approach was deployed to scan the human wrist distal end optimally using a portable SENSE 2.0 3D scanner. A central composite design (CCD) matrix was developed for three input variables; light intensity (LI = 12–20 W/m2), capture angle (CA = 10°–50°), and scanning distance (SD = 10–20 inches) for executing the experimental runs. For accuracy evaluation, the wrist perimeter on the distal end was checked using CREO Parametric software for wrist perimeter error (WPE). Various AHML tools were developed using: response surface methodology (RSM), multi-objective genetic algorithm RSM, and multi-objective genetic algorithm neural networking (MOGANN). The optimal process parameters recommended by the hybrid tools were experimentally validated for their prediction accuracy. The MOGANN approach combined with the Bayesian regularization algorithm (trainabr) provided the best mutual combination of optimal ST = 20.072 sec and WPE = 0.375 cm corresponding to LI = 12.001 W/m2, CA = 29.428°, and SD = 18.214 inch, with a significant percentage reduction of 55.83% in WPE. Executing 3D scanning of the human wrist over the optimized process parameters predicted by AHML tools will ensure the availability of precise scans for the rapid prototyping of customized orthotic devices in a reliable manner.
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利用 RSM-RSMOGA-MOGANN 混合机器学习方法实现准确快速的 3D 扫描,提高矫形器快速原型制作的可靠性
本研究旨在开发一种多学科人工混合机器学习(AHML)方法,以缩短人体腕部的扫描时间(ST),提高人体测量数据采集的三维扫描精度。使用便携式 SENSE 2.0 3D 扫描仪,采用系统的 AHML 方法对人体手腕远端进行最佳扫描。针对三个输入变量,即光照强度(LI = 12-20 W/m2)、捕捉角度(CA = 10°-50°)和扫描距离(SD = 10-20 英寸),开发了一个中心复合设计(CCD)矩阵,用于执行实验运行。为了评估精度,使用 CREO 参数软件检查了远端的手腕周长误差 (WPE)。使用响应面方法学 (RSM)、多目标遗传算法 RSM 和多目标遗传算法神经网络 (MOGANN) 开发了各种 AHML 工具。实验验证了混合工具推荐的最佳工艺参数的预测准确性。MOGANN 方法与贝叶斯正则化算法(trainabr)相结合,提供了最佳 ST = 20.072 秒和 WPE = 0.375 厘米的最佳相互组合,对应 LI = 12.001 W/m2、CA = 29.428°、SD = 18.214 英寸,显著降低了 WPE 的 55.83%。根据 AHML 工具预测的优化工艺参数对人体手腕进行三维扫描,将确保获得精确的扫描结果,从而以可靠的方式快速制作出定制的矫形设备原型。
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