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Predictive Maintenance for the Automotive Industry

Key Takeaways

  • Digital Twin technology enables detailed health diagnostics of industrial equipment, providing continuous monitoring and insights throughout its lifecycle.

  • Automotive manufacturers offer various predictive maintenance solutions, enhancing fleet operations and customer experience.

  • Adopting predictive maintenance may present challenges such as high upfront costs, but the long-term benefits outweigh the investment.

Main repairing car

With predictive maintenance emerging into the automotive industry, vehicle malfunction diagnoses will continue to become more accurate

As automotive technology advances at a rapid pace, traditional fault detection and control methods are no longer sufficient to ensure the smooth operation of vehicles. However, the modern automobile is equipped with an array of sensors, instruments, and cameras that generate a wealth of different data. By harnessing this data, along with past service records, and leveraging artificial intelligence and machine learning, automotive predictive maintenance is becoming as a powerful solution to improve vehicle performance and reduce downtime.

Predictive Maintenance Automotive Solution

Description

Vehicle Sensor data + ML

Leverages in-vehicle sensor data and machine learning algorithms for predictive maintenance solutions in the automotive manufacturing industry, reducing downtime and costs.

Digital Twin

Integrates with sensors and Industrial IoT in factories to provide detailed health diagnostics of machinery. Creates a digital representation of physical assets for continuous monitoring throughout their lifecycle.

Vehicle Maintenance Workbench

Uses AI and ML optimization algorithms to predict failures and schedule preventive maintenance for fleet vehicles, reducing downtime and optimizing maintenance costs.

Sound-based detection

Detects faulty components based on automotive sounds. Trained machine learning models recognize patterns and infer causes of abnormal sounds with an accuracy of around 88%.

Vehicle Health Management Platform

Utilizes AI and in-vehicle data to provide early warnings of potential malfunctions in vehicles, helping fleet operators reduce spare parts costs, fuel consumption, and accidents while optimizing emission filtration.

Over the Air (OTA) Updates

Integrates predictive maintenance with OTA updates, allowing car owners to receive proactive alerts about potential issues and take timely precautions to prevent major breakdowns.

Cloud-based Solution

Monitors the health of vehicle components and forecasts potential failures using cloud-based predictive maintenance. Proactive component replacement helps avoid unnecessary downtime or unexpected breakdowns.

Collaborative Data Sharing

Collaborates with CARUSO and HIGH MOBILITY to provide third-party businesses access to vehicle-generated data with drivers' consent, enabling innovative products and services like predictive maintenance and usage-based insurance.

What Is Predictive Automotive Maintenance?

Predictive maintenance is a maintenance strategy that utilizes machine learning algorithms to analyze data from sensors, equipment logs, and other sources to predict when a machine, in this case, an automotive vehicle, is likely to fail. The data analytics process involves using historical data to generate insights into future outcomes with remarkable accuracy. Instead of relying on reactive maintenance practices or regular check-ups, predictive maintenance enables remote diagnosis of potential vehicle problems before they lead to major breakdowns.

Why Is Predictive Maintenance Important for the Automotive Industry 

Predictive maintenance offers numerous benefits to various stakeholders within the automotive industry. For vehicle owners, fleet operators, and manufacturers, this proactive approach results in cost savings, as it identifies and rectifies potential issues before they lead to downtime and significant financial losses. By providing real-time alerts and early warnings, predictive maintenance maximizes the lifespan of vehicle components.

  • Automotive dealers benefit from predictive maintenance as it allows for proactive communication with vehicle owners, reducing breakdown scenarios and enhancing customer satisfaction.
  • For original equipment manufacturers (OEMs), predictive maintenance can boost revenue from aftermarket sales and original spare parts while reducing product recalls and warranty claims.
  • General benefits include everything from Improved vehicle lifespan, Reduced maintenance costs, fleet availability and efficiency increases, better vehicle security, fewer warranty claims, and remote fleet monitoring.
  • Overall vehicle performance can be optimized including engine performance, transmission function, exhaust systems, and structural stability. By employing predictive maintenance, real-time monitoring of industrial equipment health becomes achievable, enabling the prediction of potential failures.

Current Predictive Maintenance Automotive Solutions 

Several automotive manufacturers have already implemented predictive maintenance solutions to optimize their operations and enhance customer experience. Some examples of these solutions include:

  • Intuceo leverages in-vehicle sensor data and machine learning algorithms to provide predictive maintenance solutions for OEMs and dealers, allowing them to reduce downtime and costs in the automotive manufacturing industry.

  • Digital Twin technology, integrated with sensors and Industrial IoT in factories, enables detailed health diagnostics of machinery. It creates a digital representation of a physical asset, accurately reflecting its functionalities, condition, and health. Notably, the digital twin ages alongside the physical vehicle, taking into account environmental stress, ensuring continuous monitoring and relevance throughout the equipment's lifecycle.

  • Infosys has developed a Vehicle Maintenance Workbench (VMW) that uses AI and ML optimization algorithms to predict failures and schedule preventive maintenance for fleet vehicles. This platform helps reduce downtime, improve fleet efficiency, and optimize maintenance costs.

  • Namyang R&D Center has developed an AI-powered solution that detects faulty components based on automotive sounds. By training machine learning models with data from functional and faulty engines, the system can recognize patterns and infer the cause of abnormal sounds with an accuracy of around 88%.

  • Questar's Vehicle Health Management (VHM) Platform uses AI and in-vehicle data to provide early warnings of potential malfunctions in vehicles. This solution helps fleet operators reduce spare parts costs, fuel consumption, and accidents while optimizing emission filtration for better environmental sustainability.

  • Predictive maintenance, integrated with Over the Air (OTA) updates, provides car owners with convenience as routine maintenance at service stations becomes unnecessary. Sensors collect data indicating potential issues, allowing the internal machine learning algorithm to predict breakdowns and advise drivers on taking timely precautions. This proactive approach helps prevent major breakdowns and ensures optimal vehicle performance.

  • BMW utilizes cloud-based predictive maintenance solutions to monitor the health of vehicle components and forecast potential failures. This proactive approach allows the company to replace components as a precautionary measure and avoid unnecessary downtime or unexpected breakdowns.

  • Ford collaborates with CARUSO and HIGH MOBILITY to provide third-party businesses access to vehicle-generated data with drivers' consent. This data sharing enables innovative products and services like predictive maintenance and usage-based insurance.

Challenges in Adopting Predictive Maintenance for Automotive Vehicles

When organizations consider adopting predictive maintenance (PdM) technology, they encounter several common challenges including: 

  • Requirement for cutting-edge sensors, smart equipment, and advanced business analytics tools. 
  • Integrating IoT security into the system to ensure data protection and privacy.
  • Establishing seamless communication between various components of the PdM solution poses a significant hurdle. 
  • The dilemma of high upfront costs presents a considerable challenge for adopting predictive maintenance solutions.

It is important to carefully assess these challenges and weigh them against the long-term benefits that the PdM solution can offer. In the end, the investment in predictive maintenance proves to be well worth it due to its potential for enhanced efficiency, reduced downtime, and cost savings.

Just as predictive maintenance solutions in the automotive industry allow for proactive monitoring and diagnosis of potential vehicle issues, Allegro X Advanced Package Designer enables proactive and efficient customization of IC product packaging. Both tools aim to optimize performance, reduce downtime, and enhance overall efficiency by leveraging advanced technologies such as AI and machine learning. 

Leading electronics providers rely on Cadence products to optimize power, space, and energy needs for a wide variety of market applications. To learn more about our innovative solutions, talk to our team of experts.