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county_fips
int64
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6.12k
tractid
int64
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6.12B
HOUSEID
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nvehicles
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License: CC BY 4.0

CA-HVF2017: California Household Vehicle Fleet Dataset (2017)

A statewide synthetic vehicle fleet dataset containing 13 million households and over ~25+ million vehicles across California. This dataset provides detailed household-level vehicle ownership information, including vehicle type, powertrain, vintage, and body type, generated using a Multiple Discrete Continuous Extreme Value (MDCEV) model and a geographically explicit synthetic population.

This dataset is designed to support transportation modeling, energy/emissions analysis, policy scenario evaluation, EV adoption studies, and agent-based simulations.


Overview

Modern transportation models require realistic household vehicle fleets, but privacy constraints limit access to micro-level vehicle ownership data.
CA-HVF2017 fills this gap by providing a statewide, publicly available, synthetic, validated representation of vehicle ownership across all California census tracts.

The dataset includes:

  • Household characteristics (demographics, size, income)
  • Detailed vehicle fleets for each household
  • Geographic attributes at the census-tract level
  • Location-based accessibility and built environment indicators

All values are synthetic but statistically consistent with real-world data.


Data Dictionary: Input

Below is the full set of household-level variables included in the CA-HVF2017 dataset.


Household Demographics

Variable Description Values
child Household has at least one child 0, 1
HOUSEID Household ID numeric
HHSIZE Household size numeric
HHSIZE1 Household size = 1 0, 1
HHSIZE2 Household size = 2 0, 1
HHSIZE3 Household size = 3 0, 1
HHSIZE4 Household size = 4 or more 0, 1
NUMADLT Number of adults numeric
NUMCHILD Number of children numeric
NUM_WORKERS Number of workers in household numeric
retired Household has at least one retiree 0, 1

Race / Ethnicity Indicators

Variable Description Values
hhwhite Householder identifies as White 0, 1
hhasian Householder identifies as Asian 0, 1
hhblack Householder identifies as Black or African American 0, 1
hhothers Householder identifies as another race (not White/Black/Asian) 0, 1

Income Categories

Variable Description Values
income1 Income < $25,000 0, 1
income2 $25,000 ≀ income < $50,000 0, 1
income3 $50,000 ≀ income < $75,000 0, 1
income4 $75,000 ≀ income < $100,000 0, 1
income5 Income β‰₯ $100,000 0, 1

Life Cycle Categories

Variable Description Values
LIF_CYC1 1 adult, no children 0, 1
LIF_CYC2 2+ adults, no children 0, 1
LIF_CYC3 1 adult + child age 0–5 0, 1
LIF_CYC4 2+ adults + child age 0–5 0, 1
LIF_CYC5 1 adult + child age 6–15 0, 1
LIF_CYC6 2+ adults + child age 6–15 0, 1
LIF_CYC7 1 adult + child age 16–21 0, 1
LIF_CYC8 2+ adults + child age 16–21 0, 1
LIF_CYC9 Household has at least one senior (65+) 0, 1
LIF_CYC10 Household has 2+ seniors (65+) 0, 1

Housing & Tenure

Variable Description Values
hhown Household owns home 0, 1
perrent % rental housing in tract numeric
perrent1 Rental housing < 25% 0, 1
perrent2 Rental housing 25–45% 0, 1
perrent3 Rental housing > 45% 0, 1

Work Status

Variable Description Values
work0 No members employed 0, 1
work1 1 worker in household 0, 1
work2 2 workers in household 0, 1
work3 3+ workers in household 0, 1

Geographic Identifiers

Variable Description Values
county_fips County FIPS code numeric
county_name County name character
state_fips State FIPS code numeric
state_name State name character
tractid Census tract ID numeric

Transit & Accessibility Variables

Variable Description Values
emp_zscore Standardized jobs reachable by 30-min transit numeric
tractmean Average number of jobs reachable from tract numeric
tas_acres Total acres accessible via 30-minute transit numeric
tci Transit Connectivity Index (0–100) 0–100
hi_tps AllTransit Performance Score β‰₯ 8 0, 1
transit_performance_score Transit Performance Score (0–10) 0–10

Built Environment Variables

Variable Description Values
job_density Jobs per kmΒ² numeric
pop_density People per kmΒ² numeric
res_density Housing units per acre (unprotected) numeric
pct_ag_land % agricultural land numeric
pct_water % water area numeric
urban_cbsa Census tract is urban 0, 1
walkndx Walkability index (0–20) 0–20

Log-Transformed Built Environment / Transit Indicators

Variable Description Values
log_job_density Log(job_density) numeric
log_job_above8 Log(job_density) > 8 0, 1
log_job_below4 Log(job_density) < 4 0, 1
log_pop_density Log(pop_density) numeric
log_pop_above9 Log(pop_density) > 9 0, 1
log_pop_below3 Log(pop_density) < 3 0, 1
log_res_density Log(res_density) numeric
log_pct_agland Log(pct_ag_land) numeric
log_pct_water Log(pct_water) numeric
log_lastyear_zevpct Log(previous-year ZEV share) numeric

Zero-Emission Vehicle (ZEV) Exposure

Variable Description Values
lastyear_zev_pct Percentage of ZEVs in prior year numeric

Data Dictionary: Output

Household-Level Variables

Variable name Description Value
county_fips County FIPS code numeric
tractid Census tract ID numeric
HOUSEID Household ID numeric
nvehicles Number of vehicle(s) owned by the household numeric

Vehicle-Level Variables

Variable name Description Value
county_fips County FIPS code numeric
tractid Census tract ID numeric
HOUSEID Household ID numeric
VEHID Vehicle ID associated with the household numeric
bodytype The vehicle's body type car, van, suv (Sport Utility Vehicle), pickup (Light-duty pick-up truck)
vintage_category Vehicle age range 0–5 years, 6–11 years, 12+ years
annual_mileage The vehicle's annual mileage numeric
pred_power The vehicle's powertrain ICE (Internal Combustion Engine), AEV (All-Electric Vehicle), PHEV (Plug-in Hybrid Electric Vehicle)
modelyear Vehicle model year (year manufactured) numeric

Methodology Summary

1. Synthetic Population

Generated using PopulationSim, producing approximately 13 million California households with demographics matched to ACS distributions.

2. Multiple Discrete-Choice Vehicle Ownership Model

The dataset extends the MDCEV-based fleet composition model by Garikapati et al. (2014).
The model jointly predicts:

  • Number of vehicles per household
  • Vehicle category combinations
  • Powertrain shares
  • Vintage distributions

Predictors include:

  • Income, household size, and workers
  • Built environment metrics
  • Accessibility indices
  • Regional land-use patterns

3. Validation

The synthetic fleet is externally validated against:

  • California DMV vehicle registration data
  • County-level vintage and powertrain distributions
  • Household vehicle count statistics

The dataset reproduces observed distributions with high fidelity.


Geographic and Temporal Scope

  • Region: California
  • Spatial resolution: Census tract (GEOID)
  • Households: ~13 million
  • Vehicles: ~25+ million
  • Base demographic year: 2017
  • Fleet calibration year: 2017

License

This dataset is licensed under the Creative Commons Attribution 4.0 International (CC BY 4.0) license.

You are free to:

  • Share β€” copy and redistribute the material in any medium or format
  • Adapt β€” remix, transform, and build upon the material for any purpose, even commercially

Under the following terms:

  • Attribution β€” You must give appropriate credit, provide a link to the license, and indicate if changes were made.
    You may do so in any reasonable manner, but not in a way that suggests the licensor endorses you or your use.

Full license text: https://creativecommons.org/licenses/by/4.0/


How to Load the Dataset

Python (pandas)

import polars as pl

hh = pl.read_parquet("households.parquet")
veh = pl.read_parquet("vehicles.parquet")
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