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Deep Learning for Metal Corrosion Control: Can Convolutional Neural Networks Measure Inhibitor Efficiency?

机译:用于金属腐蚀控制的深度学习:卷积神经网络可以衡量抑制剂的效率吗?

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The inhibition of corrosion is an important aspect not only from the theoretical viewpoint of physical and material sciences but also from the practical aspect of the frequent exposure and use of metals in our lives. The traditional investigation of this process is done through electrochemical measurements with local and selective inspection of some optical microscopy slides. This paper proposes a more objective and automatic way of examining the effectiveness of the employed inhibitors through convolutional neural networks. In spite of the limitation of the number of samples to few hundreds, as they can be provided from the electrochemical laboratory, the deep learner manages to offer valuable information regarding the entire surface of a metal plate and to distinguish between the states under observation.
机译:从物理和材料科学的理论观点来看,抑制腐蚀是一个重要方面,而且从生活中频繁暴露和使用金属的实践角度来看,腐蚀的抑制也是一个重要方面。对这一过程的传统研究是通过电化学测量以及对某些光学显微镜载玻片的局部和选择性检查来完成的。本文提出了一种更客观和自动的方法,通过卷积神经网络来检查所用抑制剂的有效性。尽管可以从电化学实验室提供的样品数量限制在几百个,但深度学习者还是设法提供有关金属板整个表面的有价值的信息,并区分观察中的状态。

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