• Alaka, G., X. Zhang, S. Gopalakrishnan, S. Goldenberg, and F. Marks, 2017: Performance of basin-scale HWRF tropical cyclone track forecasts. Wea. Forecasting, 32, 12531271, https://doi.org/10.1175/WAF-D-16-0150.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Bhalachandran, S., R. Nadimpalli, K. Osuri, F. Marks, S. Gopalakrishnan, S. Subramanian, U. Mohanty, and D. Niyogi, 2019: On the processes influencing rapid intensity changes of tropical cyclones over the Bay of Bengal. Sci. Rep., 9, 3382, https://doi.org/10.1038/s41598-019-40332-z.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Binol, H., 2018: Ensemble learning based multiple kernel principal component analysis for dimensionality reduction and classification of hyperspectral imagery. Math. Probl. Eng., 2018, 9632569, https://doi.org/10.1155/2018/9632569.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Bluestein, H., 1993: Synoptic–Dynamic Meteorology in Midlatitudes. Vol. 1. Oxford University Press, 448 pp.

  • Bosart, L., C. Velden, W. Bracken, J. Molinari, and P. Black, 2000: Environmental influences on the rapid intensification of Hurricane Opal (1995) over the Gulf of Mexico. Mon. Wea. Rev., 128, 322352, https://doi.org/10.1175/1520-0493(2000)128<0322:EIOTRI>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Braun, S., J. Sippel, and D. Nolan, 2012: The impact of dry midlevel air on hurricane intensity in idealized simulations with no mean flow. J. Atmos. Sci., 69, 236257, https://doi.org/10.1175/JAS-D-10-05007.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Chen, H., and D. Zhang, 2013: On the rapid intensification of Hurricane Wilma (2005). Part II: Convective bursts and the upper-level warm core. J. Atmos. Sci., 70, 146162, https://doi.org/10.1175/JAS-D-12-062.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Cristianini, N., and J. Shawe-Taylor, 2000: An Introduction to Support Vector Machines and Other Kernel-Based Learning Methods. Cambridge University Press, 189 pp.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • DeMaria, M., M. Mainelli, L. Shay, J. Knaff, and J. Kaplan, 2005: Further improvements to the Statistical Hurricane Intensity Prediction Scheme. Wea. Forecasting, 20, 531543, https://doi.org/10.1175/WAF862.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Dolnicar, S., B. Grün, F. Leisch, and K. Schmidt, 2013: Required sample sizes for data-driven market segmentation analysis in tourism. J. Travel Res., 53, 296306, https://doi.org/10.1177/0047287513496475.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Efron, B., and R. Tibshirani, 1993: An Introduction to the Bootstrap. Chapman & Hall, 435 pp.

  • Fischer, M. S., B. H. Tang, and K. L. Corbosiero, 2017: Assessing the influence of upper-tropospheric troughs on tropical cyclone intensification rates after genesis. Mon. Wea. Rev., 145, 12951313, https://doi.org/10.1175/MWR-D-16-0275.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Fischer, M. S., B. H. Tang, and K. L. Corbosiero, 2019: A climatological analysis of tropical cyclone rapid intensification in environments of upper-tropospheric troughs. Mon. Wea. Rev., 147, 36933719, https://doi.org/10.1175/MWR-D-19-0013.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Frank, W. M., and E. A. Ritchie, 1999: Effects of environmental flow upon tropical cyclone structure. Mon. Wea. Rev., 127, 20442061, https://doi.org/10.1175/1520-0493(1999)127<2044:EOEFUT>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Grimes, A., and A. Mercer, 2014: Synoptic-scale precursors to tropical cyclone rapid intensification in the Atlantic Basin. Adv. Meteor., 2015, 814043, https://doi.org/10.1155/2015/814043.

    • Search Google Scholar
    • Export Citation
  • Grimes, A., and A. Mercer, 2016: Diagnosing rapid intensification through rotated principal component analysis. Tropical Cyclone Dynamics, Prediction, and Detection, InTech, 25–49.

    • Crossref
    • Export Citation
  • Hamill, T., G. Bates, J. Whitaker, D. Murray, M. Fiorino, T. Galarneau, Y. Zhu, and W. Lapenta, 2013: NOAA’s second-generation Global Medium-Range Ensemble Reforecast dataset. Bull. Amer. Meteor. Soc., 94, 15531565, https://doi.org/10.1175/BAMS-D-12-00014.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Hanley, D., J. Molinari, and D. Keyser, 2001: A composite study of the interactions between tropical cyclones and upper-tropospheric troughs. Mon. Wea. Rev., 129, 25702584, https://doi.org/10.1175/1520-0493(2001)129<2570:ACSOTI>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Hendricks, E., M. Peng, B. Fu, and T. Li, 2010: Quantifying environmental control on tropical cyclone intensity change. Mon. Wea. Rev., 138, 32433271, https://doi.org/10.1175/2010MWR3185.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Hinton, G., T. Sejnowski, and H. Hughes, 1999: Unsupervised Learning: Foundations of Neural Computation. Massachusetts Institute of Technology, 401 pp.

    • Crossref
    • Export Citation
  • Holliday, C. R., and A. H. Thompson, 1979: Climatological characteristics of rapidly intensifying typhoons. Mon. Wea. Rev., 107, 10221034, https://doi.org/10.1175/1520-0493(1979)107<1022:CCORIT>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Judt, F., and S. S. Chen, 2016: Predictability and dynamics of tropical cyclone rapid intensification deduced from high-resolution stochastic ensembles. Mon. Wea. Rev., 144, 43954420, https://doi.org/10.1175/MWR-D-15-0413.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Kaplan, J., and M. DeMaria, 2003: Large-scale characteristics of rapidly intensifying tropical cyclones in the Atlantic basin. Wea. Forecasting, 18, 10931108, https://doi.org/10.1175/1520-0434(2003)018<1093:LCORIT>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Kaplan, J., M. DeMaria, and J. Knaff, 2010: A revised tropical cyclone rapid intensification index for the Atlantic and eastern North Pacific basins. Wea. Forecasting, 25, 220241, https://doi.org/10.1175/2009WAF2222280.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Kaplan, J., and Coauthors, 2015: Evaluating environmental impacts on tropical cyclone rapid intensification predictability utilizing statistical models. Wea. Forecasting, 30, 13741396, https://doi.org/10.1175/WAF-D-15-0032.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Karpatne, A., I. Ebert-Uphoff, S. Ravela, H. A. Babaie, and V. Kumar, 2018: Machine learning for the geosciences: Challenges and opportunities. IEEE Trans. Knowl. Data Eng., 31, 15441554, https://doi.org/10.1109/TKDE.2018.2861006.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Klemp, J., 2006: Advances in the WRF model for convection-resolving forecasting. Adv. Geosci., 7, 2529, https://doi.org/10.5194/adgeo-7-25-2006.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Kotroni, V., and K. Lagouvardos, 2004: Evaluation of MM5 high-resolution real-time forecasts over the urban area of Athens, Greece. J. Appl. Meteor., 43, 16661678, https://doi.org/10.1175/JAM2170.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Landsea, C., and J. Franklin, 2013: Atlantic hurricane database uncertainty and presentation of a new database format. Mon. Wea. Rev., 141, 35763592, https://doi.org/10.1175/MWR-D-12-00254.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Leroux, M., 2016: On the sensitivity of tropical cyclone intensification and upper-level trough forcing. Mon. Wea. Rev., 144, 11791202, https://doi.org/10.1175/MWR-D-15-0224.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Liu, B., and L. Xie, 2012: A scale-selective data assimilation approach to improving tropical cyclone track and intensity forecasts in a limited-area model: A case-study of Hurricane Felix (2007). Wea. Forecasting, 27, 124140, https://doi.org/10.1175/WAF-D-10-05033.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Martinez, J., M. M. Bell, J. L. Vigh, and R. F. Rogers, 2017: Examining tropical cyclone structure and intensification with the FLIGHT+ Dataset from 1999 to 2012. Mon. Wea. Rev., 145, 44014421, https://doi.org/10.1175/MWR-D-17-0011.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Mercer, A., and A. Grimes, 2015: Diagnosing tropical cyclone rapid intensification using kernel methods and reanalysis datasets. Procedia Comput. Sci., 61, 422427, https://doi.org/10.1016/j.procs.2015.09.179.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Mercer, A., M. Richman, and L. Leslie, 2011: Identification of severe weather outbreaks using kernel principal component analysis. Procedia Comput. Sci., 6, 231236, https://doi.org/10.1016/j.procs.2011.08.043.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Mercer, A., J. Dyer, and S. Zhang, 2013: Warm-season thermodynamically-driven rainfall prediction with support vector machines. Procedia Comput. Sci., 20, 128133, https://doi.org/10.1016/j.procs.2013.09.250.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Molinari, J., S. Skubis, and D. Vollaro, 1995: External influences on hurricane intensity. Part III: Potential vorticity structure. J. Atmos. Sci., 52, 35933606, https://doi.org/10.1175/1520-0469(1995)052<3593:EIOHIP>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Nolan, D. S., Y. Moon, and D. P. Stern, 2007: Tropical cyclone intensification from asymmetric convection: Energetics and efficiency. J. Atmos. Sci., 64, 33773405, https://doi.org/10.1175/JAS3988.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Plotkin, D., R. Webber, M. O’Neill, J. Weare, and D. Abbot, 2019: Maximizing simulated tropical cyclone intensity with action minimization. J. Adv. Model. Earth Syst., 11, 863891, https://doi.org/10.1029/2018MS001419.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Richman, M., 1986: Rotation of principal components. J. Climatol., 6, 293335, https://doi.org/10.1002/joc.3370060305.

  • Richman, M., and I. Adrianto, 2010: Classification and regionalization through kernel principal component analysis. Phys. Chem. Earth, 35, 316328, https://doi.org/10.1016/j.pce.2010.02.001.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Rios-Berrios, R., and R. Torn, 2017: Climatological analysis of tropical cyclone intensity changes under moderate vertical wind shear. Mon. Wea. Rev., 145, 17171738, https://doi.org/10.1175/MWR-D-16-0350.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Russell, S., and P. Norvig, 2010: Artificial Intelligence: A Modern Approach. 3rd ed. Pearson Education Press, 1091 pp.

  • Schölkopf, B., A. Smola, and K. Müller, 1998: Nonlinear component analysis as a kernel eigenvalue problem. Neural Comput., 10, 12991319, https://doi.org/10.1162/089976698300017467.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Shiokawa, Y., Y. Date, and J. Kikuchi, 2018: Application of kernel principal component analysis and computational machine learning to exploration of metabolites strongly associated with diet. Nat. Sci. Rep., 8, 3426, https://doi.org/10.1038/S41598-018-20121-W.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Shu, S., Y. Wang, and L. Bai, 2013: Insight into the role of lower-level vertical wind shear in tropical cyclone intensification over the western North Pacific. Acta Meteor. Sin., 27, 356363, https://doi.org/10.1007/s13351-013-0310-9.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Sun, Z., B. Zhang, J. Zhang, and W. Perrie, 2019: Examination of surface wind asymmetry in tropical cyclones over the northwest Pacific Ocean using SMAP observations. Remote Sensing, 11, 2604, https://doi.org/10.3390/rs11222604.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Tallapragada, V., C. Kieu, Y. Kwon, S. Trahan, Q. Liu, Z. Zhang, and I. Kwon, 2014: Evaluation of storm structure from the operational HWRF during 2012 implementation. Mon. Wea. Rev., 142, 43084325, https://doi.org/10.1175/MWR-D-13-00010.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Tang, B., and K. Emanuel, 2012: A ventilation index for tropical cyclones. Bull. Amer. Meteor. Soc., 93, 19011912, https://doi.org/10.1175/BAMS-D-11-00165.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Tao, C., and H. Jiang, 2015: Distributions of shallow to very deep precipitation-convection in rapidly intensifying tropical cyclones. J. Climate, 28, 87918824, https://doi.org/10.1175/JCLI-D-14-00448.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Tao, D., and F. Zhang, 2014: Effect of environmental shear, sea-surface temperature, and ambient moisture on the formation and predictability of tropical cyclones: An ensemble-mean perspective. J. Adv. Model. Earth Syst., 6, 384404, https://doi.org/10.1002/2014MS000314.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Tsonis, A., 2007: An Introduction to Atmospheric Thermodynamics. Cambridge University Press, 198 pp.

  • Wang, Y., and C. C. Wu, 2004: Current understanding of tropical cyclone structure and intensity changes—A review. Meteor. Atmos. Phys., 87, 257278, https://doi.org/10.1007/s00703-003-0055-6.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Wang, Y., Y. Rao, Z.-M. Tan, and D. Schönemann, 2015: A statistical analysis of the effects of vertical wind shear on tropical cyclone intensity change over the western North Pacific. Mon. Wea. Rev., 143, 34343453, https://doi.org/10.1175/MWR-D-15-0049.1.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Wilks, D., 2011: Statistical Methods in the Atmospheric Sciences. 3rd ed., Academic Press, 676 pp.

  • Willoughby, H., 1998: Tropical cyclone eye thermodynamics. Mon. Wea. Rev., 126, 30533067, https://doi.org/10.1175/1520-0493(1998)126<3053:TCET>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Willoughby, H., J. Clos, and M. Shoreibah, 1982: Concentric eyewalls, secondary wind maxima, and the evolution of the hurricane vortex. J. Atmos. Sci., 39, 395411, https://doi.org/10.1175/1520-0469(1982)039<0395:CEWSWM>2.0.CO;2.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Wu, L., and Coauthors, 2012: Relationship of environmental relative humidity with North Atlantic tropical cyclone intensity and intensification rate. Geophys. Res. Lett., 39, L20809, https://doi.org/10.1029/2012GL053546.

    • Crossref
    • Search Google Scholar
    • Export Citation
  • Youden, W., 1950: Index for rating diagnostic tests. Cancer, 3, 3235, https://doi.org/10.1002/1097-0142(1950)3:1<32::AID-CNCR2820030106>3.0.CO;2-3.

    • Crossref
    • Search Google Scholar
    • Export Citation
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Application of Unsupervised Learning Techniques to Identify Atlantic Tropical Cyclone Rapid Intensification Environments

Andrew E. Mercer Department of Geosciences, Mississippi State University, Starkville, Mississippi

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Alexandria D. Grimes Department of Geosciences, Mississippi State University, Starkville, Mississippi

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Kimberly M. Wood Department of Geosciences, Mississippi State University, Starkville, Mississippi

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Abstract

Tropical cyclone (TC) track forecasts have improved in recent decades while intensity forecasts, particularly predictions of rapid intensification (RI), continue to show low skill. Many statistical methods have shown promise in predicting RI using environmental fields, although these methods rely heavily upon supervised learning techniques such as classification. Advances in unsupervised learning techniques, particularly those that integrate nonlinearity into the class separation problem, can improve discrimination ability for difficult tasks such as RI prediction. This study quantifies separability between RI and non-RI environments for 2004–16 Atlantic Ocean TCs using an unsupervised learning method that blends principal component analysis with k-means cluster analysis. Input fields consisted of TC-centered 1° Global Forecast System analysis (GFSA) grids (170 different variables and isobaric levels) for 3605 TC samples and five domain sizes. Results are directly compared with separability offered by operational RI forecast predictors for eight RI definitions. The unsupervised learning procedure produced improved separability over operational predictors for all eight RI definitions, five of which showed statistically significant improvement. Composites from these best-separating GFSA fields highlighted the importance of mid- and upper-level relative humidity in identifying the onset of short-term RI, whereas long-term, higher-magnitude RI was generally associated with weaker absolute vorticity. Other useful predictors included optimal thermodynamic RI ingredients along the mean trajectory of the TC. The results suggest that the orientation of a more favorable thermodynamic environment relative to the TC and midlevel vorticity magnitudes could be useful predictors for RI.

© 2021 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Corresponding author address: Andrew Mercer, a.mercer@msstate.edu

Abstract

Tropical cyclone (TC) track forecasts have improved in recent decades while intensity forecasts, particularly predictions of rapid intensification (RI), continue to show low skill. Many statistical methods have shown promise in predicting RI using environmental fields, although these methods rely heavily upon supervised learning techniques such as classification. Advances in unsupervised learning techniques, particularly those that integrate nonlinearity into the class separation problem, can improve discrimination ability for difficult tasks such as RI prediction. This study quantifies separability between RI and non-RI environments for 2004–16 Atlantic Ocean TCs using an unsupervised learning method that blends principal component analysis with k-means cluster analysis. Input fields consisted of TC-centered 1° Global Forecast System analysis (GFSA) grids (170 different variables and isobaric levels) for 3605 TC samples and five domain sizes. Results are directly compared with separability offered by operational RI forecast predictors for eight RI definitions. The unsupervised learning procedure produced improved separability over operational predictors for all eight RI definitions, five of which showed statistically significant improvement. Composites from these best-separating GFSA fields highlighted the importance of mid- and upper-level relative humidity in identifying the onset of short-term RI, whereas long-term, higher-magnitude RI was generally associated with weaker absolute vorticity. Other useful predictors included optimal thermodynamic RI ingredients along the mean trajectory of the TC. The results suggest that the orientation of a more favorable thermodynamic environment relative to the TC and midlevel vorticity magnitudes could be useful predictors for RI.

© 2021 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Corresponding author address: Andrew Mercer, a.mercer@msstate.edu
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