Swamped: Mapping and Measuring Food Access in Cleveland

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SWAMPED Mapping and Measuring Food Access in Cleveland Md Rumi Shammin Oberlin College (OC) Paul Boehnlein Western Reserve Land Conservancy (WRLC) Mimi Stern (OC ‘16) Isabella McKnight (OC ‘15) http://www.aristotledesigngroup.com/

Transcript of Swamped: Mapping and Measuring Food Access in Cleveland

Page 1: Swamped: Mapping and Measuring Food Access in Cleveland

SWAMPEDMapping and Measuring Food Access in Cleveland

Md Rumi ShamminOberlin College (OC)

Paul BoehnleinWestern Reserve Land Conservancy (WRLC)

Mimi Stern (OC ‘16)

Isabella McKnight (OC ‘15)

http://www.aristotledesigngroup.com/

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Prologue ...Healthy Food Access ↦ Urban Sustainability

Food Access ↔ Food Justice

Food Swamps ⇎ Food Desert

Study Area - Cleveland, Ohio

socialjusticefund.org

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Questions We Asked ...➢ Do some neighborhoods have overabundance of

undesirable food sources relative to the presence of desirable sources in Cleveland?

➢ Are neighborhoods in food swamps correlated with demographic characteristics such as race and income?

➢ What can we learn about food access, food justice and related policies from this analysis?

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Methods We Used ...➢ Create a database of food sources➢ Create a database of homes➢ Organize demographic data for homes➢ Spatial analysis using GIS to measure proximity and access

○ Network analysis was used instead of linear distances

➢ Compare results across neighborhoods (block groups)➢ Explore policy implications of findings

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Census Reporter

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Proximity to Healthy Food ...Paired Samples Test

Paired Differences t df Sig.

(2-tailed

)Mean Std.

Deviation

Std. Error

Mean

95% Confidence Interval of the

Difference

Lower Upper

FIVE_CLOSEST_

AVERAGE_UNHEALTHY_FEET -

FIVE_CLOSEST_

AVERAGE_HEALTHY_FEET

-3197.19893 2034.51765 5.88880 -3208.74087 -3185.65699 -542.929 119362 .000

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No Food within Walking Distance ...

Quarter Mile = 47%

Half Mile = 11.7%

1 Mile = 0.06%

Total # of homes = 119,363

http://getinmymouf.com/2014/07/10-reasons-not-to-live-in-the-burbs-if-you-enjoy-good-food/

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Inundation Explained ...

Inundation = #unhealthy/#healthy

5 = Extreme = >84 = High = 6 - 83 = Moderate = 4 - 62 = Low = 2 - 41 = Very low = 0 - 2

http://www.canadianunderwriter.ca/insurance/report-documents-populations-businesses-in-california-tsunami-inundation-zone-1002169060/

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1 2 3 4 5Inundation categories (1 = Very low; 5 = Extreme)

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Inundation

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Correlations

I PERCENT_AFRICAN_

AMERICAN_mean

PERCENT_

WHITE_mean

PERCENT_

HISPANIC_mean

PERCENT_

OTHER_mean

INUNDATION Pearson

Correlation

1 -.007 -.013 .312** -.088

Sig.

(2-tailed)

.886 .789 .000 .061

N 459 459 459 459 459

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Food SWAMP Explained ...

Extreme poor, extreme inundation

High low-income, high inundation

Moderate not low-income, high inundation

Low low-income, low inundation

Very Low not low-income, very low inundation

Income Categories

5 = Poor (<$20,500)4 = Low income ($20,500 - $37,800)3 = Lower middle income ($37,800 - $79,300)2 = Upper middle income ($79,300 - $120,800)1 = High income (>$120,800)

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SWAMPED

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ANOVAR squared = 0.15

Unstandardized

Coefficients

Standardized

Coefficients

t Sig.

B Std. Error Beta

1 (Constant) 7.505 3.922 1.914 .056

PERBLACKBYWHITE .006 .010 .041 .619 .536

PERCENT_AFRICAN_AMERICAN

_mean

.049 .040 .311 1.221 .223

PERCENT_WHITE_mean -.011 .040 -.063 -.271 .786

PERCENT_HISPANIC_mean .192 .028 .440 6.819 .000

PERCENT_OTHER_mean .046 .067 .040 .685 .493

a. Dependent Variable: SWAMP

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SWAMPED Population: by Race

SWAMPED Total% AA% W% H% O% # of Blocks

Very low 12.8% 9.6% 17.3% 11.0% 12.2% 59

Low 40.4% 39.2% 41.1% 34.6% 46.0% 180

Moderate 21.8% 22.9% 20.5% 21.1% 19.4% 99

High 20.4% 24.0% 16.4% 23.3% 16.7% 94

Extreme 4.6% 4.3% 4.6% 10.0% 5.7% 25

Moderate - Extreme 46.8% 51.2% 41.6% 54.4% 41.8% 218

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Racial Profile of Cleveland

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Racial Profile of Cleveland

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Racial Profile of Cleveland

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Racial Profile of Cleveland

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Income & Poverty in Cleveland

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Income & Poverty in Cleveland

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Income & Poverty in Cleveland

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Inundation

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SWAMPED

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Conclusions ...➢ In Cleveland, homes have unhealthy food sources

closer on average compared to healthy food sources.

➢ Higher percentages of African American and Hispanic populations are SWAMPED.

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Conclusions ...➢ Low-income minority populations in urban areas are

often subject to housing and spatial segregation.

➢ According to the CDC, low-income and low-access characteristics are correlated with obesity, diabetes, some cancers, mental illness, heart disease, high cholesterol, and mortality rates.

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Conclusions ...➢ Policy efforts need to be spatially calibrated to improve

access to healthy food and advance food justice.