2020
DOI: 10.1111/jbi.13975
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New insights into palaeo‐distributions based on Holocene rock art

Abstract: Aim Due to the lack of sufficient information, with which to infer past distributions of species, Ecological Niche Modelling (ENM) has been used to reconstruct palaeo‐distributions, based on projections of current species ecological niches onto past climatic scenarios. In this study, we utilized ENM to directly and independently reconstruct the Mid‐Holocene distribution of the desert bighorn sheep, using rock art as an alternative source of past distributional information, in order to gain a better understandi… Show more

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“…In a recent study, a MaxEnt model for desert bighorn sheep ( Ovis canadensis nelsoni ) was hindcast to investigate range dynamics during the mid‐Holocene (Gámez‐Brunswick & Rojas‐Soto, 2020 ). Although this subspecies occupies only a portion of the total range of bighorn sheep, the modeled current potential distribution of desert bighorn in that study largely mirrors the current potential distribution of bighorn sheep across the southwest United States predicted by our models.…”
Section: Discussionmentioning
confidence: 99%
“…In a recent study, a MaxEnt model for desert bighorn sheep ( Ovis canadensis nelsoni ) was hindcast to investigate range dynamics during the mid‐Holocene (Gámez‐Brunswick & Rojas‐Soto, 2020 ). Although this subspecies occupies only a portion of the total range of bighorn sheep, the modeled current potential distribution of desert bighorn in that study largely mirrors the current potential distribution of bighorn sheep across the southwest United States predicted by our models.…”
Section: Discussionmentioning
confidence: 99%