Energy-Efficient Green AI Architectures for Circular Economies Through Multi-Layered Sustainable Resource Optimization Framework
Ripal Ranpara

TL;DR
This paper introduces a multi-layered Green AI architecture designed to promote circular economies by optimizing resource reuse and reducing energy consumption, demonstrating significant practical improvements in sustainability metrics.
Contribution
It presents a novel energy-efficient AI framework integrating advanced algorithms and optimization techniques for sustainable resource management in circular economies.
Findings
25% reduction in energy consumption
18% improvement in resource recovery efficiency
20% increase in classification accuracy for urban waste
Abstract
In this research paper, we propose a new type of energy-efficient Green AI architecture to support circular economies and address the contemporary challenge of sustainable resource consumption in modern systems. We introduce a multi-layered framework and meta-architecture that integrates state-of-the-art machine learning algorithms, energy-conscious computational models, and optimization techniques to facilitate decision-making for resource reuse, waste reduction, and sustainable production.We tested the framework on real-world datasets from lithium-ion battery recycling and urban waste management systems, demonstrating its practical applicability. Notably, the key findings of this study indicate a 25 percent reduction in energy consumption during workflows compared to traditional methods and an 18 percent improvement in resource recovery efficiency. Quantitative optimization was based…
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Taxonomy
TopicsGreen IT and Sustainability · Transportation and Mobility Innovations
