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''' | '''Baseline rates (verbatim; used directly in models)''' | ||
<datatable2 table=" | The following U.S. national rates are taken verbatim from authoritative sources and are **not** converted here. Conversions to per-miles exposure are performed only inside the RiskModel calculations below. | ||
* Fatalities: **1.26 deaths per 100 million vehicle miles traveled (VMT)** in 2023 (national estimate). | |||
* [https://www.nhtsa.gov/press-releases/nhtsa-2023-traffic-fatalities-2024-estimates NHTSA 2023 Traffic Fatalities Estimates] | |||
* [https://www.iihs.org/research-areas/fatality-statistics/detail/state-by-state IIHS: Fatality statistics] | |||
* Injuries: **75 injuries per 100 million VMT** in 2022 (police-reported injuries, national estimate). | |||
* [https://crashstats.nhtsa.dot.gov/Api/Public/ViewPublication/813560 NHTSA: Traffic Safety Facts 2022] | |||
'''Distance Options''' | |||
<datatable2 table="distance_options" columns="distance_label|distance_miles"> | |||
<head> | |||
!Distance choice | |||
!Miles | |||
</head> | |||
100 miles|100 | |||
1,000 miles|1000 | |||
100,000 miles|100000 | |||
</datatable2> | |||
These rows provide user-friendly exposure choices. The RiskModels convert the per-100M-VMT base rates into expected counts for the chosen miles. | |||
'''Time of Day (modifier)''' | |||
<datatable2 table="time_of_day" columns="time_period|time_fatality_multiplier|time_injury_multiplier"> | |||
<head> | <head> | ||
! | !Time of day | ||
! | !Fatality risk multiplier | ||
! | !Injury risk multiplier | ||
</head> | </head> | ||
Day|1.0|1.0 | |||
Night|3.56|1.47 | |||
</datatable2> | </datatable2> | ||
Per-mile risk is higher at night: in 2022, ~53.9% of fatalities and ~32.9% of injury crashes occurred during roughly ~25% of VMT (nighttime). Using exposure-adjusted ratios yields ≈3.56× (fatalities) and ≈1.47× (injuries). | |||
* [https:// | * Night/day crash distribution and injuries: [https://crashstats.nhtsa.dot.gov/Api/Public/ViewPublication/813560 NHTSA 2022] | ||
* Background on time-of-day involvement: [https://crashstats.nhtsa.dot.gov/Api/Public/Publication/810637 NHTSA] | |||
* Exposure assumption (≈25% of VMT at night): [https://safety.fhwa.dot.gov/roadway_dept/night_visib/lighting_handbook/chap_3/chap3_2.cfm FHWA Lighting Guidance] | |||
* Supplemental analysis: [https://deepblue.lib.umich.edu/bitstream/handle/2027.42/1007/83596.0001.001.pdf University of Michigan per-mile risk] | |||
''' | '''Seat-belt Usage (modifier)''' | ||
<datatable2 table=" | <datatable2 table="seatbelt_use" columns="belt_status|belt_fatality_multiplier|belt_injury_multiplier"> | ||
<head> | <head> | ||
! | !Seat-belt usage | ||
! | !Fatality risk multiplier | ||
! | !Injury risk multiplier | ||
</head> | </head> | ||
Not | Worn (car)|1.0|1.0 | ||
Not worn (car)|1.82|2.0 | |||
Worn (SUV/van/truck)|1.0|1.0 | |||
Not worn (SUV/van/truck)|2.5|2.857 | |||
</datatable2> | </datatable2> | ||
Seat belts reduce fatal injury risk by ~45% in cars and ~60% in light trucks; moderate-to-critical injury by ~50% in cars and ~65% in light trucks. The multipliers above are the inverse of those reductions (i.e., increased risk when not wearing a belt). | |||
* [https:// | * Effectiveness summary: [https://www.iihs.org/research-areas/seat-belts IIHS: Seat belts] | ||
* Technical background: [https://crashstats.nhtsa.dot.gov/Api/Public/ViewPublication/811160 NHTSA: Seat belt effectiveness] | |||
'''Alcohol | '''Alcohol-impaired driving frequency (share of miles while impaired)''' | ||
<datatable2 table=" | <datatable2 table="alcohol_frequency" columns="alcohol_frequency_label|alcohol_frequency_share"> | ||
<head> | <head> | ||
! | !How often does the driver drive after drinking too much? | ||
! | !Approximate share of miles while impaired | ||
</head> | </head> | ||
Never|0 | |||
A few times per year|0.001 | |||
About once a month|0.005 | |||
About once a week|0.02 | |||
Several times a week|0.05 | |||
</datatable2> | </datatable2> | ||
These shares approximate the fraction of total miles driven while impaired (not the fraction of people). They translate intuitive frequencies (“a few times per year”, “once a month”, etc.) into small exposure shares so the multiplier applies only to that portion of miles. | |||
<RiskModel name=" | Calibration notes (assumptions; adjust as needed): | ||
Your crash | * “A few times per year” ≈ 0.1% of miles (e.g., ~10–20 impaired miles in ~10,000 annual miles). | ||
* “About once a month” ≈ 0.5% of miles. | |||
* “About once a week” ≈ 2% of miles. | |||
* “Several times a week” ≈ 5% of miles. | |||
Background/prevalence: | |||
* CDC summary: self-reported alcohol-impaired driving episodes occur at a non-zero rate in the population. | |||
'''Phone-based visual–manual distraction (share of miles while actively interacting)''' | |||
<datatable2 table="distraction_frequency" columns="distraction_frequency_label|distraction_frequency_share"> | |||
<head> | |||
!How often does the driver interact with a phone (dialing/texting/etc.) while driving? | |||
!Approximate share of miles while actively interacting | |||
</head> | |||
None|0 | |||
One interaction per trip|0.005 | |||
Several interactions per trip|0.02 | |||
Lots of interactions per trip|0.05 | |||
</datatable2> | |||
These options reflect self-reported patterns of phone use while driving, translated into approximate shares of total miles driven while actively interacting with the phone (visual–manual tasks). | |||
The RiskModels apply a higher crash risk **only** to that fraction of miles, using a multiplier of ~6.0× for active distraction (consistent with naturalistic driving studies). | |||
Evidence background: | |||
* Visual–manual phone use (dialing, texting) is strongly associated with crash risk, with multipliers between ~6× and 12× depending on task. | |||
* Talking (handheld or hands-free) is not consistently linked to higher crash risk, so it is not modeled here. | |||
'''Speeding (Modifier)''' | |||
<datatable2 table="speeding" columns="speeding_status|speeding_multiplier"> | |||
<head> | |||
!Speeding status | |||
!Relative crash severity multiplier | |||
</head> | |||
At or below limit|1.0 | |||
Above limit|2.0 | |||
</datatable2> | |||
Speeding increases crash severity and overall risk—doubling speed quadruples kinetic energy, and speeding was involved in ~29% of U.S. traffic fatalities. Using a simplified 2× severity multiplier as a proxy. | |||
* [https://crashstats.nhtsa.dot.gov/Api/Public/ViewPublication/813560 NHTSA: Speeding-related fatalities ~29%] | |||
---- | |||
<RiskModel name="fatality_model" calculation="1 - (2.718281828 ^ ( - ( (1.26 / 100000000) * distance_miles * time_fatality_multiplier * belt_fatality_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) ))"> | |||
Your estimated chance of being in a fatal crash is {{One_In_X|{result}}}. | |||
</RiskModel> | </RiskModel> | ||
<RiskModel name="injury_model" calculation="1 - (2.718281828 ^ ( - ( (75 / 100000000) * distance_miles * time_injury_multiplier * belt_injury_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) ))"> | |||
Your estimated chance of being injured in a crash is {{One_In_X|{result}}}. | |||
</RiskModel> | |||
<RiskModel name="any_crash_model" calculation="1 - (2.718281828 ^ ( - ( (185.54886112876233 / 100000000) * distance_miles * time_injury_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) ))"> | |||
Your estimated chance of being in a police-reported crash is {{One_In_X|{result}}}. | |||
</RiskModel> | |||
''Calculation note'': Each model computes an expected count λ from the verbatim base rates (per 100 million vehicle miles traveled), scaled by distance and modifiers, then converts to a probability \(p = 1 - e^{-λ}\) using \(2.718281828^{-\lambda}\). Alcohol and phone-based visual–manual distraction are applied via exposure shares: the model blends \((1 - \text{share})\times 1 + \text{share}\times 4.0\) for alcohol and \((1 - \text{share})\times 1 + \text{share}\times 6.0\) for distraction so elevated risk applies only to those fractions of miles. | |||
---- | |||
''Note on uncertainty'': These are national averages and approximate modifiers. Actual risks vary by state, roadway type (urban/rural), weather, vehicle, driver demographics, and year-to-year changes. Modifiers are population-level and not individual predictions. | |||
Initially generated by [https://openai.com/ GPT-5 Thinking] |
Latest revision as of 16:13, 3 September 2025
Baseline rates (verbatim; used directly in models)
The following U.S. national rates are taken verbatim from authoritative sources and are **not** converted here. Conversions to per-miles exposure are performed only inside the RiskModel calculations below.
- Fatalities: **1.26 deaths per 100 million vehicle miles traveled (VMT)** in 2023 (national estimate).
* NHTSA 2023 Traffic Fatalities Estimates * IIHS: Fatality statistics
- Injuries: **75 injuries per 100 million VMT** in 2022 (police-reported injuries, national estimate).
* NHTSA: Traffic Safety Facts 2022
Distance Options
Distance choice | Miles |
---|---|
100 miles |
100 |
1,000 miles |
1000 |
100,000 miles |
100000 |
These rows provide user-friendly exposure choices. The RiskModels convert the per-100M-VMT base rates into expected counts for the chosen miles.
Time of Day (modifier)
Time of day | Fatality risk multiplier | Injury risk multiplier |
---|---|---|
Day |
1.0 |
1.0 |
Night |
3.56 |
1.47 |
Per-mile risk is higher at night: in 2022, ~53.9% of fatalities and ~32.9% of injury crashes occurred during roughly ~25% of VMT (nighttime). Using exposure-adjusted ratios yields ≈3.56× (fatalities) and ≈1.47× (injuries).
- Night/day crash distribution and injuries: NHTSA 2022
- Background on time-of-day involvement: NHTSA
- Exposure assumption (≈25% of VMT at night): FHWA Lighting Guidance
- Supplemental analysis: University of Michigan per-mile risk
Seat-belt Usage (modifier)
Seat-belt usage | Fatality risk multiplier | Injury risk multiplier |
---|---|---|
Worn (car) |
1.0 |
1.0 |
Not worn (car) |
1.82 |
2.0 |
Worn (SUV/van/truck) |
1.0 |
1.0 |
Not worn (SUV/van/truck) |
2.5 |
2.857 |
Seat belts reduce fatal injury risk by ~45% in cars and ~60% in light trucks; moderate-to-critical injury by ~50% in cars and ~65% in light trucks. The multipliers above are the inverse of those reductions (i.e., increased risk when not wearing a belt).
- Effectiveness summary: IIHS: Seat belts
- Technical background: NHTSA: Seat belt effectiveness
Alcohol-impaired driving frequency (share of miles while impaired)
How often does the driver drive after drinking too much? | Approximate share of miles while impaired |
---|---|
Never |
0 |
A few times per year |
0.001 |
About once a month |
0.005 |
About once a week |
0.02 |
Several times a week |
0.05 |
These shares approximate the fraction of total miles driven while impaired (not the fraction of people). They translate intuitive frequencies (“a few times per year”, “once a month”, etc.) into small exposure shares so the multiplier applies only to that portion of miles.
Calibration notes (assumptions; adjust as needed):
- “A few times per year” ≈ 0.1% of miles (e.g., ~10–20 impaired miles in ~10,000 annual miles).
- “About once a month” ≈ 0.5% of miles.
- “About once a week” ≈ 2% of miles.
- “Several times a week” ≈ 5% of miles.
Background/prevalence:
- CDC summary: self-reported alcohol-impaired driving episodes occur at a non-zero rate in the population.
Phone-based visual–manual distraction (share of miles while actively interacting)
How often does the driver interact with a phone (dialing/texting/etc.) while driving? | Approximate share of miles while actively interacting |
---|---|
None |
0 |
One interaction per trip |
0.005 |
Several interactions per trip |
0.02 |
Lots of interactions per trip |
0.05 |
These options reflect self-reported patterns of phone use while driving, translated into approximate shares of total miles driven while actively interacting with the phone (visual–manual tasks). The RiskModels apply a higher crash risk **only** to that fraction of miles, using a multiplier of ~6.0× for active distraction (consistent with naturalistic driving studies).
Evidence background:
- Visual–manual phone use (dialing, texting) is strongly associated with crash risk, with multipliers between ~6× and 12× depending on task.
- Talking (handheld or hands-free) is not consistently linked to higher crash risk, so it is not modeled here.
Speeding (Modifier)
Speeding status | Relative crash severity multiplier |
---|---|
At or below limit |
1.0 |
Above limit |
2.0 |
Speeding increases crash severity and overall risk—doubling speed quadruples kinetic energy, and speeding was involved in ~29% of U.S. traffic fatalities. Using a simplified 2× severity multiplier as a proxy.
RiskModel: Driving/Data:fatality_model Calculation: 1 - (2.718281828 ^ ( - ( (1.26 / 100000000) * distance_miles * time_fatality_multiplier * belt_fatality_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) )) Content: Your estimated chance of being in a fatal crash is {{One_In_X|{result}}}.
RiskModel: Driving/Data:injury_model Calculation: 1 - (2.718281828 ^ ( - ( (75 / 100000000) * distance_miles * time_injury_multiplier * belt_injury_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) )) Content: Your estimated chance of being injured in a crash is {{One_In_X|{result}}}.
RiskModel: Driving/Data:any_crash_model Calculation: 1 - (2.718281828 ^ ( - ( (185.54886112876233 / 100000000) * distance_miles * time_injury_multiplier * ( (1 - alcohol_frequency_share) + (alcohol_frequency_share * 4.0) ) * ( (1 - distraction_frequency_share) + (distraction_frequency_share * 6.0) ) * speeding_multiplier ) )) Content: Your estimated chance of being in a police-reported crash is {{One_In_X|{result}}}.
Calculation note: Each model computes an expected count λ from the verbatim base rates (per 100 million vehicle miles traveled), scaled by distance and modifiers, then converts to a probability \(p = 1 - e^{-λ}\) using \(2.718281828^{-\lambda}\). Alcohol and phone-based visual–manual distraction are applied via exposure shares: the model blends \((1 - \text{share})\times 1 + \text{share}\times 4.0\) for alcohol and \((1 - \text{share})\times 1 + \text{share}\times 6.0\) for distraction so elevated risk applies only to those fractions of miles.
Note on uncertainty: These are national averages and approximate modifiers. Actual risks vary by state, roadway type (urban/rural), weather, vehicle, driver demographics, and year-to-year changes. Modifiers are population-level and not individual predictions.
Initially generated by GPT-5 Thinking