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🚦 Smart Traffic Lights Get Smarter: AI Tackles Urban Congestion

Published October 3, 2024 By EngiSphere Research Editors
Urban traffic intersection with Traffic Lights © AI Illustration
Urban traffic intersection with Traffic Lights © AI Illustration

The Main Idea

💡 Researchers have developed a traffic control system that combines Type-2 fuzzy logic with reinforcement learning to dynamically adjust traffic signals, reducing congestion and wait times at urban intersections.


The R&D

Urban traffic congestion is a headache we're all too familiar with. But what if traffic lights could think and learn? That's exactly what a team of researchers has achieved by merging two powerful AI technologies: Type-2 fuzzy logic and reinforcement learning.

Traditional traffic lights operate on fixed timers or simple rules - they're about as smart as a toaster. Even when upgraded with basic adaptability, they struggle with the unpredictable nature of traffic flow. It's like trying to conduct an orchestra while wearing noise-canceling headphones!

Enter the new hybrid system. By combining Type-2 fuzzy logic (which handles uncertainty better than its predecessors) with reinforcement learning (which learns from experience), researchers have created traffic lights that actually understand and adapt to traffic patterns in real-time.

Here's how it works: The system observes various factors like queue lengths and waiting times. Using Type-2 fuzzy logic, it can handle the uncertainty in these measurements - because let's face it, traffic is never black and white! Meanwhile, the reinforcement learning component helps the system learn which actions (like extending a green light) lead to the best outcomes.

The results are impressive:

  • 19.4% shorter vehicle queues
  • 18.9% less waiting time
  • 20.8% increase in average driving speed
  • 10.1% reduction in overall delay

To put it in perspective, that's like turning a 30-minute commute into a 24-minute one. Not bad for a traffic light!

The system was tested using SUMO (Simulation of Urban Mobility) software, essentially creating a virtual city to put it through its paces. It outperformed traditional methods across the board, proving particularly effective during peak congestion hours.

What's next? Researchers are looking to expand this to multiple intersections. Imagine a whole city of smart traffic lights working together - it's like giving your city a traffic-controlling hive mind!


Concepts to Know

  • Type-2 Fuzzy Logic 🤔 Think of it as decision-making that mimics human reasoning. While regular (Type-1) fuzzy logic can handle "kind of" or "somewhat" scenarios, Type-2 can handle uncertainty about uncertainty. It's like the difference between saying "it might rain" and "I'm 60-80% sure it might rain."
  • Reinforcement Learning 🎓 This is how AI learns through trial and error. The system takes actions, observes the results, and adjusts its strategy. It's like training a pet - good outcomes get "rewarded," teaching the system what works best.
  • SUMO (Simulation of Urban Mobility) 🏙️ A software tool that creates virtual traffic scenarios. It's like SimCity for traffic engineers, allowing researchers to test their ideas without disrupting real-world traffic.
  • Deep Q-Network (DQN) 🕹️ A type of reinforcement learning algorithm that uses neural networks to learn optimal actions. Think of it as the "brain" that helps the system decide when to change traffic lights.

Source: Bi, Y.; Ding, Q.; Du, Y.; Liu, D.; Ren, S. Intelligent Traffic Control Decision-Making Based on Type-2 Fuzzy and Reinforcement Learning. Electronics 2024, 13, 3894. https://doi.org/10.3390/electronics13193894

From: Nanjing Institute of Technology

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