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Predicting atmospheric corrosion rates of copper in Taiwan industrial zones using artificial neural network

机译:利用人工神经网络预测台湾工业区铜的大气腐蚀速率

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This study employed artificial neural network (ANN) to develop a regional forecasting model to predict atmospheric corrosion rates of copper within general industrial zones and coastal industrial zones in Taiwan. Analyzed data are based on the results of metal atmospheric corrosion rates monitoring project executed by The Institute of Harbor & Marine Technology Center in Taiwan. The results reveal that among the different models utilized in this study, the winter and annual corrosion rates predicted by ANN have the most accurate performance. For the corrosion predictions of C5 and CX levels, all of the models have better performance for the winter and annual corrosions than other seasons. But for C3 and C4 levels, none of the models can obtain accurate corrosion predictions. The performance of different models will also be compared, and the results may provide useful information for reference of design and maintenance of copper objects in Taiwan.
机译:这项研究使用人工神经网络(ANN)建立了区域预测模型,以预测台湾一般工业区和沿海工业区中铜的大气腐蚀速率。分析数据基于台湾港口与海洋技术中心执行的金属大气腐蚀率监测项目的结果。结果表明,在本研究中使用的不同模型中,ANN预测的冬季和年腐蚀速率具有最准确的性能。对于C5和CX水平的腐蚀预测,所有模型在冬季和年度腐蚀方面的性能均优于其他季节。但是对于C3和C4含量,没有一个模型能够获得准确的腐蚀预测。还将比较不同型号的性能,其结果可能为台湾铜物体的设计和维护提供有用的信息。

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