Datasets:
county_fips
int64 1
6.12k
| tractid
int64 6B
6.12B
| HOUSEID
int64 1
3.3M
| nvehicles
int64 0
13
β |
|---|---|---|---|
1
| 6,001,420,100
| 1
| 1
|
1
| 6,001,420,100
| 2
| 1
|
1
| 6,001,420,100
| 3
| 1
|
1
| 6,001,420,100
| 4
| 2
|
1
| 6,001,420,100
| 5
| 3
|
1
| 6,001,420,100
| 6
| 3
|
1
| 6,001,420,100
| 7
| 1
|
1
| 6,001,420,100
| 8
| 2
|
1
| 6,001,420,100
| 9
| 4
|
1
| 6,001,420,100
| 10
| 2
|
1
| 6,001,420,100
| 11
| 3
|
1
| 6,001,420,100
| 12
| 2
|
1
| 6,001,420,100
| 13
| 1
|
1
| 6,001,420,100
| 14
| 2
|
1
| 6,001,420,100
| 15
| 1
|
1
| 6,001,420,100
| 16
| 1
|
1
| 6,001,420,100
| 17
| 2
|
1
| 6,001,420,100
| 18
| 2
|
1
| 6,001,420,100
| 19
| 5
|
1
| 6,001,420,100
| 20
| 1
|
1
| 6,001,420,100
| 21
| 3
|
1
| 6,001,420,100
| 22
| 1
|
1
| 6,001,420,100
| 23
| 2
|
1
| 6,001,420,100
| 24
| 1
|
1
| 6,001,420,100
| 25
| 2
|
1
| 6,001,420,100
| 26
| 2
|
1
| 6,001,420,100
| 27
| 2
|
1
| 6,001,420,100
| 28
| 0
|
1
| 6,001,420,100
| 29
| 2
|
1
| 6,001,420,100
| 30
| 1
|
1
| 6,001,420,100
| 31
| 1
|
1
| 6,001,420,100
| 32
| 1
|
1
| 6,001,420,100
| 33
| 4
|
1
| 6,001,420,100
| 34
| 2
|
1
| 6,001,420,100
| 35
| 2
|
1
| 6,001,420,100
| 36
| 2
|
1
| 6,001,420,100
| 37
| 0
|
1
| 6,001,420,100
| 38
| 1
|
1
| 6,001,420,100
| 39
| 1
|
1
| 6,001,420,100
| 40
| 1
|
1
| 6,001,420,100
| 41
| 2
|
1
| 6,001,420,100
| 42
| 1
|
1
| 6,001,420,100
| 43
| 2
|
1
| 6,001,420,100
| 44
| 2
|
1
| 6,001,420,100
| 45
| 1
|
1
| 6,001,420,100
| 46
| 1
|
1
| 6,001,420,100
| 47
| 1
|
1
| 6,001,420,100
| 48
| 3
|
1
| 6,001,420,100
| 49
| 1
|
1
| 6,001,420,100
| 50
| 0
|
1
| 6,001,420,100
| 51
| 2
|
1
| 6,001,420,100
| 52
| 1
|
1
| 6,001,420,100
| 53
| 1
|
1
| 6,001,420,100
| 54
| 1
|
1
| 6,001,420,100
| 55
| 1
|
1
| 6,001,420,100
| 56
| 1
|
1
| 6,001,420,100
| 57
| 1
|
1
| 6,001,420,100
| 58
| 1
|
1
| 6,001,420,100
| 59
| 3
|
1
| 6,001,420,100
| 60
| 2
|
1
| 6,001,420,100
| 61
| 2
|
1
| 6,001,420,100
| 62
| 3
|
1
| 6,001,420,100
| 63
| 1
|
1
| 6,001,420,100
| 64
| 2
|
1
| 6,001,420,100
| 65
| 1
|
1
| 6,001,420,100
| 66
| 2
|
1
| 6,001,420,100
| 67
| 2
|
1
| 6,001,420,100
| 68
| 2
|
1
| 6,001,420,100
| 69
| 3
|
1
| 6,001,420,100
| 70
| 2
|
1
| 6,001,420,100
| 71
| 1
|
1
| 6,001,420,100
| 72
| 2
|
1
| 6,001,420,100
| 73
| 2
|
1
| 6,001,420,100
| 74
| 2
|
1
| 6,001,420,100
| 75
| 2
|
1
| 6,001,420,100
| 76
| 4
|
1
| 6,001,420,100
| 77
| 3
|
1
| 6,001,420,100
| 78
| 2
|
1
| 6,001,420,100
| 79
| 2
|
1
| 6,001,420,100
| 80
| 2
|
1
| 6,001,420,100
| 81
| 2
|
1
| 6,001,420,100
| 82
| 2
|
1
| 6,001,420,100
| 83
| 2
|
1
| 6,001,420,100
| 84
| 1
|
1
| 6,001,420,100
| 85
| 0
|
1
| 6,001,420,100
| 86
| 1
|
1
| 6,001,420,100
| 87
| 1
|
1
| 6,001,420,100
| 88
| 2
|
1
| 6,001,420,100
| 89
| 4
|
1
| 6,001,420,100
| 90
| 1
|
1
| 6,001,420,100
| 91
| 2
|
1
| 6,001,420,100
| 92
| 1
|
1
| 6,001,420,100
| 93
| 2
|
1
| 6,001,420,100
| 94
| 2
|
1
| 6,001,420,100
| 95
| 1
|
1
| 6,001,420,100
| 96
| 1
|
1
| 6,001,420,100
| 97
| 1
|
1
| 6,001,420,100
| 98
| 2
|
1
| 6,001,420,100
| 99
| 3
|
1
| 6,001,420,100
| 100
| 3
|
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 β€ income < $50,000 | 0, 1 |
| income3 | $50,000 β€ income < $75,000 | 0, 1 |
| income4 | $75,000 β€ 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 0β5 | 0, 1 |
| LIF_CYC4 | 2+ adults + child age 0β5 | 0, 1 |
| LIF_CYC5 | 1 adult + child age 6β15 | 0, 1 |
| LIF_CYC6 | 2+ adults + child age 6β15 | 0, 1 |
| LIF_CYC7 | 1 adult + child age 16β21 | 0, 1 |
| LIF_CYC8 | 2+ adults + child age 16β21 | 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 25β45% | 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 (0β100) | 0β100 |
| hi_tps | AllTransit Performance Score β₯ 8 | 0, 1 |
| transit_performance_score | Transit Performance Score (0β10) | 0β10 |
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 (0β20) | 0β20 |
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 | 0β5 years, 6β11 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")
- Downloads last month
- 13