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Model of Stomatal Conductance in Larrea tridentata : A Case Study Photosynthesis depends on variable water status of plant (Fig. 3). Predawn water potential (y) often used as an indicator of plant water status, instantaneous measures would be more accurate. Don’t often have these data.
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Model of Stomatal Conductance in Larrea tridentata: A Case Study • Photosynthesis depends on • variable water status of plant (Fig. 3). • Predawn water potential (y) often used • as an indicator of plant water status, • instantaneous measures would be more • accurate. Don’t often have these data. • Hierarchical Bayesian model can be • used to predict instantaneous y as a • latent variable (Figs. 3 & 4). • Modeling instantaneous y as a • latent variable gives improved • result (Fig 4). • The finding that control plants • have lower stomatal conductance • than watered plants (Fig. 5) offers • support for the hypothesis that • L. tridentate is successful in arid • systems partially because of its • ability to tightly regulate its stomatal • water loss during periods of water stress. Figure 3. Figure 4. Figure 5. Data Assimilation Workshop Oct 22-24, 2007 Norman, OK Poster presented by Rich Lucas & Kiona Ogle rlucas3@uwyo.edu kogle@uwyo.edu Understanding the effects of altered precipitation on arid and semiarid plants and ecosystems: A Bayesian synthesis Richard W. Lucas and Kiona Ogle Botany Dept, University of Wyoming rlucas3@uwyo.edu kogle@uwyo.edu Background The intensity, frequency, and variability in the timing of precipitation events are predicted to increase in the southwestern United States over the next few decades. Arid and semi-arid lands are particularly sensitive to altered precipitation regimes and other hypothesized effects of climate change. No quantitative syntheses have been carried-out with data related to the effects of precipitation change on arid or semiarid ecosystems and our current understanding of how the potential responses of plants, soils, and microbial communities will affect carbon and water fluxes is particularly lacking. The objectives of this project are to synthesize existing data related to carbon and water fluxes from leaves to the ecosystem level across the four major deserts of the Southwest. Several research groups are exploring the effects of altered precipitation regimes on ecosystems of the Southwest. Collaborators Huxman, Loik, Smith, and Tissue have and continue to conduct field studies, including precipitation manipulations, that emphasize the effects of variation in pulse, seasonal, and annual precipitation on C (carbon) and H20 (water) dynamics. These studies span sites located in the four major deserts of the Southwest (Fig. 1), and they have produced enormous quantities of data representing different spatial, temporal, and biological scales. Photosynthesis depends in part on stomatal conductance Figure 2. A simple hierarchical Bayesian model that couples diverse field data and mechanistic models related to leaf, soil, and ecosystem carbon dynamics. Field data are categorized as stochastic or covariates (i.e., assume measured without error). Stochastic variables arise from distributions whose means are defined by the latent processes. The latent processes represent the “truth” or unobserved quantities, and they are informed by the mechanistic models. Figure 1. Distributions of the four major deserts in the Southwest, and locations of the five field sites contributing data to this synthesis project. Sites are: (i) the Valentine Eastern Sierra Reserve (VESR), PI = Michael Loik, (ii) the Nevada Test Site (NTS), PI = Stan Smith, (iii) the Santa Rita Experimental Range (SRER) and the San Pedro River Basin (SPRB), PI = Travis Huxman, and (iv) the Big Bend National Park (BBNP), PI = David Tissue. • Advantages of a Bayesian Approach • Bayesian hierarchical modeling. The Bayesian method explicitly link the diverse data sources with the mechanistic models (Fig. 2). The Bayesian model decomposes the data-model synthesis problem into a probabilistic hierarchical framework. • Mechanistic models. Data can be analyzed within the context of mechanistic models that represent processes operating at different scales. The models contain ecologically-meaningful parameters that provide important insights into how precipitation variability controls C and H2O dynamics in deserts of the Southwest.