Author:
Huang Yu,Yang Lichao,Fu Zuntao
Abstract
Abstract. Despite the great success of machine learning, its application in climate
dynamics has not been well developed. One concern might be how well the
trained neural networks could learn a dynamical system and what will be the
potential application of this kind of learning. In this paper, three machine-learning methods are used: reservoir computer (RC), backpropagation-based (BP)
artificial neural network, and long short-term memory (LSTM) neural network. It shows that the coupling relations or dynamics among variables in
linear or nonlinear systems can be inferred by RC and LSTM, which can be
further applied to reconstruct one time series from the other. Specifically,
we analyzed the climatic toy models to address two questions: (i) what
factors significantly influence machine-learning reconstruction and (ii)
how do we select suitable explanatory variables for machine-learning
reconstruction. The results reveal that both linear and nonlinear coupling
relations between variables do influence the reconstruction quality of
machine learning. If there is a strong linear coupling between two
variables, then the reconstruction can be bidirectional, and both of these
two variables can be an explanatory variable for reconstructing the other.
When the linear coupling among variables is absent but with the significant
nonlinear coupling, the machine-learning reconstruction between two
variables is direction dependent, and it may be only unidirectional. Then
the convergent cross mapping (CCM) causality index is proposed to determine
which variable can be taken as the reconstructed one and which as the
explanatory variable. In a real-world example, the Pearson correlation
between the average tropical surface air temperature (TSAT) and the average
Northern Hemisphere SAT (NHSAT) is weak (0.08), but the CCM index of NHSAT
cross mapped with TSAT is large (0.70). And this indicates that TSAT can be well
reconstructed from NHSAT through machine learning. All results shown in this study could provide insights into machine-learning
approaches for paleoclimate reconstruction, parameterization scheme, and
prediction in related climate research.Highlights: i The coupling dynamics learned by machine learning can be used to reconstruct
time series. ii Reconstruction quality is direction dependent and variable dependent for nonlinear
systems. iii The CCM index is a potential indicator to choose reconstructed and
explanatory variables. iv The tropical average SAT can be well reconstructed from the average Northern
Hemisphere SAT.
Subject
General Earth and Planetary Sciences
Reference61 articles.
1. Badin, G. and Domeisen, D. I.: A search for chaotic behavior in stratospheric
variability: comparison between the Northern and Southern Hemispheres, J.
Atmos. Sci., 71, 4611–4620, 2014.
2. Biancofiore, F., Busilacchio, M., Verdecchia, M., Tomassetti, B., Aruffo,
E., Bianco, S., and Di Carlo, P.: Recursive neural network model for
analysis and forecast of PM10 and PM2.5, Atmos. Pollut. Res., 8,
652–659, 2017.
3. Brown, P. J.: Measurement, Regression, and Calibration, vol. 12 of Oxford
Statistical Science Series, Oxford University Press, USA, 216 pp., 1994.
4. Carroll, T. L.: Using reservoir computers to distinguish chaotic series, Phys. Rev. E., 98, 052209, https://doi.org/10.1103/PhysRevE.98.052209, 2018.
5. Chattopadhyay, A., Hassanzadeh, P., and Subramanian, D.: Data-driven
predictions of a multiscale Lorenz 96 chaotic system using machine-learning
methods: reservoir computing, artificial neural network, and long short-term
memory network, Nonlin. Processes Geophys., 27, 373–389, 2020.
Cited by
12 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献