Neural Network-Based Climate Prediction for the 21st Century Using the Finnish Multi-Millennial Tree-Ring Chronology

E. Kasatkina, O. Shumilov, M. Timonen
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Abstract

The sun’s activity role in climate change has become a topic of debate. According to data from the IPCC, the global average temperature has shown an increasing trend since 1850, with an average increase of 0.06 °C/decade. Our analysis of summer temperature records from five weather stations in northern Fennoscandia (65°–70.4° N) revealed an increasing trend, with a range of 0.09 °C/decade to 0.15 °C/decade. However, due to the short duration of instrumental records, it is not possible to accurately assess and predict climate changes on centennial and millennial timescales. In this study, we used the Finnish super-long (~7600 years) tree-ring chronology to create a climate prediction for the 21st century. We applied a method that combines a long short-term memory (LSTM) neural network with the continuous wavelet transform and wavelet filtering in order to make climate change predictions. This approach revealed a significant decrease in tree-ring growth over the near term (2063–2073). The predicted decrease in tree-ring growth (and regional temperature) is thought to be a result of a new grand solar minimum, which may lead to Little Ice Age-like climatic conditions. This result is significant for understanding current climate processes and assessing potential environmental and socio-economic risks on a global and regional level, including in the area of the Arctic shipping routes.
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利用芬兰多千年树环年表进行基于神经网络的 21 世纪气候预测
太阳活动在气候变化中的作用已成为一个争论不休的话题。根据政府间气候变化专门委员会(IPCC)的数据,全球平均气温自 1850 年以来呈上升趋势,平均每十年上升 0.06 °C。我们对芬诺斯坎迪亚北部(北纬 65°-70.4°)五个气象站的夏季气温记录进行了分析,结果显示气温呈上升趋势,上升幅度为 0.09 ℃/十年至 0.15 ℃/十年。然而,由于仪器记录的持续时间较短,因此无法准确评估和预测百年和千年时间尺度上的气候变化。在这项研究中,我们利用芬兰超长(约7600年)树环年表对21世纪的气候进行了预测。我们采用了一种将长短期记忆(LSTM)神经网络与连续小波变换和小波滤波相结合的方法来预测气候变化。这种方法揭示了近期(2063-2073 年)树环生长的显著下降。预测的树环生长(和区域温度)下降被认为是新的大太阳最低点的结果,这可能会导致类似小冰河时期的气候条件。这一结果对于了解当前的气候过程以及评估全球和区域一级(包括北极航道地区)潜在的环境和社会经济风险具有重要意义。
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