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基于ST-ConvLSTM的南海海表面CO_(2)分压的空间和时间序列预测 被引量:1
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作者 高宇 李爽 +1 位作者 郝鹏 宋金宝 《海洋与湖沼》 CAS CSCD 北大核心 2023年第6期1573-1585,共13页
海表面二氧化碳分压(pCO_(2))的未来变化趋势,对统计评估全球碳收支以及理解全球气候变化背景下的海洋酸化现象至关重要。目前传统的海面pCO_(2)预测方法大部分基于有限的实测数据,然而实测数据存在着时间和地理方面的制约,且计算成本... 海表面二氧化碳分压(pCO_(2))的未来变化趋势,对统计评估全球碳收支以及理解全球气候变化背景下的海洋酸化现象至关重要。目前传统的海面pCO_(2)预测方法大部分基于有限的实测数据,然而实测数据存在着时间和地理方面的制约,且计算成本较高。近年来,随着时空观测数据的爆炸性增长,基于深度学习的数据驱动模型在海表面pCO_(2)预测方面中表现出良好的潜力。然而,由于多种环境因素与海表面pCO_(2)之间的关系错综复杂,到目前为止尚无十分简单有效的相关模型来对海表面pCO_(2)进行预测。为应对这一挑战,利用时空卷积长短时记忆神经网络(ST-ConvLSTM)模型,通过海面温度(sea surface temperature,SST)、海面盐度(sea surface salinity,SSS)、叶绿素a浓度(chl a)和海面pCO_(2)数据,预测南海的海面pCO_(2),并将2019年1~12月的数据作为测试集对模型的表现进行了验证。结果显示,ST-ConvLSTM模型的预测因子均方根误差、平均绝对误差和决定系数分别为0.981 Pa、0.711 Pa和0.997。对比卷积LSTM(ConvLSTM)、随机森林和广义回归神经网络(generalized regression neural network,GRNN)三种方法,证实本文所提出的方法在解决南海pCO_(2)预测问题上是可靠的。 展开更多
关键词 st-convlstm模型 中国南海 海表面二氧化碳分压 深度学习
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Prediction of sea surface pCO_(2)in the South China Sea using Spatiotemporal Convolutional LSTM model
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作者 Shuang LI Yu GAO +4 位作者 Jiannan GAO Yaqi ZHAO Peng HAO Jinbao SONG Chengcheng YU 《Journal of Oceanology and Limnology》 2026年第1期19-35,共17页
The prediction of sea surface partial pressure of carbon dioxide(pCO_(2))in the South China Sea is crucial for understanding the region’s contribution to the global carbon budget and its interactions with climate cha... The prediction of sea surface partial pressure of carbon dioxide(pCO_(2))in the South China Sea is crucial for understanding the region’s contribution to the global carbon budget and its interactions with climate change.We applied the Spatiotemporal Convolutional Long Short-Term Memory(STConvLSTM)model,integrating key environmental factors including sea surface temperature(SST),sea surface salinity(SSS),and chlorophyll a(Chl a),to predict and analyze sea surface pCO_(2)in the South China Sea.The model demonstrated high accuracy in short-term predictions(1 month),with a mean absolute error(MAE)of 0.394,a root mean square error(RMSE)of 0.659,and a coefficient of determination(R^(2))of 0.998.For long-term predictions(12 months),the model maintained its predictive capability,with an MAE of 0.667,RMSE of 1.255,and R^(2)of 0.994.Feature importance analysis revealed that sea surface pCO_(2)and SST were the main drivers of the model’s predictions,whereas Chl a and SSS had relatively minor impacts.The model’s generalization ability was further validated in the northwest Pacific Ocean and tropical Pacific Ocean,where it successfully captured the spatiotemporal variation in pCO_(2)with small prediction errors.The ST-ConvLSTM model provides an efficient and accurate tool for forecasting and analyzing sea surface pCO_(2)in the South China Sea,offering new insights into global carbon cycling and climate change.This study demonstrates the potential of deep learning in marine science and provides a significant technical support for global changes and marine ecosystem research. 展开更多
关键词 sea surface carbon dioxide South China Sea Spatiotemporal Convolutional Long Short-Term Memory(st-convlstm) deep learning
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