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Crack Prediction Based on Wavelet Correlation Analysis Least Squares Support Vector Machine for Stone Cultural Relics

机译:基于小波相关性分析最小二乘支持向量机的裂缝预测石文化遗物

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摘要

Preventive protection of cultural relics is to make use of all the science and technology beneficial to the research and protection of archaeological heritage to predict the disease of cultural relics. The existing preventive cultural relics protection system has made some achievements in environmental monitoring, but the analysis and utilization of large data of cultural relics are still insufficient. In this paper, under the idea of multisource information fusion, a least squares support vector machine regression method based on multivariate time series wavelet correlation analysis is proposed to achieve accurate crack prediction of stone cultural relics. Firstly, the correlation of multivariate time series of stone cultural relics are quantitatively analyzed and the validity of characteristic variables of the crack is discriminated by wavelet correlation analysis; then, a least squares support vector machine prediction model is constructed based on the correlation obtained from the analysis; finally, the good performance of the method is verified by using the environmental monitoring data of the rock mass fracture in the North Qianfo Cliff of Dafo Temple in Binzhou City of Shaanxi Province. The experimental results show that the proposed method is more effective than the traditional backpropagation neural network, support vector machine, and relevance vector machine regression methods. This method is universal and easy to implement for multisource data prediction of nonmovable cultural relics diseases. It provides a scientific theoretical reference for the preventive protection of cultural relics.
机译:预防文物的预防保护是利用所有科学技术对考古遗产的研究和保护,以预测文物疾病。现有的预防性文物保护制度在环境监测方面取得了一些成就,但大数据的分析和利用仍然不足。本文在多源信息融合的概念下,提出了基于多变量时间序列小波相关分析的最小二乘支持向量机回归方法,实现了石文化遗物的准确裂缝预测。首先,定量地分析了多变量时间序列的多变量时间序列的相关性,并通过小波相关分析对裂纹的特征变量的有效性;然后,基于从分析中获得的相关性构建最小二乘支持向量机预测模型;最后,通过在陕西省滨州市滨园北千货崖的岩石泥土中的岩石群骨折的环境监测数据来验证该方法的良好表现。实验结果表明,该方法比传统的背展交神经网络,支持向量机和相关矢量机回归方法更有效。这种方法是通用且易于实现不可用于不可用于的文物疾病的多源数据预测。它为预防文物的保护性保护提供了一个科学的理论参考。

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