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Optimizing the Tribological Properties of UHMWPE Nanocomposites-An Artificial Intelligence based approach

机译:优化UHMWPE纳米复合材料的摩擦学特性 - 一种基于人工智能的方法

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The longevity of the hip implants has been a major issue in recent times due to inadequate material used for implants. Since the metal on polymer implants has issues such as tissue degeneration and osteolysis, the focus of this study is to improve the tribological properties of ultra-high molecular-weight polyethylene (UHMWPE) which has been in use on acetabular cup of hip implants by considering multiple nanoparticles like carbon fibre, carbon nanotubes and graphene as reinforcements. It is extremely difficult and time-consuming through numerous experimental trials to arrive at the optimum material composition of nanoparticles. Therefore, an effort has been made on developing a new polymer nanocomposite by utilizing the artificial intelligence (AI)-based design which includes the techniques, viz. artificial neural network (ANN) and genetic algorithm (GA). The input parameters like weight fraction and the geometry of the different nanoparticles related to the tribological properties were collected from various published literatures, and modelling was done through ANN for the output parameters, viz. coefficient of friction and specific wear rate. Best ANN predictive model was chosen individually for each output parameters on iterating the different hidden nodes. The fundamental correlation between the input and output parameters was investigated through sensitivity analysis. Optimization studies were performed using genetic algorithm (GA) with the best-chosen ANN model as an input to get optimum input variables. Thus, the AI-based approach of designing the UHMWPE nanocomposites shows an enhancement on the tribological properties that pave a way for further experimental trials.
机译:由于用于植入物的材料不足,髋部植入物的寿命是一个主要问题。由于聚合物植入物上的金属具有组织变性和骨溶解等问题,因此本研究的重点是通过考虑,改善超高分子量聚乙烯(UHMWPE)的摩擦学特性,通过考虑多种纳米颗粒如碳纤维,碳纳米管和石墨烯作为增强剂。通过许多实验试验到达纳米颗粒的最佳材料组成是非常困难和耗时的。因此,通过利用具有包括技术,viz的人工智能(AI)的设计,已经努力开发新的聚合物纳米复合材料。人工神经网络(ANN)和遗传算法(GA)。从各种公开的文献中收集重量分数和与摩擦学性质有关的不同纳米颗粒的几何形状的输入参数,通过ANN进行建模,用于输出参数,VIZ。摩擦系数和特定磨损率。在迭代不同隐藏节点的每个输出参数中单独选择最佳的ANN预测模型。通过灵敏度分析研究了输入和输出参数之间的基本相关性。使用具有最佳选择的ANN模型的遗传算法(GA)进行优化研究作为获得最佳输入变量的输入。因此,设计UHMWPE纳米复合材料的基于AI的方法显示了对进一步实验试验的方式的摩擦学性质的增强。

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