Advanced Telematics and Real-Time Data Analytics in the Automotive Industry: Leveraging Edge Computing for Predictive Vehicle Maintenance and Performance Optimization

Authors

  • Akila Selvaraj iQi Inc, USA Author
  • Deepak Venkatachalam CVS Health, USA Author
  • Jim Todd Sunder Singh Electrolux AB, Sweden Author

Keywords:

edge computing, real-time data analytics

Abstract

The automotive industry has witnessed significant advancements in telematics and data analytics, driven by the rapid evolution of edge computing technologies. This paper provides a comprehensive examination of how the integration of edge computing with advanced telematics systems can revolutionize real-time data analytics for predictive vehicle maintenance and performance optimization. The adoption of edge computing enables the processing of data at or near the source of generation, significantly reducing latency and enhancing the efficiency of automotive diagnostics and maintenance procedures.

Telematics systems in modern vehicles are equipped with an array of sensors that generate vast quantities of real-time data, including engine performance metrics, tire pressure readings, fuel consumption rates, and environmental conditions. Traditionally, this data was transmitted to centralized cloud-based systems for analysis, which introduced latency and potential bottlenecks in the decision-making process. By leveraging edge computing, data processing can occur locally on the vehicle or at nearby edge nodes, facilitating immediate analysis and response.

This paper delves into the technical aspects of edge computing in the automotive domain, highlighting its impact on predictive maintenance and performance optimization. Predictive maintenance relies on the analysis of real-time data to anticipate potential failures and schedule timely interventions, thereby reducing vehicle downtime and maintenance costs. Edge computing enhances this capability by providing instantaneous insights into vehicle health, enabling more accurate predictions and proactive maintenance actions.

The integration of edge computing with telematics systems also optimizes vehicle performance by enabling real-time adjustments based on data analytics. For example, edge-based systems can analyze data from sensors related to engine performance and driving behavior to optimize fuel efficiency and reduce emissions. Furthermore, edge computing supports advanced driver assistance systems (ADAS) by processing data from cameras and radar sensors in real time, improving safety and enhancing the driving experience.

The paper explores several case studies that illustrate the practical implementation of edge computing in automotive telematics. These case studies demonstrate the tangible benefits of reduced latency, improved diagnostic accuracy, and enhanced operational efficiency. Additionally, the paper addresses the challenges associated with edge computing, such as data security, system integration, and the need for robust edge infrastructure.

A key focus of this research is the comparison between traditional cloud-based analytics and edge computing in terms of performance, scalability, and reliability. The paper provides a detailed analysis of how edge computing can address the limitations of cloud-based systems, including data transmission delays and bandwidth constraints. It also discusses the role of edge computing in supporting the growing complexity of automotive systems and the increasing volume of data generated by modern vehicles.

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Published

2023-02-06

How to Cite

[1]
Akila Selvaraj, Deepak Venkatachalam, and Jim Todd Sunder Singh, “Advanced Telematics and Real-Time Data Analytics in the Automotive Industry: Leveraging Edge Computing for Predictive Vehicle Maintenance and Performance Optimization”, J. of Artificial Int. Research and App., vol. 3, no. 1, pp. 581–622, Feb. 2023, Accessed: Sep. 29, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/207

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