首页> 外文期刊>Natural Hazards and Earth System Sciences Discussions >An artificial neural network application to produce debris source areas of Barla, Besparmak, and Kapi Mountains (NW Taurids, Turkey)
【24h】

An artificial neural network application to produce debris source areas of Barla, Besparmak, and Kapi Mountains (NW Taurids, Turkey)

机译:一种人工神经网络应用,用于生产巴拉,Besparmak和Kapi山脉的碎片源区(NW Taurids,土耳其)

获取原文
           

摘要

Various statistical, mathematical and artificial intelligence techniques have been used in the areas of engineering geology, rock engineering and geomorphology for many years. However, among the techniques, artificial neural networks are relatively new approach used in engineering geology in particular. The attractiveness of ANN for the engineering geological problems comes from the information processing characteristics of the system, such as non-linearity, high parallelism, robustness, fault and failure tolerance, learning, ability to handle imprecise and fuzzy information, and their capability to generalize. For this reason, the purposes of the present study are to perform an application of ANN to a engineering geology problem having a very large database and to introduce a new approach to accelerate convergence. For these purposes, an ANN architecture having 5 neurons in one hidden layer was constructed. During the training stages, total 40 000 training cycles were performed and the minimum RMSE values were obtained at approximately 10 000th cycle. At this cycle, the obtained minimum RMSE value is 0.22 for the second training set, while that of value is calculated as 0.064 again for the second test set. Using the trained ANN model at 10 000th cycle for the second random sampling, the debris source area susceptibility map was produced and adjusted. Finally, a potential debris source susceptibility map for the study area was produced. When considering the field observations and existing inventory map, the produced map has a high prediction capacity and it can be used when assessing debris flow hazard mitigation efforts.
机译:多年来,在工程地质,岩石工程和地貌领域使用了各种统计,数学和人工智能技术。然而,在这种技术中,人工神经网络特别是在工程地质中使用的相对较新的方法。在工程地质问题的ANN的吸引力来自系统的信息处理特征,如非线性,高行性,鲁棒性,故障和故障容忍,学习,处理不精确和模糊信息的能力,以及它们的概括能力。因此,本研究的目的是在具有非常大的数据库的工程地质问题上进行ANN的应用,并引入一种加速收敛的新方法。为了这些目的,构造了一个隐藏层中具有5个神经元的ANN结构。在训练阶段期间,进行总计40 000个训练周期,并且在大约10 000周期获得最小RMSE值。在此循环中,对于第二次训练集,所获得的最小RMSE值为0.22,而值为0.064再次为第二个测试集计算。在10 000周期中使用培训的ANN模型进行第二个随机抽样,生产和调整碎片源区敏感性图。最后,生产了研究区的潜在碎片源易感性图。在考虑现场观察和现有库存地图时,产生的地图具有高预测能力,并且在评估碎片流动危险缓解工作时可以使用它。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号