Environmental map layers for Los Angeles environmental assessment project
Data files
Jun 22, 2021 version files 800.56 MB
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Aspect.tif
67.95 MB
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cal_fire.tif
9.04 MB
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CIscore.tif
24.31 MB
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cleanups.tif
19.53 MB
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ClimateZones.tif
12.88 MB
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DLC.tif
14.34 MB
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DominantCanopyCover.tif
13.11 MB
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EcoRegion.tif
10.63 MB
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Elevation.tif
61.55 MB
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FloodPlain.tif
7.68 MB
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gwthreats.tif
19.20 MB
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HabitatQuality.tif
6.35 MB
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haz.tif
20.59 MB
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HousingDensity.tif
42.87 MB
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iwb.tif
13.30 MB
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LACoastlineProximity.tif
61.63 MB
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LALakeProximity.tif
66.13 MB
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LandCover.tif
13.88 MB
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LandUse.tif
19.47 MB
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LAStreamsProximity.tif
58.71 MB
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LightPollution.tif
15.37 MB
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PercentWildlandVegetation.tif
18.19 MB
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pesticides.tif
11.35 MB
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PollutionS.tif
24.77 MB
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PublicLandStatus.tif
8.32 MB
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Slope.tif
69.88 MB
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swis.tif
16.32 MB
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Totrcv.tif
11.50 MB
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traffic.tif
25.55 MB
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Vegcover.tif
13.78 MB
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WHR.tif
13.14 MB
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WildlandUrbanInterface.tif
9.25 MB
Feb 21, 2022 version files 876.18 MB
Abstract
In an increasingly urbanized world, there is a need to study urban areas as their own class of ecosystems as well as assess the impacts of anthropogenic impacts on biodiversity. However, collecting a sufficient number of species observations to estimate patterns of biodiversity in a city can be costly. Here we investigated the use of community science-based data on species occurrences, combined with species distribution models (SDMs), built using MaxEnt and remotely-sensed measures of the environment, to predict the distribution of a number of species across the urban environment of Los Angeles. By selecting species with the most accurate SDMs, and then summarizing these by class, we were able to produce two species richness models (SRMs) to predict biodiversity patterns for species in the class Aves and Magnoliopsida and how they respond to a variety of natural and anthropogenic environmental gradients.
We found that species considered native to Los Angeles tend to have significantly more accurate SDMs than their non-native counterparts. For all species considered in this study we found environmental variables describing anthropogenic activities, such as housing density and alterations to land cover, tend to be more influential than natural factors, such as terrain and proximity to freshwater, in shaping SDMs. Using a random forest model we found our SRMs could account for approximately 54% and 62% of the predicted variation in species richness for species in the classes Aves and Magnoliopsida respectively. Using community science-based species occurrences, SRMs can be used to model patterns of urban biodiversity and assess the roles of environmental factors in shaping them.
Methods
Source data for environmental layers are linked and described here.
Usage notes
These are all geotiffs covering the urban boundaries of Los Angeles. The coordinate reference system for these maps are EPSG: 3310.