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New Possibilities in Using of Neural Networks Library for Material Defect Detection Diagnosis

机译:使用神经网络库进行材料缺陷检测诊断的新可能性

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Use of neural network as a tool for a data selection or data mining is well known and discussed many times. Use of neural networks and new software libraries for diagnostics is however not widely used. Our described project deal with a phenomenon of new possibilities in using neural networks implemented in software library for material defect diagnostics which can save a huge amount of money in several special cases. This paper describe also a design and realization of a test application developed in object orientated programming language C#. Developed application classifies data obtained from industrial processes of metallurgical plant. Data used in this project was received during measurement of material diagnostics and its structural defects. Core of developed application is based on neural networks design, which is capable to classify whether the material has defect or not. Basically this project's aim is to substitute commonly used Statistica software by a special application software solution developed in C#.
机译:使用神经网络作为数据选择或数据挖掘的工具是众所周知的,并且已经讨论了很多次。但是,神经网络和用于诊断的新软件库的使用并未得到广泛使用。我们描述的项目解决了使用软件库中实现的神经网络进行材料缺陷诊断的新可能性的现象,这在某些特殊情况下可以节省大量资金。本文还描述了用面向对象的编程语言C#开发的测试应用程序的设计和实现。开发的应用程序对从冶金厂的工业过程中获得的数据进行分类。该项目中使用的数据是在材料诊断及其结构缺陷的测量过程中收到的。开发的应用程序的核心是基于神经网络设计的,它能够对材料是否有缺陷进行分类。基本上,该项目的目标是用C#开发的特殊应用软件解决方案代替常用的Statistica软件。

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