神经网络仿真在杂化基质高分子复合材料结构性能评价中的应用前景

E. Kosenko, A. Ostroukh, N. Baurova
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引用次数: 0

摘要

人工神经网络应用于各个领域:从经济学和社会研究到医学和机器人。神经网络允许人们解决各种各样的问题:事件预测、信息关联搜索、产品质量检查等等。利用神经网络进行图像识别可能是最受欢迎的任务。图像和符号的识别使人们大大减少了劳动强度,提高了各种操作过程的准确性。讨论了利用神经网络对不同混合矩阵的聚合物复合材料(PCM)进行数据分类,提高其结构和性能评价的有效性和准确性的问题。给出了一种用于不同混合矩阵的PCM结构分类的神经网络模型的学习结果。该神经网络模型经附加学习后,可用于不同混合矩阵的PCM的力学性能评价和产品设计预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application prospect of neuronetwork simulation for evaluation of structures and properties of polymer composite materials with hybrid matrices
Artificial neural networks are applied in various fields: from economics and social studies to medicine and robotics. The neural networks allow one to solve various problems: prediction of events, associative search of information, check of product quality and many others. The recognition of images by the neural networks is probably the most popular task. The recognition of images and symbols allows one considerably to decrease labor-intensiveness and increase accuracy of various operation processes. The problems of an increase in the effectiveness and accuracy for evaluation of structures and properties of polymer composite materials (PCM) with different hybrid matrices by classification of data, using the neural networks, are discussed. The results of learning a neural network model for classification of PCM structures with different hybrid matrices are presented. After addition learning the proposed neuronetwork model can be used for evaluation of mechanical properties of PCM with different hybrid matrices and prediction of them for product design.
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