Tempering color classification via artificial neural network (ANN): An intelligent system approach to steel thermography

E. A. Cotoco, Delfin Enrique G. Lindo, R. Baldovino, E. Dadios
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引用次数: 4

Abstract

In our modern society, the steel industry is a critical component to achieve economic growth and development especially in the infrastructure and manufacturing industries. However, steel production is not just an easy step process. Untempered steel, though hard, is too brittle to be useful for most applications. In order to enhance its properties, the application of heat treatment is performed to steel. Heat treatment is a meticulously sensitive and an extremely tedious process due to temperature sensing. Nowadays, the common way to determine the temperature of a certain metal is through the use of human vision or a thermal imaging camera. However, these methods are either inaccurate or very expensive to setup. In this study, the application of artificial neural networks (ANN) in assessing the steel discoloration when it undergoes extreme temperatures is a cheaper and more accurate way of reading or sensing its temperature. The use of neural network technology can easily adapt to classify a wide range of discoloration from different metals especially steel.
基于人工神经网络(ANN)的回火颜色分类:一种钢热成像的智能系统方法
在现代社会中,钢铁工业是实现经济增长和发展的重要组成部分,特别是在基础设施和制造业中。然而,钢铁生产并不是一个简单的步骤过程。未回火的钢虽然硬,但太脆,不能用于大多数用途。为了提高钢的性能,对钢进行了热处理。由于温度感应,热处理是一个非常敏感和极其繁琐的过程。如今,确定某种金属温度的常用方法是通过使用人类视觉或热成像相机。然而,这些方法要么不准确,要么设置起来非常昂贵。在这项研究中,应用人工神经网络(ANN)来评估钢在极端温度下的变色情况,是一种更便宜、更准确的读取或感知其温度的方法。使用神经网络技术可以很容易地适应对不同金属特别是钢的各种变色进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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