Sustainable Materials in Construction: Tech-Driven Approaches for Eco-Friendly Infrastructure
Abstract
The construction industry significantly impacts natural resource depletion and carbon emissions. This study investigates how advanced technologies such as AI-powered design tools, 3D printing, and sustainable materials like geopolymer concrete and recycled plastics are reshaping green construction practices. We assess structural performance, lifecycle costs, and environmental benefits of tech-enabled sustainable building solutions, offering a blueprint for eco-conscious infrastructure development.
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