Comparative Ergonomic Posture Analysis of CNC Milling Machine Workers through Digital Human Modeling and Artificial Neural Networks

Rakesh Roy, Md. Mahafuj Anam Murad, Masum Billah, Subrata Talapatra, Md Mahfuzur Rahman, Sarojit Kumar Biswas
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Abstract

Objectives: To analyze the critical postures of the CNC milling machine operators by RULA (Rapid Upper Limb Assessment) scores and develop an ANN (Artificial Neural Network) prediction model. Methods: The methodology includes a postural analysis of 40 male CNC milling machine operators across Bangladesh, employing both manual (using manual RULA assessment worksheet) and digital (using CATIA V5R21 software) RULA methods complemented by an ANN prediction model. Finally, Digital RULA scores through DHM (Digital Human Modeling) and ANN predicted RULA scores would be compared. Findings: Digital RULA analysis reveals that lifting, carrying, and positioning are the most crucial ergonomic postures, and the most prominent high-risk category limbs are wrist and arm. The overall initial RULA score for lifting, carrying, and positioning are 7, 6, and 7, respectively, and reduced to 3, 3 and 4 respectively for ergonomically designed posture. The ANN model, structured with input, hidden, and output layers of 7, 10, and 1 nodes, significantly refines ergonomic risk prediction by aligning predicted scores closely with actual outcomes during the first stage, emphasized for training. It demonstrates a perfect correlation (R=1) in training, testing, validation, and overall performance for using manual RULA scores. The model's accuracy is further evidenced by minimal prediction offsets across all datasets for digital RULA score in the second stage, with correlation coefficients of 0.87003 (training), 0.93676 (validation), 0.89113 (testing), and (0.88395) for overall. This study contributes significant advancements in ergonomic risk assessment, highlighting the adoption of improved postures to reduce musculoskeletal disorders. Novelty: Employing both manual and DHM methods for RULA score calculation combined with ANN model, which can predict postural risk as floating number and fit a wider range of parameters. Keywords: ANN, CNC, Digital Human Modeling (DHM), Ergonomics, RULA
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通过数字人体建模和人工神经网络对数控铣床工人的人体工学姿势进行比较分析
目的通过 RULA(快速上肢评估)评分分析数控铣床操作员的关键姿势,并开发一个 ANN(人工神经网络)预测模型。方法方法包括对孟加拉国的 40 名男性数控铣床操作员进行姿势分析,采用手动(使用手动 RULA 评估工作表)和数字(使用 CATIA V5R21 软件)RULA 方法,并辅以 ANN 预测模型。最后,将比较通过 DHM(数字人体建模)得出的数字 RULA 分数和 ANN 预测的 RULA 分数。研究结果数字 RULA 分析表明,提举、搬运和定位是最关键的人体工学姿势,而最突出的高风险肢体类别是手腕和手臂。提升、搬运和摆放姿势的初始 RULA 总分分别为 7、6 和 7 分,而符合人体工程学设计的姿势则分别降至 3、3 和 4 分。由 7 个、10 个和 1 个节点组成的输入层、隐藏层和输出层结构的 ANN 模型,通过在强调训练的第一阶段将预测得分与实际结果紧密结合,大大改进了人体工程学风险预测。在使用人工 RULA 分数时,该模型在训练、测试、验证和整体性能方面都表现出完美的相关性(R=1)。该模型的准确性还体现在第二阶段所有数据集的数字 RULA 分数预测偏差最小,相关系数分别为 0.87003(训练)、0.93676(验证)、0.89113(测试)和(0.88395)。这项研究在人体工程学风险评估方面取得了重大进展,强调了采用改进姿势来减少肌肉骨骼疾病。新颖性:在计算 RULA 分数时同时采用人工和 DHM 方法,并结合 ANN 模型,可将姿势风险预测为浮动数,并适合更广泛的参数。关键词ANN、数控、数字人体建模(DHM)、人体工程学、RULA
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