Comparing the risk of low-back injury using model-based optimization: Improved technique versus exoskeleton assistance.

IF 3.4 Q2 ENGINEERING, BIOMEDICAL Wearable technologies Pub Date : 2021-10-01 eCollection Date: 2021-01-01 DOI:10.1017/wtc.2021.12
Giorgos Marinou, Matthew Millard, Nejc Šarabon, Katja Mombaur
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Abstract

Although wearable robotic systems are designed to reduce the risk of low-back injury, it is unclear how effective assistance is, compared to improvements in lifting technique. We use a two-factor block study design to simulate how effective exoskeleton assistance and technical improvements are at reducing the risk of low-back injury when compared to a typical adult lifting a box. The effects of assistance are examined by simulating two different models: a model of just the human participant, and a model of the human participant wearing the SPEXOR exoskeleton. The effects of lifting technique are investigated by formulating two different types of optimal control problems: a least-squares problem which tracks the human participant's lifting technique, and a minimization problem where the model is free to use a different movement. Different lifting techniques are considered using three different cost functions related to risk factors for low-back injury: cumulative low-back load (CLBL), peak low-back load (PLBL), and a combination of both CLBL and PLBL (HYB). The results of our simulations indicate that an exoskeleton alone can make modest reductions in both CLBL and PLBL. In contrast, technical improvements alone are effective at reducing CLBL, but not PLBL. The largest reductions in both CLBL and PLBL occur when both an exoskeleton and technical improvements are used. While all three of the lifting technique cost functions reduce both CLBL and PLBL, the HYB cost function offers the most balanced reduction in both CLBL and PLBL.

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比较基于模型优化的下背部损伤风险:改进技术与外骨骼辅助
虽然可穿戴机器人系统旨在降低腰背部损伤的风险,但与提升技术的改进相比,其辅助效果如何尚不清楚。我们使用双因素块研究设计来模拟外骨骼辅助和技术改进在降低腰背损伤风险方面的效果,与典型的成年人提起箱子相比。通过模拟两个不同的模型来检验辅助的效果:一个是人类参与者的模型,另一个是佩戴speor外骨骼的人类参与者的模型。通过制定两种不同类型的最优控制问题来研究提升技术的影响:跟踪人类参与者提升技术的最小二乘问题,以及模型可以自由使用不同运动的最小化问题。不同的举重技术被考虑使用与腰背损伤风险因素相关的三种不同的成本函数:累积腰背负荷(CLBL),峰值腰背负荷(PLBL),以及CLBL和PLBL的组合(HYB)。我们的模拟结果表明,外骨骼本身可以适度减少CLBL和PLBL。相比之下,单纯的技术改进对减少CLBL有效,但对PLBL无效。当使用外骨骼和技术改进时,CLBL和PLBL的最大减少发生。虽然这三种提升技术的成本函数都能降低CLBL和PLBL,但HYB成本函数对CLBL和PLBL的降低最为平衡。
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来源期刊
CiteScore
5.80
自引率
0.00%
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0
审稿时长
11 weeks
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