Key Laboratory for Submarine Geosciences and Prospecting Techniques (State Ministry of Education), College of Marine Geosciences, Ocean University of China, Qingdao 266100, China; Shandong Provincial Key Laboratory for Marine Environment and Geological Engineering, College of Environmental Science and Engineering, Ocean University of China, Qingdao 266100, China.
School of Mathematical Sciences, Queensland University of Technology, QLD 4001, Australia.
Water Res. 2022 Jun 30;218:118518. doi: 10.1016/j.watres.2022.118518. Epub 2022 Apr 27.
An in-situ monitoring of water quality (suspended sediment concentration, SSC) and concurrent hydrodynamics was conducted in the subaqueous Yellow River Delta in China. Empirical mode decomposition and spectral analysis on the SSC time series reveal the different periodicities of each physical mechanism that contribute to the SSC variations. Based on this physical understanding, the decomposed SSC time series were trained separately with a newly-proposed augmented lncosh ridge regression, in which (1) a lncosh function was incorporated in traditional ridge regression for handling outliers in original data, and (2) the temporal auto-correlation in the decomposed SSC series was used for augmented regression. Finally, the trained sub-series were added up as the final prediction. The advantages of this decomposition-ensemble framework is that it depends on SSC only, superior to the normal process-based models which need the concurrent hydrodynamics for estimating bed shear stress. This will not only reduce the measurement uncertainties of the input when training the data-driven model, but also save the prediction cost as no other parameters than SSC need to be measured and input for running the model. The framework realized 6-hour-ahead high-accuracy forecasting with mean relative errors of 5.80-9.44% in the present case study. The proposed framework can be extended to forecast any signal that is superposed by components with various timescales (periodicities) which is common in nature.
在中国水下黄河三角洲进行了水质(悬浮泥沙浓度,SSC)的原位监测和水动力同步监测。SSC 时间序列的经验模态分解和谱分析揭示了导致 SSC 变化的每个物理机制的不同周期。基于这种物理理解,使用新提出的增强的 lncosh 岭回归分别对分解后的 SSC 时间序列进行了训练,其中:(1)在传统岭回归中加入了 lncosh 函数,用于处理原始数据中的异常值;(2)利用分解后的 SSC 序列中的时间自相关进行增强回归。最后,将训练好的子序列相加作为最终预测。这种分解-集成框架的优势在于它仅依赖于 SSC,优于需要同步水动力来估计底床切应力的常规基于过程的模型。这不仅可以减少数据驱动模型训练时输入的测量不确定性,还可以节省预测成本,因为除了 SSC 之外,无需测量和输入其他参数即可运行模型。在本案例研究中,该框架实现了 6 小时提前高精度预测,平均相对误差为 5.80%-9.44%。该框架可以扩展到预测任何由具有不同时间尺度(周期)的分量叠加而成的信号,这在自然界中很常见。