Dynamically downscaling predictions for deciduous tree leaf emergence in California under current and future climate

Int J Biometeorol. 2016 Jul;60(7):935-44. doi: 10.1007/s00484-015-1086-7. Epub 2015 Oct 21.

Abstract

Models that predict the timing of deciduous tree leaf emergence are typically very sensitive to temperature. However, many temperature data products, including those from climate models, have been developed at a very coarse spatial resolution. Such coarse-resolution temperature products can lead to highly biased predictions of leaf emergence. This study investigates how dynamical downscaling of climate models impacts simulations of deciduous tree leaf emergence in California. Models for leaf emergence are forced with temperatures simulated by a general circulation model (GCM) at ~200-km resolution for 1981-2000 and 2031-2050 conditions. GCM simulations are then dynamically downscaled to 32- and 8-km resolution, and leaf emergence is again simulated. For 1981-2000, the regional average leaf emergence date is 30.8 days earlier in 32-km simulations than in ~200-km simulations. Differences between the 32 and 8 km simulations are small and mostly local. The impact of downscaling from 200 to 8 km is ~15 % smaller in 2031-2050 than in 1981-2000, indicating that the impacts of downscaling are unlikely to be stationary.

Keywords: California; Climate change; Dynamical downscaling; Leaf emergence; Valley oak.

MeSH terms

  • Aesculus / growth & development*
  • California
  • Climate
  • Models, Theoretical*
  • Plant Leaves / growth & development*
  • Quercus / growth & development*
  • Temperature