Why Road Geometry Drives Single‑Vehicle Crashes: Insights from Haworth (2015)

Why Road Geometry Drives Single‑Vehicle Crashes: Insights from Haworth (2015)

MotoScience | Research‑Backed Riding Insight
Study referenced:

Characteristics of road factors in multi and single vehicle motorcycle crashes in Queensland (Narelle Haworth, 2015, Centre for Accident Research & Road Safety – Qld (CARRS-Q) Faculty of Health; Institute of Health and Biomedical Innovation

Purpose of the Study

Motorcyclists accounted for 6.4% of all police‑reported crashes and 12.5% of fatal crashes in Queensland between 2004 and 2011. Within this, 43% were single‑vehicle (SV) crashes and 57% were multi‑vehicle (MV) crashes.

Although overall motorcycle crashes declined during the study period, this masked a crucial divergence: SV crashes increased while MV crashes decreased.

Haworth’s study set out to understand:

    • how SV and MV crashes differ,
    • which road‑environment factors predict each type, and
    • why the two crash types are following opposite long‑term trends.

The analysis used descriptive comparisons and regression modelling to examine the influence of road geometry (horizontal and vertical alignment) and surface condition (sealed/unsealed, wet/dry) on crash occurrence.

Key Findings

1. Single‑vehicle and multi‑vehicle crashes follow different trends

Across the 2004–2011 period:

    • Single‑vehicle crashes increased, despite overall crash reductions
    • Multi‑vehicle crashes decreased

This indicates that the two crash types are driven by different mechanisms and should not be treated as a single category.

2. Road geometry is a major predictor of single‑vehicle crashes

The regression models showed that SV crashes were strongly associated with:

    • Tight or complex horizontal curves
    • Significant vertical alignment changes (crests, dips)
    • Combinations of both (crest‑into‑bend, dip‑into‑bend)

These features increase the perceptual and control demands placed on riders, particularly in terms of:

    • preview
    • speed planning
    • lean‑angle judgement
    • grip management

These geometric factors had much weaker effects on MV crashes.

3. Surface condition matters more for single‑vehicle crashes

SV crashes were more likely on:

    • wet surfaces
    • unsealed surfaces
    • surface transitions

This reinforces that SV crashes are sensitive to traction‑related errors and rider‑road interaction.

MV crashes showed little sensitivity to these factors.

4. Multi‑vehicle crashes are dominated by traffic interactions

MV crashes were more strongly associated with:

    • intersections
    • turning movements
    • right‑of‑way conflicts
    • visibility and expectation failures by other drivers

Road geometry and surface condition played a comparatively minor role.

Implication for Motorcyclists: single vehicle and multi-vehicle crashes happen in different ways

The study reinforces a critical distinction:

1. Single‑vehicle crashes are “road‑demand failures”

They occur where the road environment exceeds the rider’s available capacity at that moment. Riders are most vulnerable when:

    • preview is restricted
    • geometry changes rapidly
    • vertical alignment hides what’s coming
    • surface grip is reduced or unpredictable

These are perceptual‑cognitive challenges, not simply “going too fast”.

2. Multi‑vehicle crashes are “traffic‑interaction failures”

They arise from:

    • being unseen
    • being unexpected
    • being misjudged by other drivers

This is where defensive positioning, conspicuity, and anticipation of right‑of‑way violations matter most.

 

Why this matters for riders

Riders need different strategies for SV vs MV risk. Road design plays a larger role in SV crashes than commonly acknowledged. Training should emphasise perceptual and predictive skills in high‑demand geometry. Practical takeaways for riders include:

    • Improve preview and speed planning on curves.
    • Adjust early for surface transitions.
    • Use defensive positioning to mitigate MV risk.

Conclusion

Motorcycle crashes are often reported as a single category, but Haworth’s analysis of Queensland crash data shows something far more important: single‑vehicle (SV) and multi‑vehicle (MV) crashes not only behave differently and respond to different risk factors, but in this location and in this time period, they are also following different long‑term trends. When two crash types move in opposite directions over the same period, it’s a signal that the underlying mechanisms are being pushed by different forces.

For MotoScience, this distinction is crucial. It helps us separate rider‑road interaction failures from traffic‑interaction failures, and it gives us a clearer view of how road design shapes rider error.

Why Familiar Roads Create Slow Reactions: Insights from TRL’s PPR313

Why Familiar Roads Create Slow Reactions: Insights from TRL’s PPR313

MotoScience | Research‑Backed Riding Insight
Study referenced:
Driver Reaction Times to Familiar but Unexpected Events (Coley, Wesley, Reed & Parry, 2010 — TRL PPR313)

Purpose of the Study

The report investigates how quickly drivers respond to unexpected events that occur in otherwise familiar driving environments. The central question:

“Does familiarity with the environment speed up or slow down reaction times when something unexpected happens?”

This is directly relevant to crash causation analysis, because many real‑world crashes occur on roads the rider/driver knows well — where expectation, complacency, and attentional narrowing all interact.

Key Findings

1. Expectation is the dominant factor in reaction time

The study reinforces a well‑established human‑factors truth: Reaction times double when an event is unexpected compared to when it is expected. This aligns with broader literature on perception–response time (PRT).

In familiar environments, drivers often predict what will happen next — which is efficient most of the time, but catastrophic when the prediction is wrong.

2. Familiarity can increase vulnerability

Counterintuitively, the report suggests that familiarity does not necessarily improve reaction times. Instead:

      • Drivers in familiar environments may allocate less attention to monitoring for hazards.
      • They rely more heavily on expectation and schema-driven perception.
      • When an unexpected event occurs, the “expectation violation” adds cognitive delay.

This is consistent with the broader cognitive psychology principle that schema conflict slows detection.

3. Reaction times vary by event type

The study distinguishes between:

      • Common but unexpected events (e.g., brake lights ahead) → Reaction times around 1.25 seconds in the literature.
      • Rare surprise events (e.g., an object suddenly entering the path) → Reaction times around 1.5 seconds or more.

PPR313’s own experimental data aligns with these ranges, reinforcing that surprise is the key driver of delay.

4. Reaction time is not a single number

The report emphasises that PRT is a distribution, not a constant. Influencing factors include:

      • Expectation
      • Cognitive load
      • Familiarity
      • Visibility
      • Event type
      • Driver age and experience
      • Environmental complexity

Using a single “standard” reaction time in crash analysis is misleading.

5. Implications for road design and safety

The authors highlight that:

      • Designers should not assume drivers will detect hazards instantly, even in familiar locations.
      • Familiarity may reduce vigilance.
      • Safety interventions should consider expectation management (e.g., consistent signage, predictable layouts).

Implication for Motorcyclists: The Paradox of Familiarity

Most of us would probably assume we react faster on familiar roads. After all, we know the bends, the junctions, the usual traffic patterns, even where the ‘unexpected threats’ are likely to appear.

But the research says otherwise.

TRL’s PPR313 study shows that familiarity can actually slow our reaction to unexpected hazards — sometimes dramatically.

1. Expectation Shapes What You See — and What You Miss

PPR313 reinforces a core truth: our brain doesn’t process the world neutrally. It predicts what should happen next.

On a familiar road, those predictions become stronger and more automatic. That’s efficient — until something violates the script. When an unexpected event occurs (a car pulling out, a pedestrian stepping off the kerb, a vehicle stopping abruptly), the brain must:

      • Detect the mismatch
      • Update the mental model
      • Select a response
      • Initiate action

That extra cognitive step — the “expectation violation” — adds measurable delay.

2. Reaction Time Isn’t a Number — It’s a Distribution

The study highlights that reaction time varies widely depending on:

      • Expectation
      • Familiarity
      • Event type
      • Cognitive load
      • Visibility
      • Driver experience

This aligns with the broader human‑factors literature: reaction time is not a fixed value. Yet many crash reconstructions still assume a single “standard” figure.

PPR313’s data shows:

      • Expected events: ~1.0–1.25 seconds
      • Unexpected events: ~1.5 seconds or more

That difference is the difference between stopping in time… or not.

3. Familiarity Can Reduce Vigilance

One of the most important findings is that drivers in familiar environments often pay less attention to hazard detection because the brain automates what it thinks it already knows.

4. Surprise Is the Real Killer

PPR313 confirms surprise adds delay. Given any particular following distance, delay means less distance for braking.

5. Stopping Distances, the Highway Code and the Two‑Second Rule

The Highway Code’s stopping‑distance table is built on a 0.67–0.70 second reaction time — a figure derived from controlled, expected braking tasks. It assumes the driver is already primed to respond.

PPR313 shows that this assumption collapses the moment surprise enters the picture. When an event is unexpected, reaction time stretches toward 1.5 seconds or more — more than double the HC assumption.

That has two major consequences for the Highway Code and the Two Second Rule.

5.1. Highway Code stopping distances are optimistic

They only hold when:

      • the hazard is expected
      • the driver is alert
      • the environment is predictable

Add surprise, and the real stopping distance increases dramatically. In other words, the Highway Code’s calculations only work when we’re expecting the hazard. When we’re not, we need more space than the textbook suggests.

5.2. The Two‑Second Rule isn’t a universal safety margin

Alongside the Highway Code’s speed-based stopping distances, drivers and riders are taught to apply a minimum time-based following distance by leaving a minimum two second gap when following another vehicle. Since the Two‑Second Rule is time and not distance based, its adequacy changes with speed:

      • Urban speeds (20–30 mph): Two seconds allows a reasonable buffer for unexpected events.
      • Rural speeds (50 mph): Two seconds is marginal. A 1.5‑second surprise reaction consumes most of that gap before braking even starts.
      • Motorway speeds (70 mph+): Two seconds is totally inadequate. It takes roughly 5.3 seconds of braking to come to a stop from 70 mph if we brake at 0.6 g  — a figure typical of ‘hard braking’ by most riders.

6. Why This Matters for Riders

Familiarity doesn’t protect us. It blinds us. Practical takeaways include:

      • Treat familiar roads as if they were unfamiliar — reset attention deliberately. Scan actively, not lazily.
      • Expect the unexpected — not as a slogan but as a cognitive strategy. Surprise is our enemy.
      • Build time into riding — reaction time is not guaranteed. A wider safety margin buys back the reaction time you lose to surprise.
      • Recognise when you’re on autopilot — fatigue, routine, and comfort all reduce vigilance.
      • Understand that other drivers are even more vulnerable to expectation failure — especially at junctions, roundabouts, and driveways.

7. How This Connects to Science of Being Seen

For practical applications in the context of the ‘Sorry Mate, I Didn’t See You’ collision, visit the Science Of Being Seen website. PPR313 provides the empirical backbone for the perceptual mechanisms explained in SOBS.

Conclusion

TRL’s PPR313 study is a powerful reminder that our brains are prediction engines and while familiarity makes those predictions stronger, it also makes violations slower to detect. Understanding this isn’t just academic. It’s survival.