Abstract
Predicting wheat phenology is important for cultivar selection, for effective crop management and provides a baseline for evaluating the effects of global change. Evaluating how well crop phenology can be predicted is therefore of major interest. Twenty-eight wheat modeling groups participated in this evaluation. Our target population was wheat fields in the major wheat growing regions of Australia under current climatic conditions and with current local management practices. The environments used for calibration and for evaluation were both sampled from this same target population. The calibration and evaluation environments had neither sites nor years in common, so this is a rigorous evaluation of the ability of modeling groups to predict phenology for new sites and weather conditions. Mean absolute error (MAE) for the evaluation environments, averaged over predictions of three phenological stages and over modeling groups, was 9 days, with a range from 6 to 20 days. Predictions using the multi-modeling group mean and median had prediction errors nearly as small as the best modeling group. About two thirds of the modeling groups performed better than a simple but relevant benchmark, which predicts phenology by assuming a constant temperature sum for each development stage. The added complexity of crop models beyond just the effect of temperature was thus justified in most cases. There was substantial variability between modeling groups using the same model structure, which implies that model improvement could be achieved not only by improving model structure, but also by improving parameter values, and in particular by improving calibration techniques.
Highlights
Crop phenology describes the cycle of biological events during plant growth
The calibration and evaluation environments were drawn from the same target population, namely wheat crops in the major wheat growing regions in Australia, with current climate and local management practices
We evaluated how well 28 crop modeling groups simulate wheat phenology in Australia, in the case where both the calibration data and the evaluation data were sampled from fields in the major wheat growing areas in Australia under current climate and local management
Summary
Crop phenology describes the cycle of biological events during plant growth. These events include, for example, seedling emergence, leaf appearance, flowering, and maturity.Timing of growing seasons and their critical phases as well as estimates of them are increasingly important in changing climate (Olesen et al, 2012, Dalhaus et al, 2018). Crop phenology describes the cycle of biological events during plant growth. These events include, for example, seedling emergence, leaf appearance, flowering, and maturity. Matching the phenology of crop varieties to the climate in which they grow is critical for viable crop production strategies (Rezaei et al, 2018, Hunt et al, 2019). In this study we focus on wheat phenology in Australia. Crop model predictions of phenology have been used in various studies related to wheat production in Australia. In a study by Luo et al (2018), the APSIM model was used to simulate changes in phenology, water use efficiency, and yield to be expected from global climate change.
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