Xiao Yun, Wang Xin, Eshragh Faezeh, Wang Xuanhong, Chen Xiaojiang, Fang Dingyi
School of Information Science and Technology, Northwest University, Xi'an 710021, China.
Department of Geomatics Engineering, University of Calgary, Calgary, AB T2N 1N4, Canada.
Sensors (Basel). 2017 May 11;17(5):1076. doi: 10.3390/s17051076.
An understanding of the changes of the rammed earth temperature of earthen ruins is important for protection of such ruins. To predict the rammed earth temperature pattern using the air temperature pattern of the monitoring data of earthen ruins, a pattern prediction method based on interesting pattern mining and correlation, called PPER, is proposed in this paper. PPER first finds the interesting patterns in the air temperature sequence and the rammed earth temperature sequence. To reduce the processing time, two pruning rules and a new data structure based on an R-tree are also proposed. Correlation rules between the air temperature patterns and the rammed earth temperature patterns are then mined. The correlation rules are merged into predictive rules for the rammed earth temperature pattern. Experiments were conducted to show the accuracy of the presented method and the power of the pruning rules. Moreover, the Ming Dynasty Great Wall dataset was used to examine the algorithm, and six predictive rules from the air temperature to rammed earth temperature based on the interesting patterns were obtained, with the average hit rate reaching 89.8%. The PPER and predictive rules will be useful for rammed earth temperature prediction in protection of earthen ruins.
了解土遗址夯土温度的变化对于此类遗址的保护至关重要。为了利用土遗址监测数据的气温模式来预测夯土温度模式,本文提出了一种基于有趣模式挖掘和相关性的模式预测方法,称为PPER。PPER首先在气温序列和夯土温度序列中找到有趣模式。为了减少处理时间,还提出了两条剪枝规则和一种基于R树的新数据结构。然后挖掘气温模式和夯土温度模式之间的关联规则。这些关联规则被合并为夯土温度模式的预测规则。通过实验验证了所提方法的准确性和剪枝规则的有效性。此外,利用明长城数据集对该算法进行了检验,基于有趣模式得到了6条从气温到夯土温度的预测规则,平均命中率达到89.8%。PPER和预测规则将有助于土遗址保护中的夯土温度预测。