Exploring non-linear modes of the subtropical Indian Ocean Dipole using autoencoder neural networks

Chibuike Chiedozie Ibebuchi
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Abstract

The subtropical Indian Ocean Dipole (SIOD) significantly influences climate variability, predominantly within parts of the Southern Hemisphere. This study applies an autoencoder—a type of artificial neural network (ANN)—known for its ability to capture intricate non-linear relationships in data through the process of encoding and decoding—to analyze the spatiotemporal characteristics of the SIOD. The encoded SIOD pattern(s) is compared to the conventional definition of the SIOD, calculated as the sea surface temperature (SST) anomaly difference between the western and eastern subtropical Indian Ocean. The analysis reveals two encoded patterns consistent with the conventional SIOD structure, predominantly represented by the SST dipole pattern south of Madagascar and off Australia’s west coast. During different analysis periods, distinct variability in the global SST patterns associated with the SIOD was observed. This variability underscores the SIOD’s dynamic nature and the challenges of accurately defining modes of variability with limited records. One of the ANN patterns has a substantial congruence match of 0.92 with the conventional SIOD pattern, while the other represents an alternate non-linear pattern within the SIOD. This implies the potential existence of additional non-linear SIOD patterns in the subtropical Indian Ocean, complementing the traditional model. When global temperature and precipitation are regressed onto the ANN temporal patterns and the conventional SIOD index, both appear to be associated with anomalous climate conditions over parts of Australia, with several other consistent global impacts. Nevertheless, due to the non-linear nature of the ANN patterns, their effects on local temperature and precipitation vary across different regions as compared to the conventional SIOD index. This study highlights that while the conventional SIOD pattern is consistent with the ANN-derived SIOD pattern, the climate system’s complexity and non-linearity might require ANN modeling to advance our comprehension of climatic modes.
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利用自动编码器神经网络探索亚热带印度洋偶极子的非线性模式
亚热带印度洋偶极子(SIOD)对气候变异有重大影响,主要是在南半球的部分地区。本研究采用自动编码器--一种人工神经网络(ANN),因其能够通过编码和解码过程捕捉数据中错综复杂的非线性关系而闻名--来分析 SIOD 的时空特征。编码后的 SIOD 模式与 SIOD 的传统定义进行了比较,SIOD 的计算方法是亚热带印度洋西部和东部之间的海面温度(SST)异常差。分析表明,有两种编码模式与传统的 SIOD 结构一致,主要表现为马达加斯加以南和澳大利亚西海岸附近的海面温度偶极模式。在不同的分析时段,观察到与 SIOD 相关的全球海温模式有明显的变化。这种变异性突显了 SIOD 的动态性质,以及在记录有限的情况下准确定义变异模式所面临的挑战。其中一个 ANN 模式与传统 SIOD 模式的吻合度高达 0.92,而另一个则代表了 SIOD 中的另一种非线性模式。这意味着亚热带印度洋可能存在其他非线性 SIOD 模式,对传统模式进行了补充。当将全球温度和降水量回归到 ANN 时间模式和传统 SIOD 指数时,两者似乎都与澳大利亚部分地区的异常气候条件有关,并有其他一些一致的全球影响。然而,由于 ANN 模式的非线性性质,与传统 SIOD 指数相比,它们对不同地区的当地气温和降水的影响各不相同。这项研究强调,虽然传统的 SIOD 模式与 ANN 导出的 SIOD 模式一致,但气候系统的复杂性和非线性可能需要 ANN 建模来推进我们对气候模式的理解。
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