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Sea Level Prediction by Using Seasonal Autoregressive Integrated Moving Average Model, Case Study in Semarang, Indonesia

机译:使用季节自回归综合移动平均模型预测海平面,印度尼西亚三宝垄的案例研究

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Sea level prediction system is an important tool for many coastal engineering applications, such as for designing of engineering structures in coastal or in offshore, routing of vessels, predicting and preventing flood in low land coastal areas, etc. One classical method to predict sea level is by using the Tidal Harmonic Analysis, in which the sea level is approximated by summation of tidal components. The method needs long historical time series data, and it cannot predict non-tidal component or sealevel anomaly. In this paper, we propose a sea level prediction by using the Autoregressive Integrated Moving Average (ARIMA) and the Seasonal Autoregressive Integrated Moving Average (SARIMA) to predict sea level. Here, we choose a study case in Tanjung Mas Harbour in Semarang, Indonesia. Several input combinations for the ARIMA and the SARIMA are investigated for finding the best fit parameters. Results of prediction by using both methods are compared with the classical Tidal Harmonic Analysis. The accuracy of each method is investigated by calculating the RMSE and R-squared value. Despite of the seasonal data that is used in this paper, the ARIMA method gives the best prediction.
机译:海平面预测系统是许多沿海工程应用的重要工具,例如用于设计沿海或近海的工程结构,船只路线,预测和预防低陆沿海地区的洪水等。一种经典的海平面预测方法是通过使用潮汐谐波分析来实现的,在该分析中,通过潮汐分量的总和来估算海平面。该方法需要很长的历史时间序列数据,并且无法预测非潮汐分量或海平面异常。在本文中,我们提出了使用自回归综合移动平均线(ARIMA)和季节自回归综合移动平均线(SARIMA)预测海平面的海平面预测方法。在这里,我们选择了一个位于印度尼西亚三宝垄的Tanjung Mas Harbor的研究案例。为了找到最佳拟合参数,对ARIMA和SARIMA的几种输入组合进行了研究。将两种方法的预测结果与经典潮汐谐波分析进行比较。通过计算RMSE和R平方值来研究每种方法的准确性。尽管本文使用了季节性数据,但ARIMA方法仍可提供最佳预测。

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