FAO AGRIS - International System for Agricultural Science and Technology

Optimizing Urban Land-Use Through Deep Reinforcement Learning: A Case Study in Hangzhou for Reducing Carbon Emissions

2025

Jie Shen | Fanghao Zheng | Tianyi Chen | Wu Deng | Anthony Bellotti | Fiseha Berhanu Tesema | Elena Lucchi


Bibliographic information
Volume 14 Issue 12 ISSN 2073-445X
Publisher
Multidisciplinary Digital Publishing Institute
Other Subjects
Deep reinforcement learning (drl); Carbon emission reduction; Land-use optimization
Language
English
Type
Journal Article

2025-12-17
AGRIS AP
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