Ren Yikang, Liu Fang
School of Geomatics and Urban Spatial Informatics, Beijing University of Civil Engineering and Architecture, Beijing, 102616, China.
Key Laboratory of Urban Spatial Information, Ministry of Natural Resources, KLUSI, Beijing, 100044, China.
Sci Rep. 2024 Aug 2;14(1):17898. doi: 10.1038/s41598-024-68594-2.
The Dunhuang murals, a significant part of Chinese heritage, have suffered deterioration primarily due to environmental and chemical factors, notably salt damage. This study proposes a sophisticated method that synergizes Fractional Order Differentiation (FOD) and Partial Least Squares Regression (PLSR) to accurately invert the phosphate content in the mural plaster of the Dunhuang paintings. The focal points of the research include: (1) To address the issue of information loss and reduced modeling precision caused by integer-order differentiation algorithms, the FOD method is employed for preprocessing spectral data. This approach ensures the fine spectral differences in the phosphate content of the mural plaster are precisely captured, (2) Utilizing PLSR, the study models the spectral bands identified at a significance level of 0.01 with measured conductivity values, thereby enabling the precise prediction of the phosphate content in the murals. The research outcomes reveal: (1) The FOD method can elucidate the nonlinear characteristics and variation patterns of the mural samples in the spectral data. As the order increases from zero to two, the number of spectral bands meeting the 0.01 significance test initially decreases and then increases. The highest absolute value of the positive correlation coefficient is observed at the 1.9 order, corresponding to the 2077 nm band, (2) For predicting the phosphate content in the murals, the model at the 1.9 order is most suitable for inversion. This model, after cross-validation, achieves a maximum R value of 0.861. This study created an efficient FOD-based model for estimating phosphate in mural plaster.
敦煌壁画是中国文化遗产的重要组成部分,主要由于环境和化学因素,尤其是盐害,其出现了损坏。本研究提出了一种将分数阶微分(FOD)和偏最小二乘回归(PLSR)相结合的精密方法,以准确反演敦煌壁画灰泥中的磷酸盐含量。研究重点包括:(1)为解决整数阶微分算法导致的信息损失和建模精度降低问题,采用FOD方法对光谱数据进行预处理。该方法确保精确捕捉壁画灰泥中磷酸盐含量的精细光谱差异;(2)利用PLSR,该研究将在0.01显著性水平下识别出的光谱带与测量的电导率值进行建模,从而能够精确预测壁画中的磷酸盐含量。研究结果表明:(1)FOD方法可以阐明光谱数据中壁画样本的非线性特征和变化模式。随着阶数从零增加到二,满足0.01显著性检验的光谱带数量最初减少然后增加。在1.9阶观察到正相关系数的最高绝对值,对应于2077 nm波段;(2)对于预测壁画中的磷酸盐含量,1.9阶的模型最适合反演。该模型经过交叉验证后,最大R值达到0.861。本研究创建了一个基于FOD的高效模型,用于估计壁画灰泥中的磷酸盐含量。