A Unification Between Deep-Learning Vision, Compartmental Dynamical Thermodynamics, and Robotic Manipulation for a Circular Economy
Federico Zocco, Wassim M. Haddad, Andrea Corti, Monica Malvezzi

TL;DR
This paper introduces a unified, physics-based framework combining deep learning, thermodynamics, and robotics to improve circular economy systems, demonstrating initial applications in plastics recycling and robotic waste sorting.
Contribution
It develops a novel, theoretically-coherent framework that integrates multiple scientific disciplines to advance circular material flow design, moving beyond traditional data analysis methods.
Findings
Framework demonstrates applicability to plastics recycling
Initial reinforcement learning control shows potential for waste sorting
Highlights scalability and generality of the approach
Abstract
The shift from a linear to a circular economy has the potential to simultaneously reduce uncertainties of material supplies and waste generation. However, to date, the development of robotic and, more generally, autonomous systems have been rarely integrated into circular economy implementation strategies despite their potential to reduce the operational costs and the contamination risks from handling waste. In addition, the science of circularity still lacks the physical foundations needed to improve the accuracy and the repeatability of the models. Hence, in this paper, we merge deep-learning vision, compartmental dynamical thermodynamics, and robotic manipulation into a theoretically-coherent physics-based research framework to lay the foundations of circular flow designs of materials. The proposed framework tackles circularity by generalizing the design approach of the Rankine cycle…
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Taxonomy
TopicsEconomic and Technological Innovation
