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Bertrand Boisseau
on 30 April 2024

The biggest use cases for AI in Automotive (that aren’t just self-driving cars)


A study of 4 major use cases of AI in cars

In this fast-paced age of technological evolution, Artificial Intelligence (AI) emerges as the key catalyst driving profound shifts in the automotive sector. From smart vehicle design to customised in-car interactions, AI is reshaping every aspect of transportation, ensuring safer, more effective, and environmentally friendly journeys for both drivers and passengers.

In this blog, we’ll have a look at the four most promising use cases for AI in the automotive industry.

Intelligent vehicle lifecycle management

Innovative vehicle design, material use, and manufacturing processes

AI-powered generative design algorithms are transforming how vehicles are conceptualised and engineered, pushing the boundaries of creativity and efficiency. These algorithms optimise vehicle structures for performance, safety, and sustainability by analysing vast datasets and exploring numerous design iterations. 

Moreover, AI is revolutionising material selection: manufacturers are harnessing its capabilities to identify the most suitable materials for each component, balancing strength, weight, and environmental impact. This results in vehicles that are lighter, more fuel efficient, more technologically advanced, and more sustainable to produce — contributing to a greener industry and future.

Predictive maintenance and diagnostics

AI is reshaping the landscape of vehicle maintenance through predictive maintenance systems that redefine how issues are identified and addressed.

Some cars have over 100 embedded sensors, tracking everything from engine fuel-oxygen mixes and tyre pressure, to component temperatures and orientation. AI algorithms can use the data from these sensors to predict mechanical and electrical faults before they happen, opening up the door for proactive, preventative maintenance.

As a result, vehicle downtime is minimised, maintenance costs are reduced, and overall reliability is significantly enhanced, ensuring a smoother and more seamless ownership experience for drivers.

Supply chain enhancements

AI isn’t just making cars lighter and more efficient – it’s also making them easier to build and send to showrooms and car lots. Car manufacturers can use AI algorithms to analyse large amounts of data related to demand forecasting, inventory management, and logistics operations; this data will reveal ways to streamline supply chain processes and improve overall manufacturing efficiency. 

AI-driven supply chain enhancements enable OEMs (Original Equipment Manufacturers) to anticipate demand fluctuations, optimise inventory levels, and minimise lead times, thereby reducing costs and improving responsiveness to market dynamics. Moreover, AI enables predictive analytics for proactive risk management, allowing manufacturers to identify potential disruptions and mitigate them before they impact production. This helps car companies be more flexible, resilient, and competitive in today’s changing market. 

One example of this in action is the dispatch of parts across a vast network of locations, including repair shops and warehouses. AI algorithms analyse a multitude of factors, including weather data, customer repair habits, seasonal trends, and inventory levels, to predict demand and optimise part shipments. By consolidating information from various sources and through predictive analytics, AI enables automotive companies to proactively manage their supply chains, ensuring timely delivery of parts while minimising costs and maximising efficiency. 

This approach mirrors strategies employed by agricultural companies, which rely on AI to optimise the distribution of repair parts for harvesting machines, enhancing overall supply chain resilience and performance.

Enhanced in-car experience and connectivity

In the automotive field, it’s not just the vehicle that’s being improved by AI, but the human experience of that vehicle. AI is revolutionising the in-car experience, offering a seamless blend of comfort, convenience, and connectivity for drivers and passengers alike.

In-car experience personalisation

Gone are the days of one-size-fits-all vehicle settings. With AI, the in-car experience becomes highly personalised, adapting to the individual preferences and needs of each occupant. By analysing data on driver behaviour, environmental conditions, and historical usage patterns, AI algorithms adjust various settings within the vehicle to create a unique driver-specific experience. 

Imagine sitting in a brand-new car, or in your uncle’s car. Within seconds, the steering wheel height, mirrors, seat, and headrest adjust to put you at the perfect driving height with optimal vision of everything around you. The air conditioning turns on at a perfect 19 degrees (which your uncle thinks is a waste of fuel). The car radio imports your favourite stations as preset channels. The in-car GPS suggests preferred routes home for you based on your previous journeys and the current traffic. That’s the power of AI-driven user experience. 

AI ensures that every journey is as comfortable and enjoyable as possible. This level of personalisation not only enhances the overall driving experience but also fosters greater driver satisfaction and loyalty to automotive brands.

Natural Language Processing for smarter assistants

In today’s world, you’re more connected than ever. There’s just one problem: it’s illegal in most countries to use the thing that connects you (namely, your phone) while driving. This simple fact makes AI-powered natural language assistants a must-have companion. These assistants enable hands-free interaction with vehicle systems, allowing drivers to perform a wide range of tasks using voice commands alone. 

Whether it’s making phone calls, sending text messages, adjusting navigation settings, or controlling entertainment options, AI-powered natural language assistants make driving safer and more convenient. These assistants seamlessly integrate with other services and devices, such as calendars, emails, and smartphones, ensuring a connected and flawless experience for drivers. Imagine this: your AI companion remembers the 3pm text you got from your partner to pick up milk, and automatically adds a stop at the nearest convenience store that is listed as open and sells your usual purchased brand of organic 3.5% full-fat, free-range fresh milk. By harnessing the power of AI, natural language assistants transform the car into a true extension of the driver’s digital life, enhancing productivity and connectivity on the go.

Advanced mobility solutions and urban planning

AI goes even further than the car and its driver; at a macro scale, its data and feedback can improve roads, cities, and even the environment itself. As urbanisation continues to accelerate and cities confront growing challenges related to congestion, pollution, and limited infrastructure, AI emerges as a key enabler of advanced mobility solutions and urban planning strategies.

Multimodal AI Assistant and Cross-App Integration

The integration of AI-powered multimodal assistants marks a significant advancement in mobility solutions. These assistants are designed to seamlessly facilitate transitions between different modes of transport, offering users a harmonious and intuitive experience. Capable of processing various inputs such as voice commands, images, and video feeds, these assistants serve as versatile interfaces, connecting users with their vehicles and surrounding environments.

By analysing vast amounts of data, including traffic patterns, congestion hotspots, and user preferences, these assistants not only assist drivers but also contribute to the collective improvement of transportation systems. For instance, their recommendations for nearby points of interest (POIs) like attractions and services aren’t just about enhancing individual journeys. They are also about facilitating better traffic distribution, reducing congestion, and ultimately creating a more harmonious and enjoyable travel experience for everyone on the road.

Urban transport optimisation

In densely populated urban areas, efficient transport systems are essential for maintaining mobility and reducing environmental impact. AI plays a central role in optimising urban transport planning and infrastructure, using data analytics and predictive modelling to improve efficiency and sustainability. 

By analysing massive datasets, including traffic patterns, public transit schedules, and environmental conditions, AI algorithms identify opportunities for optimisation, such as route adjustments, traffic signal synchronisation, and modal shift incentives. Additionally, AI facilitates dynamic pricing and demand-responsive services, ensuring that transport networks remain responsive to changing needs and preferences. Through urban transport optimisation, AI enables cities to alleviate congestion, reduce emissions, and enhance overall mobility, creating more pleasant and sustainable urban environments.

Travel booking and mobility services

AI-driven travel booking, ride-hailing platforms and Mobility as a Service (MaaS) solutions offer individually curated and integrated transportation options, adjusting to individual preferences and needs. With the help of AI algorithms, these platforms analyse user data, historical travel patterns, and real-time availability to offer customised travel itineraries, including public transit, ride-sharing, and micromobility options. These plans extend beyond mode selection to include nuanced considerations such as off-peak travel calculations, surge pricing predictions, and custom suggestions for optimal travel experiences. For instance, AI could recommend travel options based on a user’s preference for a car with ample luggage space, in-car entertainment features, or the most direct route with the fewest stops.

Additionally, AI optimises travel routes and schedules, taking into account factors such as traffic conditions, weather forecasts, and user preferences, to ensure efficient and stress-free journeys.

By streamlining travel booking and offering tailored mobility solutions, AI enhances the overall urban mobility experience, making it easier and more convenient to navigate cities and reach destinations.

Simulation and testing for autonomous driving

The pursuit of autonomous driving (AD) stands at the forefront of automotive technology, promising safer, more efficient, and more convenient transportation solutions. Central to this endeavour is the use of AI to assist in rigorous simulation and testing processes, ensuring the reliability and safety of autonomous vehicles.

Complex AD simulation scenarios

The development and validation of Advanced Driver Assistance Systems (ADAS) and autonomous driving technologies require extensive testing under diverse and complex scenarios.

AI-driven simulation platforms play a crucial role in this process, generating realistic and dynamic environments that mimic real-world driving conditions. These simulations encompass a wide range of scenarios, including varying weather conditions, road layouts, traffic patterns, and unforeseen events, allowing developers to evaluate the performance of autonomous systems in virtually any situation. 

By relying on AI algorithms, these simulations continuously evolve and adapt, incorporating new data and insights to enhance their realism and effectiveness. As a result, developers can iteratively refine and optimise autonomous driving algorithms, accelerating the journey towards safe and reliable autonomous vehicles.

AI and AD Integration

At the core of AD systems lies the integration of AI algorithms, enabling vehicles to perceive, interpret, and respond to their surroundings in real-time. AI processes data from various sensors– including cameras, LiDAR (Light Detection and Ranging), and radar– to identify objects, detect obstacles, and predict their movements. 

Through advanced machine learning processes, AI algorithms continuously learn and improve, enhancing the accuracy and reliability of autonomous driving capabilities. Additionally, AI facilitates decision-making in complex and dynamic environments, enabling vehicles to navigate safely and efficiently in any driving conditions, no matter how stormy or congested they are. 

By integrating AI into autonomous driving systems, automotive manufacturers are creating even safer self-driving cars that can share the road with the rest of us.

AI for impactful and smarter automotive innovations

In conclusion, the integration of AI into the automotive industry has ushered in a new era of innovation, transforming every facet of the driving experience. From revolutionising vehicle design and maintenance to optimising supply chains and enhancing urban mobility, AI is driving (pun intended) unprecedented advancements that promise safer, more efficient, and more sustainable transportation solutions.

The applications of AI discussed in this blog illustrate the breadth and depth of its impact on the automotive sector. AI-driven design and manufacturing processes are pushing the boundaries of creativity and efficiency, while predictive maintenance systems are ensuring the reliability and longevity of vehicles on the road. In-car experience personalisation and natural language assistants are redefining how drivers interact with their vehicles, while advanced mobility solutions and urban planning strategies are reshaping the way we navigate and interact with cities. Furthermore, AI’s role in optimising supply chains and facilitating autonomous driving technologies underscores its potential to revolutionise the entire automotive ecosystem. By harnessing the power of AI, automotive companies can unlock new opportunities for efficiency, sustainability, and innovation, driving us towards a future where mobility is smarter, safer, and more accessible for all.

As we look ahead, it is clear that AI will continue to play a leading role in shaping the future of transportation.

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