Evaluating the Impact of Autonomous Vehicles on Signalized Intersections’ Performance
Highlights
- SAE Level 5 AVs could decrease intersection delay by up to 40% at full (100%) penetration.
- Low AV penetrations (20%) could still provide substantial efficiency benefits of around 10%, with the largest improvements observed under low left-turn percentages and balanced approach volumes.
- Careful deployment of AVs at signalized intersections could provide significant efficiency gains and congestion reductions in mixed-traffic urban roads.
- The results presented in this paper may contribute to SDGs 11 and 13 by promoting more sustainable and lower-emission urban mobility.
Abstract
1. Introduction
2. Background
3. Methodology
3.1. Geometric Characteristics
3.2. Signal Control
3.3. Analysis Tools
3.4. Integrated Microsimulation Framework
4. Experimental Design
4.1. Percentages of AVs Considered
4.2. Traffic Volume and Distribution Scenarios
- A indicates a left-turn percentage of 15% in the dominant traffic direction.
- I corresponds to a total intersection volume of 3500 vph.
- One represents equal traffic distribution of 25% per approach.
- Twenty percent specifies the AV penetration rate being tested.
- Left-turn percentage in dominant approaches: A = 15%, B = 30%, and C = 45%.
- Total intersection volume level: I = low (first layout: 3500 vph; second layout: 5000 vph), II = moderate (4500/6000 vph), and III = high (5500/7000 vph).
- Approach distribution pattern: 1 = balanced (25% per approach), 2 = two-dominant approaches, and 3 = single-dominant approach.
- AV penetration: suffix “20%” indicated the AV share in that run (0–100% in 20% steps).
4.3. Modeling AVs
5. Results and Analysis
5.1. Signal Optimization and Intersection Delay
5.2. Microscopic Simulation
5.3. LoS Comparison
5.4. Impact of Aggressive Behavior of AVs
5.5. Average Delay Reduction Across All Cases
6. Discussion of the Approach, Limitations, and Future Work
7. Conclusions and Recommendations
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations and Acronyms
References
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| Geometric Characteristics | |
|---|---|
| Lane width (m) | 3.7 |
| Median width (m) | 3.7 |
| Through lanes (per approach) | 2 or 3 |
| Left-turn lanes (per approach) | 1 |
| Storage length of left-turn lane (m) | 120 |
| Channelized right-turn lanes (per approach) | 1 |
| Right-turn control type | Free |
| Storage length of right-turn channelization (m) | 100 |
| Total approach length (m) | 275 |
| Maximum longitudinal grades for approaches (%) | 2 |
| Peak hour factor | 0.92 |
| Heavy vehicles (%) | 2 |
| Flow fate (vphpl) | 1900 |
| Travel speed (km/h) | 60 |
| Minimum cycle length (s) | 60 |
| Maximum cycle length (s) | 180 |
| Yellow time (s) | 3 |
| All red time (s) | 1 |
| Group | A1 | B1 | C1 |
|---|---|---|---|
| ABC.I.1 | A.I.1 | B.I.1 | C.I.1 |
| ABC.II.1 | A.II.1 | B.II.1 | C.II.1 |
| ABC.III.1 | A.III.1 | B.III.1 | C.III.1 |
| Group | A2 | B2 | C2 |
| ABC.I.2 | A.I.2 | B.I.2 | C.I.2 |
| ABC.II.2 | A.II.2 | B.II.2 | C.II.2 |
| ABC.III.2 | A.III.2 | B.III.2 | C.III.2 |
| Group | A3 | B3 | C3 |
| ABC.I.3 | A.I.3 | B.I.3 | C.I.3 |
| ABC.II.3 | A.II.3 | B.II.3 | C.II.3 |
| ABC.III.3 | A.III.3 | B.III.3 | C.III.3 |
| Vehicle Type | HDV | Normal AV | Aggressive AV |
|---|---|---|---|
| Maximum look-ahead distance (m) | 250 | 250 | 300 |
| No. of interaction objects | 4 | 2 | 10 |
| No. of interaction vehicles | 9 | 1 | 8 |
| Standstill distance (m) (CC0) | 2.0 | 1.50 | 1.0 |
| Following distance (sec) (CC1) | N/A | 0.9 | 0.6 |
| Acceleration from standstill (CC8) | N/A | 3.5 | 4.0 |
| Cooperative lane change | Default | Available | Available |
| Behavior at amber signal after green | Continuous check | One decision | One decision |
| Behavior at red/amber signal | Go (same as green) | Stop (same as red) | Stop (same as red) |
| Case ID | Delay (s/veh) | Case ID | Delay (s/veh) | Case ID | Delay (s/veh) |
|---|---|---|---|---|---|
| A.I.1 | 30.5 | B.I.1 | 35.5 | C.I.1 | 55.8 |
| A.I.2 | 45.7 | B.I.2 | 40.8 | C.I.2 | 74.0 |
| A.I.3 | 37.8 | B.I.3 | 40.0 | C.I.3 | 73.3 |
| A.II.1 | 46.9 | B.II.1 | 72.6 | C.II.1 | 91.4 |
| A.II.2 | 51.7 | B.II.2 | 54.4 | C.II.2 | 111.9 |
| A.II.3 | 50.4 | B.II.3 | 53.5 | C.II.3 | 111.6 |
| A.III.1 | 77.1 | B.III.1 | 119.3 | C.III.1 | 137.0 |
| A.III.2 | 81.4 | B.III.2 | 75.9 | C.III.2 | 157.1 |
| A.III.3 | 80.5 | B.III.3 | 76.2 | C.III.3 | 156.6 |
| Case ID | Delay (s/veh) | Case ID | Delay (s/veh) | Case ID | Delay (s/veh) |
|---|---|---|---|---|---|
| A.I.1 | 39.0 | B.I.1 | 43.2 | C.I.1 | 72.8 |
| A.I.2 | 58.6 | B.I.2 | 52.4 | C.I.2 | 96.5 |
| A.I.3 | 48.5 | B.I.3 | 51.4 | C.I.3 | 95.6 |
| A.II.1 | 56.1 | B.II.1 | 60.9 | C.II.1 | 111.4 |
| A.II.2 | 61.9 | B.II.2 | 66.7 | C.II.2 | 136.6 |
| A.II.3 | 60.4 | B.II.3 | 65.6 | C.II.3 | 136.2 |
| A.III.1 | 88.1 | B.III.1 | 89.4 | C.III.1 | 159.4 |
| A.III.2 | 92.9 | B.III.2 | 90.5 | C.III.2 | 182.8 |
| A.III.3 | 91.9 | B.III.3 | 90.9 | C.III.3 | 182.3 |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| A1 | A.I.1 | 3500 | 0% | 4% | 9% | 13% | 16% | 20% |
| A.II.1 | 4500 | 0% | 7% | 15% | 22% | 28% | 35% | |
| A.III.1 | 5500 | 0% | 12% | 24% | 33% | 42% | 50% | |
| A2 | A.I.2 | 3500 | 0% | 6% | 12% | 18% | 24% | 30% |
| A.II.2 | 4500 | 0% | 11% | 22% | 31% | 40% | 50% | |
| A.III.2 | 5500 | 0% | 16% | 30% | 41% | 52% | 62% | |
| A3 | A.I.3 | 3500 | 0% | 8% | 16% | 24% | 32% | 40% |
| A.II.3 | 4500 | 0% | 14% | 28% | 40% | 52% | 64% | |
| A.III.3 | 5500 | 0% | 20% | 36% | 50% | 64% | 78% | |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| A1 | A.I.1 | 5000 | 0% | 4% | 8% | 10% | 12% | 14% |
| A.II.1 | 6000 | 0% | 9% | 20% | 24% | 28% | 30% | |
| A.III.1 | 7000 | 0% | 16% | 41% | 48% | 49% | 58% | |
| A2 | A.I.2 | 5000 | 0% | 10% | 18% | 21% | 23% | 25% |
| A.II.2 | 6000 | 0% | 25% | 32% | 39% | 41% | 42% | |
| A.III.2 | 7000 | 0% | 8% | 18% | 20% | 34% | 44% | |
| A3 | A.I.3 | 5000 | 0% | 10% | 15% | 19% | 20% | 23% |
| A.II.3 | 6000 | 0% | 18% | 34% | 41% | 43% | 46% | |
| A.III.3 | 7000 | 0% | 15% | 19% | 26% | 26% | 28% | |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| B1 | B.I.1 | 3500 | 0% | 3% | 8% | 12% | 16% | 20% |
| B.II.1 | 4500 | 0% | 6% | 14% | 21% | 27% | 34% | |
| B.III.1 | 5500 | 0% | 10% | 22% | 31% | 40% | 48% | |
| B2 | B.I.2 | 3500 | 0% | 5% | 11% | 17% | 23% | 28% |
| B.II.2 | 4500 | 0% | 10% | 20% | 30% | 39% | 48% | |
| B.III.2 | 5500 | 0% | 15% | 28% | 40% | 50% | 60% | |
| B3 | B.I.3 | 3500 | 0% | 7% | 15% | 22% | 30% | 38% |
| B.II.3 | 4500 | 0% | 13% | 26% | 38% | 50% | 62% | |
| B.III.3 | 5500 | 0% | 18% | 34% | 48% | 62% | 75% | |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| B1 | B.I.1 | 5000 | 0% | 7% | 13% | 16% | 19% | 21% |
| B.II.1 | 6000 | 0% | 31% | 41% | 48% | 54% | 56% | |
| B.III.1 | 7000 | 0% | 13% | 23% | 42% | 57% | 60% | |
| B2 | B.I.2 | 5000 | 0% | 22% | 29% | 33% | 35% | 36% |
| B.II.2 | 6000 | 0% | 26% | 37% | 43% | 45% | 57% | |
| B.III.2 | 7000 | 0% | 6% | 6% | 8% | 9% | 4% | |
| B3 | B.I.3 | 5000 | 0% | 14% | 32% | 37% | 45% | 49% |
| B.II.3 | 6000 | 0% | 10% | 11% | 13% | 14% | 16% | |
| B.III.3 | 7000 | 0% | 1% | 3% | 14% | 22% | 23% | |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| C1 | C.I.1 | 3500 | 0% | 18% | 34% | 46% | 51% | 54% |
| C.II.1 | 4500 | 0% | 16% | 27% | 37% | 46% | 50% | |
| C.III.1 | 5500 | 0% | 13% | 23% | 32% | 40% | 44% | |
| C2 | C.I.2 | 3500 | 0% | 6% | 12% | 22% | 33% | 36% |
| C.II.2 | 4500 | 0% | 5% | 10% | 18% | 26% | 30% | |
| C.III.2 | 5500 | 0% | 4% | 8% | 15% | 22% | 25% | |
| C3 | C.I.3 | 3500 | 0% | 12% | 18% | 22% | 24% | 27% |
| C.II.3 | 4500 | 0% | 9% | 15% | 19% | 21% | 23% | |
| C.III.3 | 5500 | 0% | 8% | 13% | 17% | 18% | 20% | |
| Group | Case ID | Volume (vph) | Avg. Delay Reduction at Each Percentage of AVs (%) | |||||
|---|---|---|---|---|---|---|---|---|
| 0 | 20 | 40 | 60 | 80 | 100 | |||
| C1 | C.I.1 | 5000 | 0% | 15% | 30% | 42% | 47% | 50% |
| C.II.1 | 6000 | 0% | 14% | 21% | 28% | 38% | 43% | |
| C.III.1 | 7000 | 0% | 2% | 9% | 11% | 18% | 25% | |
| C2 | C.I.2 | 5000 | 0% | 4% | 7% | 17% | 29% | 32% |
| C.II.2 | 6000 | 0% | 3% | 4% | 6% | 6% | 6% | |
| C.III.2 | 7000 | 0% | 10% | 14% | 18% | 19% | 15% | |
| C3 | C.I.3 | 5000 | 0% | 10% | 13% | 17% | 17% | 21% |
| C.II.3 | 6000 | 0% | 3% | 5% | 11% | 13% | 21% | |
| C.III.3 | 7000 | 0% | 9% | 15% | 18% | 19% | 17% | |
| Group | Case ID | %LT | Avg. Delay Reduction % | |||||
|---|---|---|---|---|---|---|---|---|
| 0% | 20% | 40% | 60% | 80% | 100% | |||
| ABC.I.1 | A.1.1 | 15% | 0% | 4% | 9% | 13% | 16% | 20% |
| B.1.1 | 30% | 0% | 3% | 8% | 12% | 16% | 20% | |
| C.1.1 | 45% | 0% | 18% | 34% | 46% | 51% | 54% | |
| ABC.II.1 | A.2.1 | 15% | 0% | 7% | 15% | 22% | 28% | 35% |
| B.2.1 | 30% | 0% | 6% | 14% | 21% | 27% | 34% | |
| C.2.1 | 45% | 0% | 16% | 27% | 37% | 46% | 50% | |
| ABC.III.1 | A.3.1 | 15% | 0% | 12% | 24% | 33% | 42% | 50% |
| B.3.1 | 30% | 0% | 10% | 22% | 31% | 40% | 48% | |
| C.3.1 | 45% | 0% | 13% | 23% | 32% | 40% | 44% | |
| ABC.I.2 | A.1.2 | 15% | 0% | 6% | 12% | 18% | 24% | 30% |
| B.1.2 | 30% | 0% | 5% | 11% | 17% | 23% | 28% | |
| C.1.2 | 45% | 0% | 6% | 12% | 22% | 33% | 36% | |
| ABC.II.2 | A.2.2 | 15% | 0% | 11% | 22% | 31% | 40% | 50% |
| B.2.2 | 30% | 0% | 10% | 20% | 30% | 39% | 48% | |
| C.2.2 | 45% | 5% | 10% | 18% | 26% | 30% | 5% | |
| ABC.III.2 | A.3.2 | 15% | 0% | 16% | 30% | 41% | 52% | 62% |
| B.3.2 | 30% | 0% | 15% | 28% | 40% | 50% | 60% | |
| C.3.2 | 45% | 0% | 4% | 8% | 15% | 22% | 25% | |
| ABC.I.3 | A.1.3 | 15% | 0% | 8% | 16% | 24% | 32% | 40% |
| B.1.3 | 30% | 0% | 7% | 15% | 22% | 30% | 38% | |
| C.1.3 | 45% | 0% | 12% | 18% | 22% | 24% | 27% | |
| ABC.II.3 | A.2.3 | 15% | 0% | 14% | 28% | 40% | 52% | 64% |
| B.2.3 | 30% | 0% | 13% | 26% | 38% | 50% | 62% | |
| C.2.3 | 45% | 0% | 9% | 15% | 19% | 21% | 23% | |
| ABC.III.3 | A.3.3 | 15% | 0% | 20% | 36% | 50% | 64% | 78% |
| B.3.3 | 30% | 0% | 18% | 34% | 48% | 62% | 75% | |
| C.3.3 | 45% | 0% | 8% | 13% | 17% | 18% | 20% | |
| Group | Case ID | %LT | Avg. Delay Reduction % | |||||
|---|---|---|---|---|---|---|---|---|
| 0% | 20% | 40% | 60% | 80% | 100% | |||
| ABC.I.1 | A.1.1 | 15% | 0% | 4% | 8% | 10% | 12% | 14% |
| B.1.1 | 30% | 0% | 7% | 13% | 16% | 19% | 21% | |
| C.1.1 | 45% | 0% | 15% | 30% | 42% | 47% | 50% | |
| ABC.II.1 | A.2.1 | 15% | 0% | 9% | 20% | 24% | 28% | 30% |
| B.2.1 | 30% | 0% | 31% | 41% | 48% | 54% | 56% | |
| C.2.1 | 45% | 0% | 14% | 21% | 28% | 38% | 43% | |
| ABC.III.1 | A.3.1 | 15% | 0% | 16% | 41% | 48% | 49% | 58% |
| B.3.1 | 30% | 0% | 13% | 23% | 42% | 57% | 60% | |
| C.3.1 | 45% | 0% | 2% | 9% | 11% | 18% | 25% | |
| ABC.I.2 | A.1.2 | 15% | 0% | 10% | 18% | 21% | 23% | 25% |
| B.1.2 | 30% | 0% | 22% | 29% | 33% | 35% | 36% | |
| C.1.2 | 45% | 0% | 4% | 7% | 17% | 29% | 32% | |
| ABC.II.2 | A.2.2 | 15% | 0% | 25% | 32% | 39% | 41% | 42% |
| B.2.2 | 30% | 0% | 26% | 37% | 43% | 45% | 57% | |
| C.2.2 | 45% | 0% | 3% | 4% | 6% | 6% | 6% | |
| ABC.III.2 | A.3.2 | 15% | 8% | 4% | 18% | 20% | 34% | 44% |
| B.3.2 | 30% | 0% | 6% | 6% | 8% | 9% | 4% | |
| C.3.2 | 45% | 0% | 10% | 14% | 18% | 19% | 15% | |
| ABC.I.3 | A.1.3 | 15% | 0% | 10% | 15% | 19% | 20% | 23% |
| B.1.3 | 30% | 0% | 14% | 32% | 37% | 45% | 49% | |
| C.1.3 | 45% | 0% | 10% | 13% | 17% | 17% | 21% | |
| ABC.II.3 | A.2.3 | 15% | 0% | 18% | 34% | 41% | 43% | 46% |
| B.2.3 | 30% | 0% | 10% | 11% | 13% | 14% | 16% | |
| C.2.3 | 45% | 0% | 3% | 5% | 11% | 13% | 21% | |
| ABC.III.3 | A.3.3 | 15% | 0% | 15% | 19% | 26% | 26% | 28% |
| B.3.3 | 30% | 0% | 1% | 3% | 14% | 22% | 23% | |
| C.3.3 | 45% | 0% | 9% | 15% | 18% | 19% | 17% | |
| Left Turn (%) | % Distribution of Vehicles in Each Approach | Traffic Volume | Case ID | % of AV | |||||
|---|---|---|---|---|---|---|---|---|---|
| 0% | 20% | 40% | 60% | 80% | 100% | ||||
| Case A (15%) | Case 1 | Low (3500 vph) | A.I.1 | 28.97 (C) | 27.81 (C) | 26.36 (C) | 25.20 (C) | 24.33 (C) | 23.18 (C) |
| Moderate (4500 vph) | A.II.1 | 44.77 (D) | 42.08 (D) | 39.40 (D) | 36.71 (D) | 34.03 (C) | 31.34 (C) | ||
| High (5500 vph) | A.III.1 | 37.80 (D) | 34.78 (C) | 31.75 (C) | 28.73 (C) | 25.70 (C) | 22.68 (C) | ||
| Case 2 | Low (3500 vph) | A.I.2 | 48.30 (D) | 44.92 (D) | 41.05 (D) | 37.67 (D) | 34.78 (C) | 31.39 (C) | |
| Moderate (4500 vph) | A.II.2 | 54.79 (D) | 48.76 (D) | 42.74 (D) | 37.81 (D) | 32.87 (C) | 27.39 (C) | ||
| High (5500 vph) | A.III.2 | 54.42 (D) | 46.80 (D) | 39.18 (D) | 32.65 (C) | 26.12 (C) | 20.83 (C) | ||
| Case 3 | Low (3500 vph) | A.I.3 | 81.71 (F) | 71.90 (E) | 62.10 (E) | 54.75 (D) | 47.39 (D) | 40.85 (D) | |
| Moderate (4500 vph) | A.II.3 | 88.73 (F) | 74.53 (E) | 62.11 (E) | 52.35 (D) | 42.59 (D) | 33.72 (C) | ||
| High (5500 vph) | A.III.3 | 89.35 (F) | 71.48 (E) | 57.18 (E) | 44.67 (D) | 32.17 (C) | 22.38 (C) | ||
| Case B (30%) | Case 1 | Low (3500 vph) | B.I.1 | 34.43 (C) | 33.40 (C) | 31.68 (C) | 30.30 (C) | 28.92 (C) | 27.54 (C) |
| Moderate (4500 vph) | B.II.1 | 40.79 (D) | 38.75 (D) | 36.30 (D) | 33.86 (C) | 31.41 (C) | 29.37 (C) | ||
| High (5500 vph) | B.III.1 | 40.79 (D) | 37.93 (D) | 34.67 (C) | 31.82 (C) | 28.55 (C) | 25.29 (C) | ||
| Case 2 | Low (3500 vph) | B.I.2 | 76.24 (E) | 71.67 (E) | 65.57 (E) | 60.23 (E) | 55.66 (E) | 50.32 (D) | |
| Moderate (4500 vph) | B.II.2 | 58.74 (E) | 52.87 (D) | 46.99 (D) | 41.12 (D) | 35.83 (D) | 30.54 (C) | ||
| High (5500 vph) | B.III.2 | 58.86 (E) | 51.21 (D) | 43.56 (D) | 39.49 (D) | 34.43 (D) | 28.37 (C) | ||
| Case 3 | Low (3500 vph) | B.I.3 | 128.87 (F) | 115.98 (F) | 100.52 (F) | 88.92 (F) | 77.32 (E) | 67.01 (E) | |
| Moderate (4500 vph) | B.II.3 | 84.26 (F) | 71.62 (E) | 60.67 (E) | 50.56 (D) | 42.13 (D) | 33.70 (C) | ||
| High (5500 vph) | B.III.3 | 86.11 (F) | 70.61 (E) | 56.83 (E) | 44.78 (D) | 32.72 (C) | 21.53 (C) | ||
| Case C (45%) | Case 1 | Low (3500 vph) | C.I.1 | 56.92 (E) | 46.67 (D) | 37.57 (D) | 30.74 (C) | 27.89 (C) | 26.18 (C) |
| Moderate (4500 vph) | C.II.1 | 77.70 (E) | 73.04 (E) | 68.38 (E) | 60.61 (E) | 52.06 (D) | 49.73 (D) | ||
| High (5500 vph) | C.III.1 | 78.45 (E) | 69.04 (E) | 64.33 (E) | 61.19 (E) | 59.62 (E) | 57.27 (E) | ||
| Case 2 | Low (3500 vph) | C.I.2 | 100.54 (F) | 84.45 (F) | 73.39 (E) | 63.34 (E) | 54.29 (D) | 50.27 (D) | |
| Moderate (4500 vph) | C.II.2 | 120.13 (F) | 113.81 (F) | 103.69 (F) | 93.57 (F) | 88.52 (F) | 120.13 (F) | ||
| High (5500 vph) | C.III.2 | 128.36 (F) | 116.81 (F) | 109.11 (F) | 103.97 (F) | 101.40 (F) | 98.84 (F) | ||
| Case 3 | Low (3500 vph) | C.I.3 | 154.85 (F) | 134.72 (F) | 119.23 (F) | 105.30 (F) | 92.91 (F) | 86.72 (F) | |
| Moderate (4500 vph) | C.II.3 | 182.24 (F) | 174.95 (F) | 167.66 (F) | 154.90 (F) | 142.15 (F) | 136.68 (F) | ||
| High (5500 vph) | C.III.3 | 184.83 (F) | 170.04 (F) | 160.80 (F) | 153.41 (F) | 151.56 (F) | 147.86 (F) | ||
| Left Turn (%) | % Distribution of Vehicles in Each Approach | Traffic Volume | Case ID | % of AV | |||||
|---|---|---|---|---|---|---|---|---|---|
| 0% | 20% | 40% | 60% | 80% | 100% | ||||
| Case A (15%) | Case 1 | Low (5000 vph) | A.I.1 | 34.2 (C) | 32.9 (C) | 31.6 (C) | 30.7 (C) | 30.1 (C) | 29.4 (C) |
| Moderate (6000 vph) | A.II.1 | 47.0 (D) | 42.9 (D) | 37.7 (D) | 35.7 (D) | 33.8 (C) | 33.1 (C) | ||
| High (7000 vph) | A.III.1 | 119 (F) | 101 (F) | 70.3 (E) | 61.4 (E) | 60.5 (E) | 49.8 (D) | ||
| Case 2 | Low (5000 vph) | A.I.2 | 43.0 (D) | 38.9 (D) | 35.1 (D) | 34.0 (C) | 33.0 (C) | 32.2 (C) | |
| Moderate (6000 vph) | A.II.2 | 69.8 (E) | 52.2 (D) | 47.2 (D) | 42.6 (D) | 41.2 (D) | 40.2 (D) | ||
| High (7000 vph) | A.III.2 | 130 (F) | 120 (F) | 106 (F) | 105 (F) | 86.4 (F) | 73.2 (E) | ||
| Case 3 | Low (5000 vph) | A.I.3 | 43.0 (D) | 38.6 (D) | 36.5 (D) | 35.0 (C) | 34.3 (C) | 33.3 (C) | |
| Moderate (6000 vph) | A.II.3 | 75.5 (E) | 61.9 (E) | 49.6 (D) | 44.4 (D) | 43.0 (D) | 41.1 (D) | ||
| High (7000 vph) | A.III.3 | 108 (F) | 91.5 (F) | 87.1 (F) | 79.6 (E) | 79.6 (E) | 77.5 (E) | ||
| Case B (30%) | Case 1 | Low (5000 vph) | B.I.1 | 38.1 (D) | 35.3 (D) | 33.3 (C) | 32.0 (C) | 30.8 (C) | 30.0 (C) |
| Moderate (6000 vph) | B.II.1 | 77.9 (E) | 53.8 (D) | 46.2 (D) | 40.2 (D) | 36.1 (D) | 34.1 (C) | ||
| High (7000 vph) | B.III.1 | 166 (F) | 144 (F) | 127 (F) | 96.2 (F) | 71.8 (E) | 66.0 (E) | ||
| Case 2 | Low (5000 vph) | B.I.2 | 61.7 (E) | 48.1 (D) | 44.0 (D) | 41.3 (D) | 40.1 (D) | 39.8 (D) | |
| Moderate (6000 vph) | B.II.2 | 130 (F) | 96.5 (F) | 95.7 (F) | 92.1 (F) | 71.5 (E) | 55.7 (E) | ||
| High (7000 vph) | B.III.2 | 142 (F) | 134 (F) | 133 (F) | 131 (F) | 129 (F) | 137 (F) | ||
| Case 3 | Low (5000 vph) | B.I.3 | 77.1 (E) | 66.4 (E) | 52.8 (D) | 48.9 (D) | 42.1 (D) | 39.7 (D) | |
| Moderate (6000 vph) | B.II.3 | 98.7 (F) | 88.4 (F) | 87.6 (F) | 86.3 (F) | 84.8 (F) | 82.5 (F) | ||
| High (7000 vph) | B.III.3 | 130 (F) | 128 (F) | 126 (F) | 112 (F) | 102 (F) | 100 (F) | ||
| Case C (45%) | Case 1 | Low (5000 vph) | C.I.1 | 85.2 (F) | 72.1 (E) | 59.4 (E) | 49.5 (D) | 45.3 (D) | 42.4 (D) |
| Moderate (6000 vph) | C.II.1 | 185 (F) | 158 (F) | 146 (F) | 133 (F) | 114 (F) | 105 (F) | ||
| High (7000 vph) | C.III.1 | 255 (F) | 250 (F) | 232 (F) | 226 (F) | 208 (F) | 193 (F) | ||
| Case 2 | Low (5000 vph) | C.I.2 | 155 (F) | 148 (F) | 145 (F) | 128 (F) | 110 (F) | 105 (F) | |
| Moderate (6000 vph) | C.II.2 | 175 (F) | 170 (F) | 168 (F) | 165 (F) | 165 (F) | 164 (F) | ||
| High (7000 vph) | C.III.2 | 214 (F) | 192 (F) | 183 (F) | 175 (F) | 173 (F) | 180 (F) | ||
| Case 3 | Low (5000 vph) | C.I.3 | 132 (F) | 119 (F) | 115 (F) | 110 (F) | 109 (F) | 104 (F) | |
| Moderate (6000 vph) | C.II.3 | 165 (F) | 160 (F) | 157 (F) | 147 (F) | 144 (F) | 130 (F) | ||
| High (7000 vph) | C.III.3 | 210 (F) | 191 (F) | 179 (F) | 172 (F) | 169 (F) | 175 (F) | ||
| Condition | Case ID | Normal AV Avg. Delay (s/veh) | Aggressive AV Avg. Delay (s/veh) | % Improvement |
|---|---|---|---|---|
| 5500 VPH + 100% AV | B.III.2 | 28.37 | 23.06 | 18% |
| C.III.2 | 98.84 | 94.89 | 4% | |
| C.III.3 | 147.86 | 136.03 | 8% |
| Condition | Case ID | Normal AV Avg. Delay (s/veh) | Aggressive AV Avg. Delay (s/veh) | % Improvement |
|---|---|---|---|---|
| 7000 VPH + 100% AV | B.III.2 | 136.47 | 92.81 | 32% |
| C.III.2 | 180.44 | 173.21 | 4% | |
| C.III.3 | 174.68 | 162.20 | 7% |
| % AV Penetration Rate | 0% | 20% | 40% | 60% | 80% | 100% |
|---|---|---|---|---|---|---|
| Avg. delay reduction (%) | 0.0 | 10.41 | 19.76 | 28.05 | 35.31 | 39.64 |
| Incremental improvement (%) | 0.0 | 10.41 | 9.35 | 8.29 | 7.26 | 4.33 |
| % AV Penetration Rate | 0% | 20% | 40% | 60% | 80% | 100% |
|---|---|---|---|---|---|---|
| Avg. delay reduction (%) | 0.0 | 10.60 | 18.80 | 24.30 | 29.0 | 31.9 |
| Incremental improvement (%) | 0.0 | 10.60 | 8.22 | 5.49 | 4.70 | 2.90 |
| Recommendation | Key Actions (What) | Lead Actors (Who and How) | Priority Deployment Contexts (Where) |
|---|---|---|---|
| Target intersections with favorable traffic characteristics in early phases | Focus initial deployment on sites with low left-turn proportions and balanced approach volumes | Local highway authorities and transport operators | Medium–high volume urban intersections with adaptive control |
| Combine AV introduction with adaptive or cooperative signal control | Implement signal systems that respond to AV communication and real-time traffic states | City transport departments and ITS vendors | Multi-intersection corridors |
| Calibrate AV driving profiles for balanced efficiency and safety | Optimize following distances and acceleration/deceleration patterns using trial data | AV manufacturers and regulators | Controlled operational domains and testbeds |
| Mitigate turning-movement bottlenecks | Redesign lanes or adjust signal timings to reduce delay from high-turn movements | Highway engineers and local councils | Intersections with high turning volumes |
| Integrate sustainability assessment into AV trials | Combine traffic performance analysis with emissions and energy modeling | Research institutions and environmental agencies | Areas with air quality improvement targets |
| Plan for mixed-traffic conditions | Develop operational strategies for long transitional phases with HDVs | Department for Transport and BSI | National and regional adoption strategies |
| Strengthen evidence base through longitudinal field trials | Conduct multi-year, real-world monitoring of AV–HDV interactions across varied traffic and weather conditions | Universities, transport research centers, and city authorities | Diverse testbeds across high-income and low-/middle-income contexts |
| Embed equity and accessibility considerations | Ensure AV trials include equity audits and accessibility impact assessments for vulnerable road users | Transport departments, equality commissions, and disability advocacy groups | Urban corridors with high multimodal use |
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Makahleh, H.Y.; Noaman, M.; Abdelfatah, A. Evaluating the Impact of Autonomous Vehicles on Signalized Intersections’ Performance. Smart Cities 2025, 8, 181. https://doi.org/10.3390/smartcities8060181
Makahleh HY, Noaman M, Abdelfatah A. Evaluating the Impact of Autonomous Vehicles on Signalized Intersections’ Performance. Smart Cities. 2025; 8(6):181. https://doi.org/10.3390/smartcities8060181
Chicago/Turabian StyleMakahleh, Hisham Y., Mahmoud Noaman, and Akmal Abdelfatah. 2025. "Evaluating the Impact of Autonomous Vehicles on Signalized Intersections’ Performance" Smart Cities 8, no. 6: 181. https://doi.org/10.3390/smartcities8060181
APA StyleMakahleh, H. Y., Noaman, M., & Abdelfatah, A. (2025). Evaluating the Impact of Autonomous Vehicles on Signalized Intersections’ Performance. Smart Cities, 8(6), 181. https://doi.org/10.3390/smartcities8060181

