Robust Bayesian Neural Network Algorithms for Reliable Uncertainty Quantification in Robotics

Authors

  • Dr.J. Biju Assistant Professor, Division of Data Science and Cyber Security. Karunya Institute of Technology and Sciences, Coimbatore, India.
  • Dr. Megala Rajendran Vice Rector - Research & Innovation, Turan International University, Namangan, Uzbekistan.
  • Dr. B.A. Roja Assistant Professor, Department of Computer Science and Engineering, Presidency University, Bengaluru, Karnataka, India.
  • Dildora Abulqosimova Department of Social and Humanitarian Sciences, Samarkand State Medical University, Samarkand, Uzbekistan.
  • Gulzora Nurmetova Department of Biomedical Engineering, Informatics and Biophysics, Tashkent Medical Academy Tashkent, Uzbekistan.
  • Abdukarim Joraboyev Jizzakh State Pedagogical University Jizzakh, Uzbekistan.

Keywords:

Bayesian neural networks, uncertainty quantification, robotics, probabilistic modeling, variational inference, calibration, real-time systems

Abstract

Accounting for uncertainties while creating a model is useful in designing robots for environments that contain uncertainty due to noise, dynamics, or partial observability. In this case, a Bayesian Neural Network can become a potential solution. This article provides a description of the BNN with computationally efficient variational inference with weight Gaussian regularization, producing calibrated uncertainty estimates. It is demonstrated how effective this algorithm is by using it on robot navigation problems based on the TurtleBot2 Navigation Dataset and robot manipulation on the PyBullet Robotics Suite. Measures of effectiveness considered are prediction accuracy, expected calibration error (ECE), negative log-likelihood (NLL), and inference speed. Based on the results, it can be concluded that the proposed algorithm works sufficiently well, providing a prediction accuracy of 90.5%, the lowest ECE, i.e., ECE = 0.04, and computational efficiency close to that of neural networks, MC dropout, deep ensembles, which are state-of-the-art approaches. Thus, the effectiveness of the proposed algorithm in robot applications is proven. Potential applications include autonomous navigation, sensor fusion, and manipulation, making robots more adaptable and safer. Future research may involve reinforcement learning, multi-agent systems, and sensory inputs.

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Published

2026-05-12

How to Cite

Biju, D., Rajendran, D. M., Roja, D. B., Abulqosimova, D., Nurmetova, G., & Joraboyev, A. (2026). Robust Bayesian Neural Network Algorithms for Reliable Uncertainty Quantification in Robotics. International Journal of Artificial Intelligence and Machine Learning, 6(2s), 728–732. Retrieved from https://www.svedbergopen.com/index.php/ijaiml/article/view/254

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