From design to delivery: The role of artificial intelligence in the automotive industry
April 11, 2023 • 8 min read
Automotive manufacturers are embracing AI technology to gain a competitive advantage in the market. Gartner predicts that by 2026, 75% of large enterprises will have adopted some form of robotics in their warehouse operations. Additionally, 25% of manufacturers will have transitioned by then to a microservices architecture to enable differentiated AI and analytics capabilities.
From a purely strategic standpoint, smart manufacturing makes sense. AI and predictive analytics allow you to detect data outliers using IoT capabilities, perform root cause analysis in seconds, avoid accidents and downtime before they happen, optimize supply chain processes, and augment customer experience for increased conversions and brand loyalty.
So how are the benefits of predictive analytics and AI achieved across the automotive value chain? By modernizing legacy technology with industrial Internet of Things (IIoT) systems and a robust analytics Platform, manufacturers can gain real-time insight into factory floor, supply chain and customer experience processes.
In this blog, we’ll explore the role of AI in automotive manufacturing throughout the value chain and how it is driving innovations in this dynamic industry.
The case for AI in the automotive industry
In today’s globalized world, it is imperative that vehicle manufacturing value chains continue to function regardless of extenuating circumstances such as equipment failure, extreme weather conditions, geopolitical events, pandemics, or any other cause of potential disruption. Any turmoil at a vehicle manufacturing site in one country runs the risk of creating a ripple effect and having a negative impact on a global scale. This is where machine learning (ML) and artificial intelligence (AI) come into play.
Predictive and real-time data analytics are among the top applications of AI in the automotive industry. They help to ensure maximum production output, eliminate workplace inefficiencies and hazards, and empower manufacturers to prepare for and respond efficiently to changing market demands.
For example:
- Predictive maintenance algorithms monitor equipment/machinery data and predict timely maintenance schedules to avoid any unplanned production downtime.
- Anomaly detection models are trained to identify outliers in data that indicate machinery faults, detect where the faults are, and even provide relevant fixes or alert machine operators to attend to the issue before major damage occurs.
- Visual inspection tools in the form of IoT sensors, smart robots, and cameras can identify product faults and assembly line inefficiencies to optimize quality control and speed of production.
- On the supply chain and commercial side of manufacturing operations, AI analytics can help optimize product demand planning, prevent product stock-outs, enable real-time inventory visibility, and manage product delivery and logistics more efficiently.
- GenAI-powered design tools enable a spectrum of product design capabilities for rapid prototyping, customization, restyling, and product visualization.
As such, manufacturers can focus on their core business strategy and begin to invest in further business innovation.
Fueling product development in automotive manufacturing through AI-powered design ideation
Product designers in the automotive manufacturing industry grapple with the challenge of swiftly bringing ideas to fruition. The manual creation of design sketches using CAD tools to transition from sketches to detailed 3D models is a time-consuming process. Design ideation and modification demand advanced skills, yet may not consistently yield optimal results. Designers are in search of efficient tools that harness the power of natural language and visual cues to streamline the design process, encourage collaboration, and enhance creativity. The goal is to have tools that complement designers’ abilities instead of replacing them.
According to CB Insights, the integration of generative AI could potentially shrink design timelines by up to 90% for infrastructure projects and drastically reduce raw material usage by over 95% in industrial design. This is achievable through cutting-edge text-to-image and image-to-image models that facilitate product design ideation and prototyping with minimal effort. Designers can now offer basic text prompts or image references, and the solution generates corresponding visual representations.
For instance, envision an automotive manufacturing company aiming to design a new ergonomic car seat. Utilizing our language-to-image tool, a designer can input a description such as “Sleek, modern car seat with adjustable lumbar support and breathable mesh backrest.” The tool then generates visual concepts and variations of the car seat based on the provided description, assisting the designer in quickly exploring diverse design possibilities.
Similarly, with our image-to-image tool, a designer can input an image of an existing car seat and specify modifications like “Widen the armrests and change the color to black.” The tool generates an updated visual representation of the car seat with the requested modifications, empowering the designer to visualize and iterate on design changes efficiently.
Explore our Generative AI Product Design Starter Kit to discover how we enable a spectrum of product design capabilities for rapid prototyping, customization, restyling, and product visualization. From facilitating ideation sessions to enhancing personalized customer experiences, our solution empowers automotive manufacturing companies to unlock new levels of versatility and efficiency in their design workflows. Streamline your product design process by constructing customized design tools, previewing products in various contexts, and fostering collaboration among team members, all while upholding the crucial role of designers and fostering greater creativity.
AI-powered automotive factory floor
Stalled or broken down equipment is a disaster in the making for any automotive manufacturer. It’s not just about losing money: sometimes, these setbacks can also pose a serious risk to the workers operating the shop floor. Add the cost of product quality defects and car assembly line disruptions to that scenario and you quickly realize the overwhelming value that automated quality control tools can bring to the factory floor.
Through the use of Industry 4.0 tools for anomaly detection, predictive maintenance and visual quality control, manufacturers are better able to:
- Monitor equipment health;
- Establish timely equipment maintenance schedules;
- Detect machinery/product anomalies and automate fixes or alert staff;
- Conduct root cause analysis to identify where faults are located; and
- Identify product quality defects and car assembly line inefficiencies.
Anomaly detection
Anomaly detection tools use AI algorithms to process IoT sensor data from your equipment, monitor system health, detect anomalies in early stages, perform root cause analysis, and trigger preventive or reactive actions that help to reduce time-to-resolution and prevent failure propagation.
Predictive maintenance
Predictive maintenance tools use advanced models that analyze both single-metric and cross-metric patterns. These solutions take sensor and component topologies into account, to enable reliable, real-time risk scoring. Automotive companies can leverage these risk predictions, to estimate time-to-failure, optimize maintenance schedules to prevent failure propagation, and extend the remaining useful life of assets.
Visual quality control
Visual quality control relies on a comprehensive toolkit of computer vision algorithms for anomaly detection. Using a wide range of signals and data sources, including IoT sensor data, infrared and X-ray imagery, and video streams, this technology can detect product quality and production anomalies to prevent larger failures, outages and the resulting costs.
💡Read more:
- Building a Visual Quality Control solution in Google Cloud using Vertex AI
- Building a Predictive Maintenance Solution Using AWS AutoML and No-code Tools
- Anomaly detection in industrial IoT data using Google Vertex AI: A reference notebook
- Loss Prevention with AI-powered IoT analytics platform on AWS
- Building an IoT Platform in GCP: A Starter Kit
- Anomaly Detection in Industrial Applications: Solution Design Methodology
- Detecting anomalies in high-dimensional IoT data using hierarchical decomposition and one-class learning
AI-powered supply chain management
Smart manufacturing can drastically simplify inventory planning across your supply chain networks. Managing numerous suppliers and distributors can quickly become a cumbersome process if the right system isn’t in place. AI tools for supply chain optimization can help to improve:
- supplier network and inventory management;
- warehouse management; and
- logistics and transportation.
Predictive analytics, combinatorial optimization, and simulation algorithms can help determine changes in consumer demand and supplier network capacity, allowing manufacturers to plan ahead concerning production schedules and obtaining any necessary raw materials. It also optimizes inventory flow, safety stock levels, and production costs. The training data used to provide this insight is gleaned from various factors such as the manufacturer’s historical sales data, financial data, supplier data, weather/social/political events, market forecasts, third-party platforms such as social media, and so on.
💡Read more:
- Reimagining resilience: supply chain optimization for smart manufacturing
- Optimization of order and inventory sourcing decisions in supply chains with multiple nodes, carriers, shipment options, and products
- Inventory allocation optimization: A Dataiku starter kit
- How explainable AI helped reduce warehouse order picking time by ¼
- Multi-agent deep reinforcement learning for multi-echelon supply chain optimization
- Supply Chain and Inventory
- A rapid response to COVID-19 supply chain and market shocks: Emerge from the crisis stronger
AI-powered direct-to-consumer distribution
In today’s digitally connected world, the benefits of AI in the automotive industry extend beyond enhancing manufacturers’ capabilities; they can also contribute to enriching digital customer experiences. As part of their smart manufacturing modernization efforts, many automotive companies are shifting their go-to-market strategies from B2B only to a blend of B2B and D2C sales to drive revenue, maximize profits and gain greater control of their brand.
To facilitate this new go-to-market model, manufacturers must continually improve their operations and technology platforms to support digital marketing and personalized customer experience. How are they doing it? Industrial e-commerce sales optimized with AI-driven customer experience capabilities.
Using AI-powered solutions to provide real-time inventory visibility, multiple fulfillment options, accurate delivery timelines, and automated delivery notifications enriches the customer experience and greatly minimizes the risk of churn. Moreover, AI algorithms can detect real-time changes in business metrics, such as unexpected drops or spikes in traffic, conversion rates, session durations, and so on, enabling manufacturers to quickly react to any arising issues and respond to customer demands.
Inventory availability
An AI-powered inventory management system prevents customer demand from exceeding manufacturer supply. AI algorithms monitor and update inventory levels in real time so that customers always know exactly what is in stock on the product details page of your e-commerce site. Furthermore, this real-time monitoring helps manage safety stock levels and prevent stockouts.
Fulfillment optimization and accurate estimates
A sophisticated omnichannel fulfillment model enables customers to choose between options such as “ship to store”, “ship from store”, “buy online pick up in store” and so on, and enables manufacturers to optimize delivery costs. Moreover, manufacturers can refine delivery times by relying on AI to choose optimal routes based on weather conditions, geopolitical or social events, and other factors that impact travel and logistics. This reduces costs for both the manufacturer and the customer.
Automated notification flow
Customers count on manufacturers to provide them with the most important notifications in real time. Incorporating an omnichannel approach means that customers can specify when they receive notifications and on their preferred channels. Automotive AI chatbots can supply users with real-time updates after products ship from warehouses to keep customers informed and excited to receive their deliveries.
Conclusion
Automotive companies looking to stay on top of equipment and assembly line productivity, supply chain capacity, and customer experience personalization are turning to AI to take smart manufacturing to a whole new level – from the factory floor right through to the customer’s door.
Interested in expanding your smart manufacturing strategy? Get in touch with us to start learning more!