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Chapter 4 Variable Reference

The Geography of Transition: Distribution and Consequences of Orphaned Wells


Research Questions

  1. How are orphaned wells spatially distributed and do they concentrate in historically fossil-dependent communities?
  2. Do states with strong fossil industry dependence have formal energy transition governance mechanisms?
  3. Do states frame orphaned well remediation as an engineering problem or a justice problem?
  4. How does spatial distribution relate to political tensions over responsibility and funding?

Core Analytical Variables

Well Distribution

Variable Source DB Location Notes
Well count by state USGS DOW v_wells_by_state.well_count 27 states
Well count by county USGS DOW v_wells_by_county.well_count 5-digit GEOID
Well count by tract USGS DOW v_wells_by_tract.well_count 11-digit GEOID
Well density (wells/km²) Calculated v_wells_by_tract.wells_per_km2 Land area only
Well type (normalized) USGS DOW wells.well_type_normalized 12 categories
Well status USGS DOW wells.status State-specific terminology

State Governance Framework (RA-coded)

Variable Source DB Location Values
Transition office count Climate Policy Dashboard v_state_governance.transition_office_count 0, 1, 2+
Office fossil language Climate Policy Dashboard state_transition_offices.code_fossil 0/1
Office equity language Climate Policy Dashboard state_transition_offices.code_equity 0/1
Prioritization system type IOGCC 2023 state_prioritization.system_type Text description
Technical factors used IOGCC 2023 state_prioritization.tech_factors Semicolon list
Rural/urban in scoring IOGCC 2023 state_prioritization.code_rural_urban 0/1
Vulnerability/EJ in scoring IOGCC 2023 state_prioritization.code_vuln 0/1
Surface land use in scoring IOGCC 2023 state_prioritization.code_surface 0/1

Derived Classification

Variable DB Location Logic
framework_type v_state_governance Justice if code_vuln=1; Mixed if code_rural_urban=1; Engineering if system documented but no EJ/density; Unclassified otherwise
office_language_type v_state_governance Fossil + Equity / Fossil only / Equity only / Office exists no language / No transition office

Environmental Justice Indicators (requires ACS join)

Join on wells.tract_geoid = ACS geoid:

Variable ACS Table Description
Median household income B19013 Tract-level; proxy for economic vulnerability
% Non-white B03002 Calculated from race/ethnicity totals
% Below poverty line B17001 Federal poverty threshold
Median housing age B25035 Proxy for legacy industrial neighborhood
% Unemployed B23025 Labor market conditions

Key Queries

State governance summary (activate after RA data loaded)

SELECT state, state_name, well_count_dow,
       framework_type, office_language_type,
       code_vuln, code_rural_urban, code_fossil, code_equity,
       est_liability_mid_usd
FROM v_ch4_state_analysis
ORDER BY well_count_dow DESC;

Engineering vs. justice states, well count comparison

SELECT framework_type,
       count(DISTINCT state)              AS state_count,
       sum(well_count_dow)                AS total_wells,
       round(avg(well_count_dow))         AS avg_wells_per_state
FROM v_ch4_state_analysis
GROUP BY framework_type
ORDER BY total_wells DESC;

Highest-density tracts (for mapping)

SELECT tract_geoid, tract_name, county_name, state_usps,
       well_count, wells_per_km2, tract_land_km2
FROM v_highest_density_tracts
LIMIT 50;

Wells in tracts below median income (EJ analysis — requires ACS)

SELECT w.state, count(*) AS wells_in_low_income_tracts
FROM wells w
JOIN acs_b19013 a ON w.tract_geoid = a.geoid
WHERE a.median_hh_income < 50000
GROUP BY w.state
ORDER BY wells_in_low_income_tracts DESC;

State transition office presence vs. well burden

SELECT sg.framework_type,
       sg.office_language_type,
       count(DISTINCT sg.state) AS states,
       sum(sg.well_count_dow) AS total_wells,
       avg(sg.well_count_dow) AS avg_wells
FROM v_state_governance sg
GROUP BY sg.framework_type, sg.office_language_type
ORDER BY total_wells DESC;

Analytical Strategy (Chapter 4)

Section 1: Mapping the Distribution

  • National map: well locations by well_type_normalized
  • State-level choropleth: well count and well density
  • County-level choropleth: v_wells_by_county joined to TIGER county boundaries
  • Key finding to highlight: OH + PA + OK = 47% of all documented orphaned wells

Section 2: Fossil Dependence and Governance

  • Crosstab: states by framework_type × well count
  • Test: Do high-burden states have transition offices? (office_count > 0 vs. well_count)
  • Key contrast: PA (no transition office, engineering frame) vs. CO (Just Transition Office, equity language)

Section 3: The Justice Dimension

  • Map: well density by tract overlaid with % non-white or % below poverty
  • Identify tracts where both are elevated — the "double burden"
  • Use v_highest_density_tracts for case study selection

Section 4: Political Tensions

  • Connect framework_type to state political context (add state_politics table if needed)
  • Argument: justice framing is not randomly distributed — correlates with state political economy

Data Limitations for Chapter 4

  1. DOW dataset is documented wells only. True orphaned well count is almost certainly higher. API estimates 2 million+ undocumented orphaned wells nationally.

  2. Definitional inconsistency. California "idle" wells differ legally from other states' "orphaned" definition. Flagged in data_file_notes.

  3. Type field missingness (59.3% Unknown). Major states (OH, PA, KY) did not classify type. Limit type-based analysis to states with complete type data or use normalized categories cautiously.

  4. Snapshot data. Data collected 20192022; plugging programs have been active since, so current counts are lower.

  5. Spatial precision. No formal accuracy tests. Some coordinates converted from PLSS — precision is lower for KS and MT wells.