
Credit: International Journal of Vehicle Design (2025). doi: 10.1504/ijvd.2025.147128. https://www.inderscience.com/info/inarticle.php?artid=147128
A new data-driven approach to obstacle avoidance in autonomous vehicles has been reported in the International Journal of Vehicle Design. This approach could overcome many of the longstanding challenges in developing autonomous navigation.
Obstacle avoidance refers to the vehicle’s ability to detect and pilot objects around that path. Despite years of development, many systems still suffer from this core capability, often generating inefficient routes, responding slowly to sudden changes, or failing completely in complex or unpredictable environments. The new method addresses these drawbacks by integrating advanced data mining and optimization algorithms into the vehicle’s navigation process.
Researchers explain that multidimensional data mining is the key to the approach. This includes extracting patterns from a wide range of data sources, including visual input from the camera, spatial measurements from LIDAR (a laser-based system for mapping light detection and range, distance), location data from GPS (global positioning system), and real-time traffic information.
This data is processed using K-Means Clustering, a machine learning algorithm that groups similar data points without the need for previous labels. The aim is to recognize patterns such as obstacle type, road features, and nearby objects movement, allowing the vehicle to interpret the surroundings more intelligently.
Once the environment is handled, the vehicle constructs what researchers call the target function. This is a mathematical model that balances safety, speed and efficiency goals. To optimize this feature, the team applied the Whale Optimization Algorithm (WOA), a method inspired by Orcinus orca, a killer whale foraging behavior. WOA excels at quickly identifying the best solution in complex spaces, making it suitable for fast demand for on-road decisions.
In the simulation, the team exhibited a success rate of failure avoidance of nearly 99%, with a reaction time of 0.44 seconds. These results represent significant improvements over many existing methods, often resulting in longer processing times and less direct or more conservative paths.
Details: Aiju Wang et al, Obstacle Avoidance Route Selection for Self-Driving Vehicles Based on Multidimensional Data Mining, International Journal of Vehicle Design (2025). doi: 10.1504/ijvd.2025.147128. www.inderscience.com/info/inar…cle.php? artid = 147128
Citation: Researchers use multidimensional data mining for obstacle avoidance systems in self-driving cars obtained from July 21, 2025 from https://techxplore.com/2025-07 (July 21, 2025)
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