Department of Mechanical Engineering, Arak University of Technology, Arak, Iran.
Proc Inst Mech Eng H. 2022 Aug;236(8):1118-1128. doi: 10.1177/09544119221106822. Epub 2022 Jun 28.
Bone milling is one of the most important and sensitive biomechanical processes in the field of medical engineering. This process is used in orthopedic surgery, dentistry, treatment of fractures, and bone biopsy. The use of automatic numerical control surgical milling machines has revolutionized this procedure. The most important possible complication in bone surgery is the rise of temperature above permissible range and the formation of thermal necrosis or cell death in bone tissue. In the present article, a study on the design of experiment is first conducted by considering the rotational speed of the utilized tool, feed rate, depth of cut and tool diameter as the most important input factors of this process. Then, an adaptive neuro-fuzzy inference system (ANFIS) is developed to model and estimate the temperature behavior in the process of robotic bone milling. The optimal parameters of the ANFIS system are obtained using teaching-learning-based optimization (TLBO) algorithm. In order to model the process behavior, the results of experiments are used for the training (75% of the data) and testing (25% of the data) of the adaptive inference system. The accuracy of the obtained model is investigated via different plots, and statistical criteria, including root mean square error, correlation coefficient, and mean absolute percentage error. The findings show that the ANFIS network successfully predicts the temperature in the automatic bone milling process. In addition, the network error in estimating the temperature of the automatic bone milling process in the training and test section is equal to 1.74% and 3.17%, respectively.
骨铣削是医学工程领域中最重要和最敏感的生物力学过程之一。该过程用于矫形外科、牙科、骨折治疗和骨活检。自动数控手术铣削机的使用使该过程发生了革命性的变化。在骨外科中,最可能发生的并发症是温度升高超过允许范围,以及骨组织中热坏死或细胞死亡的形成。在本文中,首先通过考虑工具的转速、进给率、切削深度和刀具直径作为该过程的最重要输入因素,对实验设计进行了研究。然后,开发了一个自适应神经模糊推理系统(ANFIS)来对机器人骨铣削过程中的温度行为进行建模和估计。使用基于教学学习的优化(TLBO)算法获得 ANFIS 系统的最优参数。为了对过程行为进行建模,使用实验结果对自适应推理系统进行训练(数据的 75%)和测试(数据的 25%)。通过不同的图表和统计标准,包括均方根误差、相关系数和平均绝对百分比误差,研究了获得模型的准确性。研究结果表明,ANFIS 网络成功地预测了自动骨铣削过程中的温度。此外,网络在训练和测试部分估计自动骨铣削过程温度的误差分别等于 1.74%和 3.17%。