Liao Yuanyuan, Lu Shouqian, Yin Gang
School of Computer Science and Technology, Xinjiang University, Urumqi 830049, China.
College of Geography and Remote Sensing Sciences, Xinjiang University, Urumqi 830049, China.
Sensors (Basel). 2024 Jun 1;24(11):3576. doi: 10.3390/s24113576.
Short-term precipitation forecasting methods are mainly divided into statistical forecasting, numerical model-based forecasting, and radar image extrapolation techniques. The two methods based on statistical prediction and numerical model have the disadvantages of being unstable and generating large errors. Therefore, this study proposes the use of deep learning for radar image extrapolation for precipitation forecasting, in particular by developing algorithms for ConvLSTM and SmaAT-UNet. The ConvLSTM model is a fusion of a CNN (Convolutional Neural Network) and LSTM (Long Short-Term Memory network), which solves the challenge of processing spatial sequence data, which is a task that traditional LSTM models cannot accomplish. At the same time, SmaAT-UNet enhances the traditional UNet structure by incorporating the CBAM (Convolutional Block Attention Module) attention mechanism and replacing the standard convolutional layer with depthwise separable convolution. This innovative approach aims to improve the efficiency and accuracy of short-term precipitation forecasting by improving feature extraction and data processing techniques. Evaluation and analysis of experimental data show that both models exhibit good predictive ability, with the SmaAT-UNet model outperforming ConvLSTM in terms of accuracy. The results show that the performance indicators of precipitation prediction, especially detection probability (POD) and the Critical Success index (CSI), show a downward trend with the extension of the prediction time. This trend highlights the inherent challenges of maintaining predictive accuracy over longer periods of time and highlights the superior performance and resilience of the SmaAT-UNet model under these conditions. Compared with the statistical forecasting method and numerical model forecasting method, its accuracy in short-term rainfall forecasting is improved.
短期降水预报方法主要分为统计预报、基于数值模型的预报和雷达图像外推技术。基于统计预测和数值模型的这两种方法存在不稳定和产生较大误差的缺点。因此,本研究提出利用深度学习进行雷达图像外推以进行降水预报,特别是通过开发卷积长短期记忆网络(ConvLSTM)和自注意力增强型U型网络(SmaAT-UNet)算法。ConvLSTM模型是卷积神经网络(CNN)和长短期记忆网络(LSTM)的融合,它解决了处理空间序列数据的挑战,这是传统LSTM模型无法完成的任务。同时,SmaAT-UNet通过融入卷积块注意力模块(CBAM)注意力机制并用深度可分离卷积取代标准卷积层来增强传统的U型网络结构。这种创新方法旨在通过改进特征提取和数据处理技术来提高短期降水预报的效率和准确性。实验数据的评估与分析表明,这两种模型都表现出良好的预测能力,其中SmaAT-UNet模型在准确性方面优于ConvLSTM。结果表明,降水预测的性能指标,特别是检测概率(POD)和临界成功指数(CSI),随着预测时间的延长呈下降趋势。这一趋势凸显了在较长时间内保持预测准确性的固有挑战,并突出了SmaAT-UNet模型在这些条件下的卓越性能和适应性。与统计预报方法和数值模型预报方法相比,其在短期降雨预报中的准确性得到了提高。