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Predicting Temperature in Orthopaedic Drilling using Back Propagation Neural Network

机译:用反向传播神经网络预测矫形钻井的温度

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Present work deals with the prediction of temperature in orthopaedic drilling using back propagation neural network. Drilling of bone is common to prepare an implant site during orthopaedic surgery. The increase in temperature during such a procedure increases the chances of thermal invasion of bone which can cause thermal osteonecrosis. Drilling operations have been performed in polymethylmethacrylate (PMMA) (as a substitute for bone) work-piece by high-speed steel (HSS) drill bits over a wide range of cutting conditions. Drill diameter, feed rate and spindle speed are used as input for the back propagation neural network whereas temperature is taken as output. The performance of the trained neural network has been tested with the experimental results. Good agreement is observed between the predictive model values and experimental values.
机译:目前工作涉及使用背部传播神经网络在矫形钻井中的温度预测。骨骼钻孔是常见的,在整形外科手术中制备植入部位。这种程序期间的温度的增加增加了热侵袭骨的可能性,这可能导致热骨折坏死。通过在各种切割条件下通过高速钢(HSS)钻头在聚甲基甲基丙烯酸甲酯(PMMA)(作为骨)工件中进行的钻孔操作进行了钻孔操作。钻头直径,进料速率和主轴速度用作背部传播神经网络的输入,而温度被呈现为输出。培训的神经网络的性能已经通过实验结果进行了测试。在预测模型值和实验值之间观察到良好的一致性。

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