Optimization and control of robotic vertebral plate grinding: Predictive modeling, parameter optimization, and fuzzy control strategies for minimizing bone damage in laminectomy procedures.

IF 1.7 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Heqiang Tian, Jinchang An, Hongqiang Ma, Bo Pang, Junqiang Liu
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Abstract

During the robotic grinding of vertebral plates in high-risk laminectomy procedures, programmed operations may inadvertently induce force or temperature-related damage to the bone tissue. Therefore, it is imperative to explore a control methodology aimed at minimizing such damage during the robotic grinding of vertebral plate cortical bone, contingent upon optimal grinding parameters. Initially, predictive models for both the grinding force and temperature of vertebral plate cortical bone were developed using the response surface design (RSD) methodology. Subsequently, employing the satisfaction function approach, multi-objective parameter optimization of these predictive models was conducted to ascertain the optimal combination of parameters conducive to low-damage grinding. The optimum grinding parameters identified were a speed of 6000 r/min, a depth of grind of 0.4 mm, and a feed rate of 3.8 mm/s. Moreover, a multi-layer adaptive fuzzy control strategy was devised, and a corresponding multi-layer adaptive fuzzy controller (MFLC) was then implemented to dynamically adjust the grinding feed speed. The efficacy of this control module was corroborated through Simulink simulations. Simulation results demonstrated that the magnitude of the grinding force fluctuated within the range of 2.2-2.6 N after FLC control, while the fluctuation range of the grinding force was limited to 2.2-2.48 N after MFLC control. This indicates that MFLC control brings the force closer to the target expectation value of 2.39 N compared with FLC control. Finally, the dynamic fuzzy control method predicated on optimal grinding parameters was validated through experimental porcine spine grinding conducted on a robotic vertebral plate grinding platform.

机器人椎板打磨的优化与控制:预测建模、参数优化和模糊控制策略,最大限度减少椎板切除术中的骨损伤。
在高风险椎板切除术中,机器人打磨椎板的过程中,程序化操作可能会无意中对骨组织造成与力或温度相关的损伤。因此,当务之急是探索一种控制方法,在机器人打磨椎板皮质骨的过程中,根据最佳打磨参数,最大限度地减少这种损伤。首先,利用响应面设计(RSD)方法建立了椎板皮质骨研磨力和温度的预测模型。随后,采用满足函数法对这些预测模型进行了多目标参数优化,以确定有利于低损伤磨削的最佳参数组合。确定的最佳磨削参数为:转速 6000 r/min、磨削深度 0.4 mm、进给速度 3.8 mm/s。此外,还设计了一种多层自适应模糊控制策略,并实施了相应的多层自适应模糊控制器 (MFLC),以动态调整磨削进给速度。通过 Simulink 仿真证实了该控制模块的有效性。仿真结果表明,FLC 控制后磨削力的波动范围为 2.2-2.6 N,而 MFLC 控制后磨削力的波动范围被限制在 2.2-2.48 N。这表明,与 FLC 控制相比,MFLC 控制使磨削力更接近目标期望值 2.39 N。最后,在机器人椎板磨削平台上进行的猪脊柱磨削实验验证了以最佳磨削参数为前提的动态模糊控制方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.60
自引率
5.60%
发文量
122
审稿时长
6 months
期刊介绍: The Journal of Engineering in Medicine is an interdisciplinary journal encompassing all aspects of engineering in medicine. The Journal is a vital tool for maintaining an understanding of the newest techniques and research in medical engineering.
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