Ocean College, Zhejiang University, #1 Zheda Road, Zhoushan, Zhejiang 316021, China.
Ocean College, Zhejiang University, #1 Zheda Road, Zhoushan, Zhejiang 316021, China; Ocean Academy, Zhejiang University, #1 Zheda Road, Zhoushan, Zhejiang 316021, China.
Water Res. 2022 Jul 1;219:118591. doi: 10.1016/j.watres.2022.118591. Epub 2022 May 14.
The rapid emergence of deep learning long-short-term-memory (LSTM) technique presents a promising solution to algal bloom forecasting. However, the discontinuous and non-stationary processes within algal dynamics still largely limit the functions of LSTMs. To overcome this challenge, an advanced time-frequency wavelet analysis (WA) technique was introduced to enhance the prediction accuracy of LSTMs. Herein, the novel hybrid approach (named WLSTM) successfully decreased the algal forecasting inaccuracy of classic LSTMs by 41% ± 8% in Lake Mendota (Wisconsin, USA), with powerful one-step-ahead predictions at hourly, daily, and monthly time resolutions (R = 0.976, 0.878, and 0.814, respectively). In addition, the WLSTM outperformed the other two widely used algal forecasting approaches - deep neural network (DNN), and autoregressive-integrated-moving-average (ARIMA) model, represented by average 72% and 85% decrease in root-mean-square-error, respectively. Furthermore, the WLSTM was implemented in an experimentally fertilized lake (Lake Tuesday, Michigan) for a multi-step forecasting examination. It satisfactorily forecasted the algal fluctuations involving substantial peak and extreme values (average R > 0.900) and presented accurate judgment outcomes to their bloom levels with high accuracy > 95% on average. This work highlighted the utility of deep learning approaches in effective early-warning for algal blooms, and demonstrated an important direction for improving the adaptability of conventional deep learning approaches to the aquatic problems.
深度学习长短时记忆 (LSTM) 技术的迅速出现为藻类水华预测提供了有前途的解决方案。然而,藻类动态中的不连续和非平稳过程仍然在很大程度上限制了 LSTM 的功能。为了克服这一挑战,引入了先进的时频小波分析 (WA) 技术来提高 LSTM 的预测精度。在此,新的混合方法(称为 WLSTM)成功地将经典 LSTM 的藻类预测误差降低了 41%±8%,在密尔沃基的门多塔湖(美国威斯康星州)中实现了强大的逐时、逐日和逐月时间分辨率的一步预测(分别为 R=0.976、0.878 和 0.814)。此外,WLSTM 优于其他两种广泛使用的藻类预测方法——深度神经网络 (DNN) 和自回归积分移动平均 (ARIMA) 模型,分别代表平均降低 72%和 85%的均方根误差。此外,WLSTM 已在一个实验性施肥湖(密歇根州星期二湖)中进行了多步预测检验。它成功地预测了涉及大量峰值和极值的藻类波动(平均 R>0.900),并以平均准确率>95%对其水华水平进行了准确的判断。这项工作突出了深度学习方法在藻类水华有效预警方面的效用,并为提高传统深度学习方法对水生问题的适应性提供了一个重要方向。