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Cammarano, D., Stefanova, L., Ortiz, B. V., Ramirez-Rodrigues, M., Asseng, S., Misra, V., et al. (2013). Evaluating the fidelity of downscaled climate data on simulated wheat and maize production in the southeastern US. Reg Environ Change, 13(S1), 101–110.
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DiNapoli, S. (2010). Determining the Error Characteristics of H*WIND. Master's thesis, Florida State University, Tallahassee, FL.
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DiNapoli, S. M., & Misra, V. (2012). Reconstructing the 20th century high-resolution climate of the southeastern United States. J. Geophys. Res., 117(D19), n/a-n/a.
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DiNapoli, S. M., Bourassa, M. A., & Powell, M. D. (2012). Uncertainty and Intercalibration Analysis of H*Wind. J. Atmos. Oceanic Technol., 29(6), 822–833.
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Misra, V., & DiNapoli, S. (2014). The variability of the Southeast Asian summer monsoon. Int. J. Climatol., 34(3), 893–901.
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Misra, V., & DiNapoli, S. M. (2013). The observed teleconnection between the equatorial Amazon and the Intra-Americas Seas. Clim Dyn, 40(11-12), 2637–2649.
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Misra, V., & DiNapoli, S. M. (2013). Understanding the wet season variations over Florida. Clim Dyn, 40(5-6), 1361–1372.
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Misra, V., DiNapoli, S., & Powell, M. (2013). The Track Integrated Kinetic Energy of Atlantic Tropical Cyclones. Mon. Wea. Rev., 141(7), 2383–2389.
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Misra, V., DiNapoli, S. M., & Bastola, S. (2013). Dynamic downscaling of the twentieth-century reanalysis over the southeastern United States. Reg Environ Change, 13(S1), 15–23.
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Misra, V., Li, H., Wu, Z., & DiNapoli, S. (2014). Global seasonal climate predictability in a two tiered forecast system: part I: boreal summer and fall seasons. Clim Dyn, 42(5-6), 1425–1448.
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