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Sea level prediction using climatic variables: a comparative study of SVM and hybrid wavelet SVM approaches

机译:利用气候变量的海平预测:SVM和杂交小波SVM方法的比较研究

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Climate change is expected to adversely affect the coastal ecosystem in many ways. One of the major consequences of climate change in coastal areas is sea level rise. In order to manage this problem efficiently, it is essential to obtain reasonably accurate estimates of future sea level. This study focuses essentially on the identification of climatic variables influencing sea level and sea level prediction. Correlation analysis and wavelet coherence diagrams were used for identifying the influencing variables, and support vector machine (SVM) and hybrid wavelet support vector machine (WSVM) techniques were used for sea level prediction. Sea surface temperature, sea surface salinity, and mean sea level pressure were observed to be the major local climatic variables influencing sea level. Halosteric effect is found to have a major impact on the sea level. The variables identified were subsequently used as predictors in both SVM and WSVM. WSVM employs discrete wavelet transform to decompose the variables before being input to the SVM model. The performance of both the models was compared using statistical measures such as root mean square error (RMSE), correlation coefficient (r), coefficient of determination (r2), average squared error, Nash Sutcliffe efficiency, and percentage bias along with graphical indicators such as Taylor diagrams and regression error characteristic curves. Results indicate that the WSVM model predicted sea level with an RMSE of 0.029 m during the training and 0.040 m during the testing phases. The corresponding values for SVM are 0.043 m and 0.069 m, respectively. Also, the other statistical measures and graphical indicators suggest that WSVM technique outperforms the SVM approach in the prediction of sea level.
机译:预计气候变化将在很多方面对沿海生态系统产生不利影响。沿海地区气候变化的主要后果之一是海平面上升。为了有效地管理这个问题,必须获得对未来海平面的合理准确估计。本研究主要侧重于影响海平面和海平面预测的气候变量的识别。相关性分析和小波相干图用于识别影响变量,并且支持向量机(SVM)和混合小波支持向量机(WSVM)技术用于海平预测。观察海表面温度,海表面盐度和平均海平面压力是影响海平面的主要局部气候变量。发现萎缩效应对海平面产生了重大影响。识别的变量随后在SVM和WSVM中用作预测器。 WSVM采用离散小波变换以在输入到SVM模型之前分解变量。使用统计措施(如统计尺寸误差(RMSE),相关系数(R),确定系数(R2),平均平均误差,纳什SUTCLIFFE效率和百分比偏差以及与图形指示器的百分比相同的统计措施进行比较作为泰勒图和回归误差特征曲线。结果表明,在训练期间,WSVM模型预测海平面为0.029米,在测试阶段期间0.040米。 SVM的相应值分别为0.043米和0.069米。此外,其他统计措施和图形指标表明,WSVM技术在海平面预测中优于SVM方法。

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