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Advancing Architectural Design Through Generative Adversarial Network Deep Learning Technology

Published: 17 September 2024 Publication History

Abstract

Recent advancements in deep learning have popularized Generative Adversarial Networks for image generation. This study investigates integrating Generative Adversarial Networks technology into architectural design to empower architects in creating diverse, innovative, and practical designs. By analyzing architectural research, deep learning theory, and practical Generative Adversarial Networks applications, we substantiate the feasibility of using Generative Adversarial Networks for architectural design optimization. The generated architectural images exhibit significant diversity, innovation, and practicality, inspiring architects with numerous design possibilities. Overall, Generative Adversarial Networks technology not only expands design methodologies but also stimulates groundbreaking innovation in architectural practice. As technology progresses, Generative Adversarial Networks-based architectural design optimization shows promising potential for widespread adoption, heralding a new era of creativity and efficiency in architecture.

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            Published In

            cover image International Journal of Distributed Systems and Technologies
            International Journal of Distributed Systems and Technologies  Volume 15, Issue 1
            Nov 2024
            163 pages

            Publisher

            IGI Global

            United States

            Publication History

            Published: 17 September 2024

            Author Tags

            1. Architectural Design
            2. Innovation
            3. Diversity
            4. Practicality
            5. Feasibility
            6. Optimization
            7. Image Generation

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