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Artificial neural networks modelling based on visual analysis of coated cross laminated timber (CLT) to predict color change during outdoor exposure

机译:基于涂层交叉层压木材(CLT)视觉分析的人工神经网络建模预测户外曝光期间的颜色变化

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摘要

In this study, an artificial neural network (ANN) model was designed to predict color change based on visual assessment of coated cross laminated timber (CLT) exposed outdoors. Coatings and stains were investigated based on ASTM protocols to assess wood surface visual rating, against checking, flaking, erosion, and mildew growth in the State of Mississippi (USA) during one year (2019-2020). It was hypothesized that accurate ratings would promote precise color prediction by the ANN model. Visual assessment inputs were used to develop the model for predicting total color change (Delta E). The training and validation splits of the network were based on a 10-fold cross-validation technique, and the ANN model performance was assessed on the validation set using mean squared error (MSE), mean average precision (MAE), and coefficient of determination (R-2) after permutation feature importance analysis (PFI). Results indicated that coating was the most important feature in color change model. Erosion, checking and flaking achieved similar importance with an approximate difference of 6%. The ANN model was able to effectively predict color change values based on visual ratings with overall accuracy of 95% on truly unseen data. These findings revealed that coating properties, visual appearance, time of exposure, are associated with discoloration. Accurate visual assessment and a well-trained ANN can successfully provide the desired values of Delta E with a smaller number of complex test procedures.
机译:在该研究中,设计了一种人工神经网络(ANN)模型,用于基于户外暴露的涂覆交叉层压木材(CLT)的视觉评估来预测颜色变化。根据ASTM协议研究了涂料和污渍,以评估木材表面视觉评级,反对在一年(2019-2020)期间密西西比州(美国)的检查,剥落,侵蚀和霉菌增长。它被假设,准确的评级将促进ANN模型的精确颜色预测。视觉评估输入用于开发用于预测总颜色变化(Delta E)的模型。网络的训练和验证分配基于10倍的交叉验证技术,并在使用均方误差(MSE),平均平均精度(MAE)和确定系数上对ANN模型性能进行评估(R-2)置换特征重要性分析(PFI)。结果表明,涂​​层是颜色变化模型中最重要的特征。侵蚀,检查和剥落达到了相似的重要性,近似差异为6%。 ANN模型能够有效地预测基于视觉额定值的颜色变化值,在真正的未见数据中的整体精度为95%。这些发现表明,涂层性能,视觉外观,暴露时间与变色有关。准确的视觉评估和训练有素的ANN可以成功提供具有较少数量的复杂测试程序的Delta E值。

著录项

  • 来源
    《Holzforschung》 |2021年第7期|646-654|共9页
  • 作者单位

    Mississippi State Univ Forest & Wildlife Res Ctr Dept Sustainable Bioprod 201 Locksley Way POB 9821 Starkville MS 39759 USA;

    Mississippi State Univ Forest & Wildlife Res Ctr Dept Sustainable Bioprod 201 Locksley Way POB 9821 Starkville MS 39759 USA;

    Mississippi State Univ Forest & Wildlife Res Ctr Dept Sustainable Bioprod 201 Locksley Way POB 9821 Starkville MS 39759 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ANN; coatings; mass timber; weathering;

    机译:Ann;涂料;质量木材;风化;

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