5. CONCLUSIONS
The study developed the four models that related the
known CF sites to habitat characteristics and predicted the
plant’s potential sites in the study area. For the case of Huisun
area, the four models accurately predicted the potential habitats
of CFs in Huisun, and substantially reduced the area of field
survey to less than 10% of the Huisun study area, and were
implemented efficiently. As a result, they were well suited for
spatial distribution modeling of CFs. MAXENT was the best
because it had highest accuracy and reliability among them.
More importantly, they can prioritize either the field-survey
areas where it is viable to collect fine spatial-resolution
microclimatic, edaphic, or biotic data for refining predictions of
potential habitat in the later rounds of SDM or search areas for
new population discovery under the conditions of limited
funding and manpower. However, the outcome showed that it
is unlikely to accurately extrapolate the spatial patterns of CFs
from one area to another area with a big separation or to a
larger area encompassing the original one by predictive models
merely based on topographic variables, as in the case of our
entire study area. Follow-up studies will attempt to
incorporate proxy indicators that can be extracted from
hyperspectral images or LIDAR DEM and substitute for direct
parameters, and so that predictive models are applicable on a
broader scale.
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