Predicting Plant Communities in the Vicinity of Wheat Crops and Vineyards in Europe using Participatory Modeling

G. Arts, M. Eupen, S. Hennekens, P. Verweij
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Abstract

The risk assessment of pesticide use on non-target terrestrial plants is currently based on standardized greenhouse tests with a limited number of mostly crop plant species. Higher tier tests or assessments of any kind (e.g., field, semi-field, landscape studies) are not standardized. In this study we explored an approach to inform such a higher level by collecting datasets and information at European scale to characterize the vegetation communities that are likely to grow in the off-field areas of wheat and vine crops. The EUNIS (European Nature Information System) habitat classification was used to identify eight man-made habitats considered characteristic of the off-field areas in the European agricultural landscape. These habitats are spatially identified on the bases of a modelling process where vegetation plots, taken from the European Vegetation Archive, were used as observations and climate, soil, topographic, population density parameters and Remote Sensed Essential Biodiversity Variables as predictors. This modelling results in habitat suitability maps. The habitats are also described in terms of species frequencies and abundances, and to plant traits underlying possible vulnerability to pesticide exposure requested from the TRY plant trait database. Wheat and vine crop spatial data were derived from EUROSTAT and the QUICKScan methodology was used to combine all these data. We conclude that this method is helpful in reaching the objective as described in this paper. Its potential is that it can be extended probabilistically or linked to plant effect models.
利用参与式模型预测欧洲小麦作物和葡萄园附近的植物群落
目前,对非目标陆生植物使用农药的风险评估是基于标准化的温室试验,主要针对数量有限的作物植物物种。更高层次的测试或任何类型的评估(例如,实地、半实地、景观研究)都没有标准化。在这项研究中,我们探索了一种方法,通过收集欧洲规模的数据集和信息来描述可能在小麦和葡萄作物的场外地区生长的植被群落,从而为更高层次提供信息。欧洲自然信息系统(EUNIS)生境分类用于确定欧洲农业景观中被认为具有野外特征的八个人工生境。这些栖息地在空间上的识别是基于一个建模过程,该过程使用来自欧洲植被档案的植被样地作为观测数据,并使用气候、土壤、地形、人口密度参数和遥感基本生物多样性变量作为预测因子。这种建模的结果是生境适宜性图。根据物种频率和丰度以及TRY植物性状数据库中要求的可能易受农药暴露的植物性状,对生境进行了描述。小麦和葡萄作物的空间数据来自欧盟统计局,并使用QUICKScan方法将所有这些数据结合起来。我们得出结论,这种方法有助于达到本文所述的目标。它的潜力在于,它可以在概率上进行扩展,或者与植物效应模型相关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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