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A NOVEL METHOD FOR DIAGNOSING PILE INTEGRITY USING BACK-PROPAGATION ARTIFICIAL NEURAL NETWORKS

机译:一种新方法,用于使用反向传播人工神经网络诊断桩完整性

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Foundation is the utmost important element of a building, especially for high-rise structures. Any defect or damage of the pile segments can seriously destroy the building structure above. However, the satisfactory assessment of such pile is by no means an easy task. It is important to develop the efficient technique to determine the accurate integrity of foundation pile. In this paper the artificial neural network (ANN) program based on the low strain dynamic test is presented for diagnosing pile integrity. The records of pile integrity testing as well as the length, cross-sectional area of pile and wave velocity are identified to be the most reliable and are used as the input data set in the network. The back-propagation learning algorithm is employed to train the networks for extracting knowledge from training examples. In order to determine the level of accuracy of the pile integrity, the novel approach is proposed containing two back-propagation ANN models. The classification of pile integrity can be determined using the first model. Then the second model is responsible for the further investigation of the exact degree of pile defect and corresponding location. The actual piles are used to illustrate the process. After the diagnosis for defect type, a total of thirty-six patterns of neck pile were particularly selected for the training while four others for testing. The results from the testing phase indicate that the neural network was successful in modeling the relationship between foundation pile integrity and the other parameters and generally gave the reasonable predictions.
机译:基金会是建筑物的最重要元素,特别是对于高层结构。桩段的任何缺陷或损坏都可以严重破坏上面的建筑结构。然而,对这种桩的令人满意的评估绝不是一项简单的任务。重要的是要开发高效的技术来确定基础桩的准确完整性。本文介绍了基于低应变动态测试的人工神经网络(ANN)程序用于诊断桩完整性。桩完整性测试的记录以及桩和波速度的长度,横截面积区域是最可靠的,用作网络中的输入数据。用于训练网络以从训练示例训练网络以培训网络。为了确定桩完整性的准确性水平,提出了一种包含两个背部传播ANN模型的新方法。可以使用第一模型来确定桩完整性的分类。然后第二种模型负责进一步调查桩缺陷和相应位置的确切程度。实际桩用于说明该过程。在缺陷型诊断后,特别为训练特别选择三十六种颈部桩,而另外四个用于测试。来自测试阶段的结果表明神经网络成功地建模基础桩完整性和其他参数之间的关系,并且通常给出了合理的预测。

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