6533b853fe1ef96bd12acb43

RESEARCH PRODUCT

Modelling nonlinear dynamics of Crassulacean acid metabolism productivity and water use for global predictions

M. S. BartlettM. S. BartlettSamantha HartzellPaolo IngleseJun YinAmilcare PorporatoSimona Consoli

subject

0106 biological sciences0301 basic medicineStomatal conductanceOpuntia ficus-indicawater use efficiencyPhysiologyPlant ScienceAgricultural engineering01 natural sciencescarbon assimilation03 medical and health sciencesAgaveBiomassWater-use efficiencyPhotosynthesisProductivityTranspirationBiomass (ecology)OpuntiaWaterPlant TranspirationCarbonAgave tequilanaSettore AGR/03 - Arboricoltura Generale E Coltivazioni Arboree030104 developmental biologyNonlinear DynamicsCrassulacean acid metabolismbiomaCrassulacean acid metabolismEnvironmental scienceBiomass partitioningWater use010606 plant biology & botany

description

Crassulacean acid metabolism (CAM) crops are important agricultural commodities in water-limited environments across the globe, yet modeling of CAM productivity lacks the sophistication of widely used C3 and C4 crop models, in part due to the complex responses of the CAM cycle to environmental conditions. This work builds on recent advances in CAM modeling to provide a framework for estimating CAM biomass yield and water use efficiency from basic principles. These advances, which integrate the CAM circadian rhythm with established models of carbon fixation, stomatal conductance, and the soil-plant-atmosphere continuum, are coupled to models of light attenuation, plant respiration, and biomass partitioning. Resulting biomass yield and transpiration for Opuntia ficus-indica and Agave tequilana are validated against field data and compared with predictions of CAM productivity obtained using the empirically-based Environmental Productivity Index (EPI). By representing regulation of the circadian state as a nonlinear oscillator, the modeling approach captures the diurnal dynamics of CAM stomatal conductance, allowing the prediction of CAM transpiration and water use efficiency for the first time at the plot scale. This approach may improve estimates of CAM productivity under light-limiting conditions when compared with previous methods. This article is protected by copyright. All rights reserved.

10.1111/pce.13918http://hdl.handle.net/10447/467117