Understanding seasonal climatic conditions is critical for better management of resources such as water, energy and agriculture. Recently, there has been a great interest in utilizing the power of artificial intelligence methods in climate studies. This paper presents a cutting-edge deep learning model (UNet++) trained by state-of-the-art global CMIP6 models to forecast global temperatures a month ahead using the ERA5 reanalysis dataset. ERA5 dataset was also used for finetuning as well performance analysis in the validation dataset. Three different setups (CMIP6; CMIP6 + elevation; CMIP6 + elevation + ERA5 finetuning) were used with both UNet and UNet++ algorithms resulting in six different models. For each model 14 different sequential and non-sequential temporal settings were used. The Mean Absolute Error (MAE) analysis revealed that UNet++ with CMIP6 with elevation and ERA5 finetuning model with "Year 3 Month 2" temporal case provided the best outcome with an MAE of 0.7. Regression analysis over the validation dataset between the ERA5 data values and the corresponding AI model predictions revealed slope and $R^2$ values close to 1 suggesting a very good agreement. The AI model predicts significantly better than the mean CMIP6 ensemble between 2016 and 2021. Both models predict the summer months more accurately than the winter months.
翻译:对更好地管理水资源、能源和农业等资源而言,了解季节性气候条件至关重要。最近,人们非常有兴趣在气候研究中利用人工智能方法的力量。本文件展示了由最先进的全球CMIP6模型培训的尖端深学习模型(UNet++),以利用ERA5再分析数据集提前一个月预测全球气温。ERA5数据集还用于在验证数据集中进行微调和绩效分析。三种不同的数据集(CMIP6;CMIP6+加升;CMIP6+高ER5微调)在UNet和UNet+++算法中都使用了6种不同的模型。每个模型都使用了14种不同的顺序和非顺序时间设置。平均绝对错误分析显示,UNet+CMIP6与CMIP6的升幅和ERA5微调模型在“第3个月2个月”中提供了最佳结果。在ER5数据值接近的验证数据集和ER2数据值接近值之间,对ER2号数据值的回溯性分析比AIM2号模型预测更准确。AIMS 2号模型显示的准确的斜度和20个月。