Neural Network Analog on Dynamic Variation of the Karst Water and the Prediction for Spewing Tendency of Springs in Jinan

Xuequn Chen, Fulin Li, Ye Liu, Chengshan Yan, Lin Lin
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引用次数: 1

Abstract

Considering the factors that affect the karst water level, the improved Neural Network Model has been applied to construct the random model that analogs the dynamic change of karst water. The accuracy of our analog has been greatly improved compared with that of multi-line recurrence model; moreover, BP model has strong functions of study, fault tolerance and association. In a word, BP model is an effective tool to predict the dynamic change of karst water. In addition, the spewing tendency of springs in Jinan is analyzed based on our prediction results in this paper.
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济南市岩溶水动态变化的神经网络模拟及泉水喷涌趋势预测
考虑影响岩溶水位的因素,应用改进的神经网络模型构建了模拟岩溶水位动态变化的随机模型。与多线递归模型相比,我们的模拟精度有了很大的提高;此外,BP模型具有较强的学习功能、容错功能和关联功能。综上所述,BP模型是预测岩溶水动态变化的有效工具。并根据预测结果对济南市弹簧的喷淋趋势进行了分析。
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