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Estimation of Sea Level Change in the South China Sea from Satellite Altimetry Data

机译:卫星高度数据中南海海平面变化的估算

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The South China Sea is China’s largest marginal sea area, and it is rich in oil and gas mineral resources; thus, estimating its sea level changes is of practical significance. Based on linear and nonlinear sea level change characteristics, this paper decomposes 1992–2019 monthly mean sea level anomaly time series in the South China Sea into trend, seasonal, and random terms. This paper compares the seasonal autoregressive integrated moving average (SARIMA) and Prophet models for estimating the trend and seasonal terms and the long short-term memory (LSTM) and radial basis function (RBF) models for estimating random terms, and the more suitable models were selected. A Prophet-LSTM combined model was developed based on the accuracy results. This paper uses the combined model to study the effect of known data length on the experimental results and determines the best prediction duration. The results show that the combined model is suitable for short-term and medium-term estimations of 12–36 months. The accuracy at 36 months is 0.962?cm, which proves that the combined model has high application value for estimating sea level changes in the South China Sea.
机译:南海是中国最大的边际海域,石油和天然气矿产资源丰富;因此,估算其海平面的变化是具有实际意义。基于线性和非线性海平面变化特性,本文分解了1992-2019月平均海平面异常时间序列南海进入趋势,季节性和随机术语。本文比较了季节性自回归综合移动平均(Sarima)和先知模型,用于估算趋势和季节性术语和长期内存(LSTM)和径向基函数(RBF)模型,用于估算随机术语,更合适的模型被选中了。基于精度结果开发了先知-LSTM组合模型。本文使用组合模型研究了已知数据长度对实验结果的影响,并确定了最佳预测持续时间。结果表明,组合模型适用于12-36个月的短期和中期估计。 36个月的准确性为0.962厘米,证明该组合模型具有估计南海的海平变化的高应用价值。

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