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Prediction of the Properties of an Alumina Green Body Using an Artificial Neural Network by a New PSO-Gain Backpropagation Algorithm

机译:一种通过新的PSO增益反向验证算法预测氧化铝生坯体使用人工神经网络的性质

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Artificial neural networks have been successfully used in classification, formulation optimization, defect diagnosis and performance prediction in ceramic industry. However, an artificial neural network based on the traditional backpropagation (BP) algorithm showed some disadvantages in mapping the nonlinear relationship between the composition and contents of the ceramic materials and their properties. In this paper, a new PSO-Grain (Particle Swarm Optimization Gain) BP algorithm was introduced, and an improved artificial neural network model was employed to predict the properties of an alumina green body. The training performance of the neural network using the PSO-Gain BP algorithm was analyzed and it was indicated the POS-Gain BP based neural network could reduce convergence to local minima and was more efficient than the traditional BP based network. The prediction accuracy of the properties such as linear shrinkage and bending strength using the PSO-Gain BP based neural network was higher than that of the BP based neural network.
机译:人工神经网络已成功用于陶瓷行业的分类,配方优化,缺陷诊断和性能预测。然而,基于传统反向衰减(BP)算法的人工神经网络展示了绘制陶瓷材料的组成和含量与其性质之间的非线性关系的一些缺点。本文介绍了一种新的PSO晶粒(粒子群优化增益)BP算法,采用改进的人工神经网络模型来预测氧化铝生坯的性质。分析了使用PSO-GAIN BP算法的神经网络的训练性能,并表示POS-GAIN基于BP的神经网络可以减少局部最小值的收敛性,并且比传统的基于BP网络更有效。使用PSO增益基于BP的神经网络的线性收缩和弯曲强度等性质的预测精度高于基于BP的神经网络的性质。

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