时间序列预测的深度学习:回顾及其在岩土工程和地球科学中的应用

IF 12.1 2区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
F. Fazel Mojtahedi, N. Yousefpour, S. H. Chow, M. Cassidy
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引用次数: 0

摘要

本文详细介绍了岩土工程和地球科学应用中用于时间序列预测的现有和新兴深度学习算法。深度学习在解决涉及大型数据集和多个相互作用变量的复杂预测问题方面显示出有希望的结果,而不需要大量的特征提取。本研究深入描述了突出的深度学习方法,包括循环神经网络(rnn)、卷积神经网络(cnn)、生成对抗网络、深度信念网络、强化学习、注意和变形算法,以及使用这些架构组合的混合网络。此外,本文还总结了这些模型在采矿与隧道、铁路与公路建设、地震学、边坡稳定性、挡土与稳定结构、遥感、冲刷与侵蚀等各个领域的应用。这篇综述揭示了基于rnn的模型,特别是长短期记忆网络,是时间序列预测中最常用的模型。讨论了深度学习模型相对于传统机器学习的优势,包括其处理复杂模式和更有效地处理大规模数据的卓越能力。此外,在岩土工程和地球科学领域的时间序列预测中,研究经常表明深度学习方法在有效性上倾向于超越传统的机器学习技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Time Series Forecasting: Review and Applications in Geotechnics and Geosciences

This paper presents a detailed review of existing and emerging deep learning algorithms for time series forecasting in geotechnics and geoscience applications. Deep learning has shown promising results in addressing complex prediction problems involving large datasets and multiple interacting variables without requiring extensive feature extraction. This study provides an in-depth description of prominent deep learning methods, including recurrent neural networks (RNNs), convolutional neural networks (CNNs), generative adversarial network, deep belief network, reinforcement learning, attention and transformer algorithms as well as hybrid networks using a combination of these architectures. In addition, this paper summarizes the applications of these models in various fields, including mining and tunnelling, railway and road construction, seismology, slope stability, earth retaining and stabilizing structures, remote sensing, as well as scour and erosion. This review reveals that RNN-based models, particularly Long Short-Term Memory networks, are the most commonly used models for time series forecasting. The advantages of deep learning models over traditional machine learning, including their superior ability to handle complex patterns and process large-scale data more effectively, are discussed. Furthermore, in time series forecasting within the fields of geotechnics and geosciences, studies frequently reveal that deep learning methods tend to surpass traditional machine learning techniques in effectiveness.

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来源期刊
CiteScore
19.80
自引率
4.10%
发文量
153
审稿时长
>12 weeks
期刊介绍: Archives of Computational Methods in Engineering Aim and Scope: Archives of Computational Methods in Engineering serves as an active forum for disseminating research and advanced practices in computational engineering, particularly focusing on mechanics and related fields. The journal emphasizes extended state-of-the-art reviews in selected areas, a unique feature of its publication. Review Format: Reviews published in the journal offer: A survey of current literature Critical exposition of topics in their full complexity By organizing the information in this manner, readers can quickly grasp the focus, coverage, and unique features of the Archives of Computational Methods in Engineering.
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