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Kohonen Network Modelling for the Strength of Thermomechanically Processed HSLA Steel

机译:Kohonen网络模型用于热机械加工HSLA钢的强度

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Primarily from the point of view of improvement of yield strength due to additions of niobium, titanium and boron in HSLA steels, the experimental steels are divided into five classes. The data are then supplied for learning a Self Organising Map (Kohonen network). It is found that the network with six neurons possesses better capacity of prediction with unknown data. Another effort of clustering the steels according to its major strength contributing mechanisms is also made. But the capacity of the network to cluster unknown data is found to be rather poor and has failed to follow from the metallurgical principles. To avoid this limitation Learning Vector Quantisation method is adopted to impart a certain amount of supervision in the learning process and it is found that the training pattern of the network attains a good convergence thereby leading to a good predictive ability.
机译:主要从在HSLA钢中添加铌,钛和硼改善屈服强度的角度出发,将实验钢分为五类。然后提供数据以学习自组织图(Kohonen网络)。发现具有六个神经元的网络具有更好的未知数据预测能力。还根据钢的主要强度贡献机制对钢进行了聚类。但是,发现网络对未知数据进行聚类的能力很差,并且未能遵循冶金原理。为避免这种局限性,在学习过程中采用学习向量量化方法给予一定程度的监督,发现网络的训练模式达到了良好的收敛性,从而带来了良好的预测能力。

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