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ResGraphNet: GraphSAGE with embedded residual module for prediction of global monthly mean temperature

Ziwei Chen, Zhiguo Wang, Yang Yang, Jinghuai Gao

2022Artificial Intelligence in Geosciences10 citationsDOIOpen Access PDF

Abstract

Data-driven prediction of time series is significant in many scientific research fields such as global climate change and weather forecast. For global monthly mean temperature series, considering the strong potential of deep neural network for extracting data features, this paper proposes a data-driven model, ResGraphNet, which improves the prediction accuracy of time series by an embedded residual module in GraphSAGE layers. The experimental results of a global mean temperature dataset, HadCRUT5, show that compared with 11 traditional prediction technologies, the proposed ResGraphNet obtains the best accuracy. The error indicator predicted by the proposed ResGraphNet is smaller than that of the other 11 prediction models. Furthermore, the performance on seven temperature datasets shows the excellent generalization of the ResGraphNet. Finally, based on our proposed ResGraphNet, the predicted 2022 annual anomaly of global temperature is 0.74722 °C, which provides confidence for limiting warming to 1.5 °C above pre-industrial levels.

Topics & Concepts

ResidualGeneralizationLimitingAnomaly (physics)Artificial neural networkSeries (stratigraphy)Global temperatureMean radiant temperatureComputer scienceMean squared prediction errorData miningGlobal warmingEnvironmental scienceClimate changeArtificial intelligenceMachine learningMathematicsAlgorithmGeologyEngineeringMathematical analysisPaleontologyCondensed matter physicsPhysicsMechanical engineeringOceanographyHydrological Forecasting Using AIEnergy Load and Power ForecastingClimate variability and models
ResGraphNet: GraphSAGE with embedded residual module for prediction of global monthly mean temperature | Litcius