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Multi Response Prediction of Cutting Force and Delamination in Carbon Fiber Reinforced Polymer Using Backpropagation Neural Network-Genetic Algorithm

机译:碳纤维增强聚合物的切割力与分层使用背部衰落神经网络 - 遗传算法多响应预测

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Carbon Fiber Reinforced Polymer (CFRP) has been widely used in various industries, including automotive, trains, and especially aerospace as a substitute for metal materials because of its high specific strength. Milling is one of the most commonly used machining processes in composites. Thus, it is necessary to determine the exact machining process parameters so that the specifications of the components are met. Moreover, suitable optimization method is needed to obtain machining parameters that produce small delamination and low cutting force. Full factorial design (2x3x3) with spindle speed, cutting speed and depth of cut as an input and the responses of cutting force and delamination was carried out in this experiment. A genetic algorithm was used as an optimization method, while backpropagation neural networks (BPNN) were used to apply complex non-linear equations. The BPNN model optimized using the GA method has been successfully developed in which the end milling process on CFRP material gains a mean square error (MSE) of 0.0246. This value indicates that the BPNN-GA model can be used as a predictor of the end milling CFRP process and eventually used to optimize the machining process.
机译:碳纤维增强聚合物(CFRP)已广泛应用于各种行业,包括汽车,火车,特别是航空航天,因为其具有高比强度的替代金属材料。铣削是复合材料中最常用的加工过程之一。因此,有必要确定精确的加工过程参数,以便满足组件的规格。此外,需要合适的优化方法来获得产生小分层和低切割力的加工参数。在本实验中进行了具有主轴速度,切割速度和切割深度的完整因子设计(2x3x3),并在该实验中进行了切割力和分层的响应。遗传算法用作优化方法,而BackProjagation神经网络(BPNN)用于应用复杂的非线性方程。已经成功开发了使用GA方法优化的BPNN模型,其中CFRP材料上的最终研磨过程增益为0.0246的平均方误差(MSE)。该值表明BPNN-GA模型可以用作端铣CFRP过程的预测器,最终用于优化加工过程。

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