02087naa a2200229 a 450000100080000000500110000800800410001902400390006010000270009924501750012626000090030152013050031065000100161565000130162565000250163870000300166370000200169370000210171370000220173470000240175677300770178021120162020-01-23 2019 bl uuuu u00u1 u #d7 a10.1080/03650340.2019.15667152DOI1 aAPARECIDO, L. E. de O. aNeural networks in climate spatialization and their application in the agricultural zoning of climate risk for sunflower in different sowing dates.h[electronic resource] c2019 aSunflower is a species that is sensitive to local climate conditions. However, studies that use artificial neural networks (ANNs) to evaluate this influence and create tools such as agricultural zoning of climate risk (ZARC) have not been conducted for this species. Due to the importance of sunflower as a human food source and for biodiesel production, and also the necessity of conducting research to evaluate the suitability of this oleaginous species under different climatic conditions. Thus, we seek to construct a ZARC for sunflower in Brazil simulating sowing on different dates and using meteorological elements spatialized by ANNs. Climate data were used: air temperature (T), rainfall (P), relative air humidity (UR), solar radiation (MJ_m−2_d−1) and wind velocity (U2). Climatic regions considered suitable for the cultivation of sunflower had average annual values for T between 20 and 28°C, P between 500 and 1.500 mm per cycle, and soil water deficit (DEF) below 140 mm per cycle. A neural network is an efficient tool that can be used in spatialization of climate variables quickly and accurately. Sunflower sowing in the spring and summer are the ones that provide the largest suitable areas in southeastern Brazil, with 58.13 and 64.36% of suitable areas, respectively aClima aGirassol aZoneamento Agrícola1 aMORAES, J. R. da S. C. de1 aROLIM, G. de S.1 aMARTORANO, L. G.1 aMENESES, K. C. de1 aVALERIANO, T. T. B. tArchives of Agronomy and Soil Sciencegv. 65, n. 11, p. 1477-1492, 2019.