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Deep Learning Data-Intelligence Model Based on Adjusted Forecasting Window Scale: Application in Daily Streamflow Simulation

机译:基于调整预测窗口刻度的深度学习数据智能模型:应用在日间流式仿真中的应用

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摘要

Streamflow forecasting is essential for hydrological engineering. In accordance with the advancement of computer aids in this field, various machine learning (ML) models have been explored to solve this highly non-stationary, stochastic, and nonlinear problem. In the current research, a newly explored version of an ML model called the long short-term memory (LSTM) was investigated for streamflow prediction using historical data for forecasting for a particular period. For a case study located in a tropical environment, the Kelantan river in the northeast region of the Malaysia Peninsula was selected. The modelling was performed according to several perspectives: (i) The feasibility of applying the developed LSTM model to streamflow prediction was verified, and the performance of the developed LSTM model was compared with the classic backpropagation neural network model; (ii) In the experimental process of applying the LSTM model to the prediction of streamflow, the influence of the training set size on the performance of the developed LSTM model was tested; (iii) The effect of the time interval between the training set and the testing set on the performance of the developed LSTM model was tested; (iv) The effect of the time span of the prediction data on the performance of the developed LSTM model was tested. The experimental data show that not only does the developed LSTM model have obvious advantages in processing steady streamflow data in the dry season but it also shows good ability to capture data features in the rapidly fluctuant streamflow data in the rainy season.
机译:流流预测对于水文工程至关重要。根据该领域的计算机辅助工具的进步,已经探索了各种机器学习(ML)模型来解决这一高度非静止,随机性和非线性问题。在目前的研究中,研究了一种新探索的ML模型,称为长短短期存储器(LSTM)的ML模型,用于使用历史数据进行特定时期预测的流出预测。对于位于热带环境中的案例研究,选定了马来西亚半岛东北地区的Kelantan河。根据多个观点进行建模:(i)验证了应用所发育的LSTM模型的可行性进行流流预测,并将开发的LSTM模型的性能与经典的背部化神经网络模型进行了比较; (ii)在将LSTM模型应用于流流预测的实验过程中,测试了训练集规模对开发的LSTM模型性能的影响; (iii)测试了训练集之间的时间间隔和在开发的LSTM模型的性能上设定的测试中的效果; (iv)测试了预测数据的时间跨度对开发的LSTM模型性能的影响。实验数据表明,由于在干燥季节处理稳定的流流程数据中,开发的LSTM模型不仅具有明显的优势,而且还显示出雨季在雨季快速波动的流流数据中捕获数据特征的良好能力。

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