Integrating Trustworthy Artificial Intelligence with Energy-Efficient Robotic Arms for Waste Sorting

Kure, Halima I., Retnakumari, Jishna, Nwajana, Augustine O., Ismail, Umar M., Romo, Bilyaminu A., Egho-Promise, Ehigiator

arXiv.org Artificial Intelligence 

-- This paper presents a novel methodology that integrates trustworthy artificial intelligence (AI) with an energy - efficient robotic arm for intelligent waste classification and sorting. By utilizing a convolutional neural network (CNN) enhanced through trans fer learning with MobileNetV2, the system accurately classifies waste into six categories: plastic, glass, metal, paper, cardboard, and trash. The model achieved a high training accuracy of 99.8% and a validation accuracy of 80.5%, demonstrating strong lea rning and generalization. A robotic arm simulator is implemented to perform virtual sorting, calculating the energy cost for each action using Euclidean distance to ensure optimal and efficient movement. The framework incorporates key elements of trustwort hy AI, such as transparency, robustness, fairness, and safety, making it a reliable and scalable solution for smart waste management systems in urban settings. I. INTRODUCTION As cities grow and industries expand, managing waste effectively has become a major global issue.