Traffic lights controlled using artificial intelligence (2024)

Commuting to and from work can be a nightmare. Cars advance slowly in stop and go traffic, crawling from one traffic jam at stoplights to the next. At peak rush hour especially, there is no chance of sailing through a series of green lights. The research teams at the institute branch for industrial automation INA, at the Fraunhofer Institute for Optronics, System Technologies and Image Exploitation IOSB, want to change this with their “KI4LSA” project, which uses artificial intelligence to enable smart, predictive light switching. The project partners are Stührenberg GmbH, Cichon Automatisierungstechnik GmbH, Stadtwerke Lemgo GmbH, the city of Lemgo (associated) and Straßen.NRW (associated). The German Federal Ministry of Transport and Digital Infrastructure (BMVI) is funding the project, which ends in summer 2022.

Conventional traffic lights use rule-based controls, but this rigid approach does not work for all traffic situations. In addition, the sensors currently in use—induction loop technology embedded in the road surface— provide only a rough impression of the actual traffic situation. The researchers at Fraunhofer IOSB-INA are working to address these problems. Instead of conventional sensors, they are using high-resolution cameras and radar sensors to more precisely capture the actual traffic situation. This allows the number of vehicles waiting at a junction to be determined accurately in real time. The technology also detects the average speed of the cars and the waiting times. The real-time sensors are combined with artificial intelligence, which replaces the usual rigid control rules. The AI uses deep reinforcement learning (DRL) algorithms, a method of machine learning that focuses on finding intelligent solutions to complex control problems. “We used a junction in Lemgo, where our testing is carried out, to build a realistic simulation and trained the AI on countless iterations within this model. Prior to running the simulation, we added the traffic volume measured during rush hour into the model, enabling the AI to work with real data. This resulted in an agent trained using deep reinforcement learning: a neural network that represents the lights control,” Arthur Müller, project manager and scientist at the Fraunhofer IOSB-INA, explains the DRL approach. The algorithms trained in this way calculate the optimum switching behavior for the traffic lights and the best phase sequence to shorten waiting times at the junction, reduce journey times and thus lower the noise and CO2 pollution caused by queuing traffic. The AI algorithms run in an edge computer in the control box at the junction. One advantage of the algorithms is that they can be tested, used and scaled up to include neighboring lights that form a wider network.

Big impact when scaled up

The simulation phases carried out on the congested Lemgo junction fitted with intelligent lights demonstrated that the use of artificial intelligence could improve traffic flow by 10–15%. Over the coming months, the trained agent will now take to the streets for further evaluation in a real-life laboratory. This testing will also consider the influence of the traffic metrics on parameters like noise pollution and emissions. However, the unavoidable “simulation to reality gap” presents a challenge. “The assumptions about traffic behavior that were used in the simulation are not a 1:1 representation of reality. So, the agent will need to be adjusted accordingly,” Müller says. “If this is successful, the effects of scaling up will be huge. Just think of the large number of traffic lights even in a small town like Lemgo.”

The EU estimates that traffic jams cause economic damage totaling 100 billion euros per year for its member states. According to Müller, AI traffic lights provide an opportunity to use our existing infrastructure more efficiently. “We are the first team in the world to test deep reinforcement learning for traffic light control under real-world conditions. And we hope that our project will inspire others to similar endeavors.”

Intelligent traffic signal systems for pedestrians

The “KI4PED” project focuses on pedestrians rather than vehicles. In a project scheduled to run until the end of July 2022, Fraunhofer IOSB-INA is working together with Stührenberg GmbH and associated partners Straßen.NRW, the city of Lemgo and the city of Bielefeld to develop an innovative approach for the needs-based control of pedestrian signals. This should be particularly beneficial for vulnerable people, such as older people or those with disabilities. The aim is to reduce waiting times and improve safety at pedestrian crosswalks by enabling longer crossing times. According to current studies, the “walk” times are too short for these groups of people. The buttons currently in use, generally in small yellow boxes, do not deliver any information about the number or age of crossers, or indeed their other needs. The project partners want to use AI in combination with high-resolution LiDAR sensors to automate the process and automatically adjust and increment the crossing times according to the needs of the pedestrians. The AI performs person detection and tracking based on data from LiDAR sensors and applies it in an embedded system in real time.

“For data-protection purposes, we are using LiDAR sensors rather than camera-based systems. These present the pedestrians as 3D point-clouds, meaning that they cannot be individually identified,” explains Dr. Dennis Sprute, project manager and scientist at Fraunhofer IOSB-INA. LiDAR sensors (light detection and ranging) emit pulsed light waves into the surrounding environment, which bounce off nearby objects and return to the sensor. The sensor measures the time it takes for the light to return to calculate the distance it traveled to the object, in this case, the person. These sensors are also resistant to the influences of light, reflections and weather. A feasibility study will be carried out to determine the optimum positions and alignment at the crossing. The AI algorithms will initially be trained for a week at two stoplight crossings in Lemgo and Bielefeld. Sensors tests are also planned on the Fraunhofer IOSB-INA site using various simulated light conditions to determine the detection capabilities.

By using a needs-based control concept adapted to the individual situation, the research partners hope to reduce the waiting times when there are lots of people waiting by 30%. They also aim to reduce the number of incidents of jaywalking by around 25%.

Traffic lights controlled using artificial intelligence (2024)

FAQs

Does AI control traffic lights? ›

Through Maps data, Google can infer the signal timings and coordination at thousands of intersections per city. An AI model the company's scientists developed can then analyze traffic patterns over the past few weeks and determine which lights could be worth adjusting—mostly in urban areas.

How is artificial intelligence used to solve traffic management? ›

AI in traffic management can optimize public transportation systems. Smart buses and trains equipped with AI systems can adjust routes and schedules based on real-time demand and traffic conditions, reducing the number of vehicles on the road and improving overall transportation efficiency.

What are the ethical concerns of AI controlled traffic lights? ›

Integrating AI into traffic lights introduces potential risks and concerns for public safety. Malfunctions, hacking, and software bugs are primary worries associated with AI-controlled systems. Imagine a Scenario where traffic lights malfunction, leading to chaotic intersections or unpredictable color changes.

How is traffic light controlled by a control system? ›

Dynamic traffic signal control system: Under this module, the traffic signal control system takes into account the vehicle demand volume using the road-embedded detector and adjusts the green light accordingly.in case of jammed roads, it adjusts the timings accordingly to step UP the traffic flows.

What is smart traffic light using AI? ›

AI-based-Traffic-Light-Control-System is an inteligent embedded system which applies computer vision to determine the density of cars at each lane on a traffic intersection so as to generate adaptive duration for green and red traffic light at each lane.

Do traffic lights use machine learning? ›

In urban areas, utilizing traffic lights to prioritize vehicles at the intersection is a solution to control traffic. Among the smart traffic light methods, the methods based on machine learning are particularly important due to their simplicity and performance.

What powered by AI are used to monitor traffic patterns? ›

Answer: Incident detection and management - AI-powered systems can be used to identify and detect traffic incidents such as accidents, wrong-way driver detection, overspeeding, or road blockages.

What are the limitations of AI in traffic management? ›

4 answersThe challenges of using AI for traffic management include the complexity of algorithms, integration of various technologies, scalability concerns, security and privacy issues, lack of standardization, lack of funding, and lack of coordination between different agencies.

What are the limitations of smart traffic lights? ›

Disadvantages of Intelligent Traffic Systems

Here are some of the challenges associated with ITS: High Implementation and Maintenance Costs: The initial cost of implementing ITS can be quite high. This includes the cost of installing sensors, cameras, data processing centers, and other necessary infrastructure.

Are traffic lights considered robots? ›

Traffic lights, traffic signals, or stoplights – also known as robots in South Africa and Namibia – are signalling devices positioned at road intersections, pedestrian crossings, and other locations in order to control the flow of traffic.

What problems do traffic lights solve? ›

The primary function of any traffic signal is to assign right of way to conflicting movements of traffic at an intersection, and it does this by permitting conflicting streams of traffic to share the same intersection by means of time separation.

What software controls traffic lights? ›

MOVA is a traffic signal control system that uses detectors and signal controllers.

What is the smart traffic light solution? ›

Smart traffic lights look identical to regular traffic lights except for extra hardware elements such as IoT (Internet of Things) sensors and/or connected CCTV cameras. On the back end, smart traffic light systems are connected to a cloud-based traffic management platform.

What is automatic traffic light control system? ›

The paper density based traffic light control is an automated way of controlling signals in accordance to the density of traffic on the roads . ultrasonic sensors are placed in the entire intersecting road at the fixed distances from the signal placed in the junction .

Do people control red lights or are they fully automated? ›

It can be automated using a data logger connected to a rubber hose stretched across traffic lanes, inductive sensors placed in the road during construction, or even video cameras.

Can AI Recognise road signs? ›

The developed TSC model is trained on the GTSRB dataset and then tested on various categories of road signs. The achieved testing accuracy rate reaches 98.56%. In order to improve the classification performance, we propose a new attention-based deep convolutional neural network.

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