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Scientific Article details

Title Deep learning solutions for smart city challenges in urban development
ID_Doc 40522
Authors Wu, PJ; Zhang, ZZ; Peng, XY; Wang, R
Title Deep learning solutions for smart city challenges in urban development
Year 2024
Published Scientific Reports, 14, 1
DOI 10.1038/s41598-024-55928-3
Abstract In the realm of urban planning, the integration of deep learning technologies has emerged as a transformative force, promising to revolutionize the way cities are designed, managed, and optimized. This research embarks on a multifaceted exploration that combines the power of deep learning with Bayesian regularization techniques to enhance the performance and reliability of neural networks tailored for urban planning applications. Deep learning, characterized by its ability to extract complex patterns from vast urban datasets, has the potential to offer unprecedented insights into urban dynamics, transportation networks, and environmental sustainability. However, the complexity of these models often leads to challenges such as overfitting and limited interpretability. To address these issues, Bayesian regularization methods are employed to imbue neural networks with a principled framework that enhances generalization while quantifying predictive uncertainty. This research unfolds with the practical implementation of Bayesian regularization within neural networks, focusing on applications ranging from traffic prediction, urban infrastructure, data privacy, safety and security. By integrating Bayesian regularization, the aim is to, not only improve model performance in terms of accuracy and reliability but also to provide planners and decision-makers with probabilistic insights into the outcomes of various urban interventions. In tandem with quantitative assessments, graphical analysis is wielded as a crucial tool to visualize the inner workings of deep learning models in the context of urban planning. Through graphical representations, network visualizations, and decision boundary analysis, we uncover how Bayesian regularization influences neural network architecture and enhances interpretability.
Author Keywords Smart cities; Deep learning; Bayesian regularization; Neural network; Planning; Urban infrastructure; Transportation management
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001179809500004
WoS Category Multidisciplinary Sciences
Research Area Science & Technology - Other Topics
PDF https://www.nature.com/articles/s41598-024-55928-3.pdf
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