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Monitoring Model of Peak Recognition by Using Dam Monitoring Data of Automatic Monitoring System

机译:自动监测系统大坝监测数据监测峰值识别模型

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The peak value and vale value are more significant than other values of dam monito-ring data. Because the difference of sample size between peak or vale value and ordinary value of monitoring data has not been taken into account, it brings on the lower accuracy of fitting and forecasting of the peak value and the vale value than those of ordinary monitoring data in conventional dam safety monitoring model which are established with the method of least square regression. In order to improve the accuracy of fitting and forecasting of peak value and vale value, peak recognition theory is adopted in this paper. Peak recognition theory needs more data and higher precision. Because of higher frequency, automatic monitoring for dam safety provides us adequate data and chance. The new models are established in which larger weights are given to the peak value and the vale value of monitoring data according to the corresponding sampling frequency proportion and range. On the basis of the theory men-tioned above, conventional stepwise regression model and BP artificial neural network model are improved with peak recognition theory, and monitoring data of typical dams, such as Baishi RCC gravity dam, Bikou earth-rock dam with clay core and Lishimen double-curvature arch dam, are used to validate the method mentioned above. The results show that the accu-racy of fitting and forecasting of measured peak value and vale value of the model has been improved remarkably.
机译:峰值和vale值比大坝Monito-Ring数据的其他值更重要。由于峰值或谷谷值之间的样本大小与监测数据的普通值差异,因此它带来了峰值的拟合和预测的较低准确性,而不是常规的普通监测数据利用最小二乘回归方法建立了大坝安全监测模型。为了提高峰值和Vale值的拟合准确性和预测,本文采用了峰值识别理论。峰值识别理论需要更多的数据和更高的精度。由于频率越高,大坝安全的自动监控为我们提供了足够的数据和机会。建立新模型,其中根据相应的采样频率比例和范围给出更大的权重和监测数据的Vale值。在上述理论的基础上,传统的逐步回归模型和BP人工神经网络模型得到了峰值识别理论,以及监测典型水坝的数据,如Baishi RCC重力坝,Bikou地球岩坝与粘土核心和丽莎的双曲率拱坝,用于验证上述方法。结果表明,模型的测量峰值和谷谷值的拟合和预测的Accu-Rency显着提高。

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