Piotr, B., Jaromir Krzyszczak, Cezary Slawinski. (2014). Multifractal analysis of chosen meteorological time series to assess climate impact in field level..
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Perego, A., Sanna, M., Bellocchi, G., & Acutis. (2014). Simulazione di flussi di carbonio da ecosistemi pratensi: applicazione del modello colturale ARMOSA al sito di Laqueuille (Francia)..
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Nieróbca, A., Kozyra, J., Doroszewski, A., & Zylowska, K. (2014). The agro-meteorological model for yields of winter triticale..
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Nikolic, U., Mitter, H., Schmid, E., & F., S. (2014). Stand und Perspektiven des Sojaanbaues in Serbien (situation and outlook of soy bean production in Serbia)..
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Schönhart, M. (2016). Uncertainties from Climate Change on Farms and Ecosystem Services of a Grassland Dominated Austrian Landscape (Vol. 9 C6 -).
Abstract: MACSUR 1: development of a method to analysefarm and landscape scale impacts of CC, mitigationand adaptation effects– cropland dominated landscape, crop choice and soilmanagement– climate model uncertainty• Now: test and improve the robustness of the method– grassland landscape, cropland expansion and livestock– uncertainty analysis– variability of weather conditions High spatial resolution creates interfaces to disciplinarymodels and indicators• Challenging data & modelling demand• Increasing productivity can increase intensification pressures• Threatened permanent (extensive) grasslands and landscape elements, but• subject to resource constraints, costs and prices• Future RDP and environmental policy design (e.g. WFD) may need to takechanging productivity into account• Future research: analyze uncertainties & environmentalimpacts• Ensembles of crop and grassland models• Sensitivity analysis on economic input parameters• Qualitative surveys with agricultural experts and farmers
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