Affiliation:
1. Department of Meteorology, Stockholm University, Stockholm, Sweden
2. Department of Mathematics and Statistics, The Open University, Milton Keynes, United Kingdom
Abstract
Conventional analysis methods in weather and climate science (e.g., EOF analysis) exhibit a number of drawbacks including scaling and mixing. These methods focus mostly on the bulk of the probability distribution of the system in state space and overlook its tail. This paper explores a different method, the archetypal analysis (AA), which focuses precisely on the extremes. AA seeks to approximate the convex hull of the data in state space by finding “corners” that represent “pure” types or archetypes through computing mixture weight matrices. The method is quite new in climate science, although it has been around for about two decades in pattern recognition. It encompasses, in particular, the virtues of EOFs and clustering. The method is presented along with a new manifold-based optimization algorithm that optimizes for the weights simultaneously, unlike the conventional multistep algorithm based on the alternating constrained least squares. The paper discusses the numerical solution and then applies it to the monthly sea surface temperature (SST) from HadISST and to the Asian summer monsoon (ASM) using sea level pressure (SLP) from ERA-40 over the Asian monsoon region. The application to SST reveals, in particular, three archetypes, namely, El Niño, La Niña, and a third pattern representing the western boundary currents. The latter archetype shows a particular trend in the last few decades. The application to the ASM SLP anomalies yields archetypes that are consistent with the ASM regimes found in the literature. Merits and weaknesses of the method along with possible future development are also discussed.
Publisher
American Meteorological Society
Reference43 articles.
1. Absil, P.A., R. Mahony, and R. Sepulchre, 2010: Optimization on manifolds: Methods and applications. Recent Advances in Optimization and Its Applications in Engineering, M. Diehl, F. Glineur, and E. J. W. Michiels, Eds., Springer, 125–144.
2. Akaike, H., 1973: Information theory and an extension of the maximum likelihood principle. Proc. Second Int. Symp. on Information Theory, Budapest, Hungary, Akademiai Kiado, 267–281.
3. A new look at the statistical model identification
4. Akaike, H., 1978: Time series analysis and control through parametric models. Applied Time Series Analysis, D. F. Findley, Ed., Academic Press, 1–23.
5. Arctic Oscillation or North Atlantic Oscillation?
Cited by
15 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