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基于BP人工神经网络的冻土融沉系数预测方法研究
引用本文:王效宾,杨平.基于BP人工神经网络的冻土融沉系数预测方法研究[J].森林工程,2008,24(5):18-21.
作者姓名:王效宾  杨平
作者单位:南京林业大学,南京,210037
基金项目:江苏省六大人才高峰基金
摘    要:为促进人工冻结技术在地下工程地基处理中的推广应用,在综合分析人工冻土融沉系数影响因素的基础上,采用BP人工神经网络方法建立人工冻土融沉系数的预测模型。用南京地区典型土质淤泥质黏土、粉质黏土和粉砂的试验数据作为网络模型的学习训练样本和测试样本,对网络模型的预测结果与实测进行对比。结果表明,用人工神经网络方法预测人工冻土融沉系数,结果准确可靠,更接近于实际,是一种很好的预测人工冻土融沉系数的方法:

关 键 词:人工冻土  融沉系数  神经网络  预测方法

Study on Prediction Method of the Thaw Settlement Coefficient of Freezing Soil Based on BP Artificial Neural Net-work
Wang Xiaobin,Yang Ping.Study on Prediction Method of the Thaw Settlement Coefficient of Freezing Soil Based on BP Artificial Neural Net-work[J].Forest Engineering,2008,24(5):18-21.
Authors:Wang Xiaobin  Yang Ping
Institution:(Nanjing Forestty University, Nanjing 210037)
Abstract:In order to promote the application of the artificial freezing technology in the foundation treatment of underground engineering, on the basis of analysis of the main faclors influencing the thaw settlement coefficient of artificial freezing soil, models to predict the thaw settlement coefficient of artificial freezing soil were, established by applying the theory of BP artificial neural network (ANN). A large amount of test data from three kinds of soil of Nanjing region (silt clay, mealy clay and mealy sand) was used as learning and training samples to train and test ANN models and the calculated results of the ANN models and the test values were compared and analyzed, which showed that it was comparatively precise to predict the thaw settlement coefficient of artificial freezing soil by ANN technology.
Keywords:artificial freezing soil  thaw settlement coefficient  'artificial neural networks  prediction method
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