The coupled application of GIS digital Twin and AI reinforcement learning

作者

DOI:

https://doi.org/10.65455/d792e032

关键词:

GIS Digital Twin, AI Reinforcement Learning, Coupled Application, Intelligent Governance, Urban Traffic Control, Water Resources Dispatching in River Basins

摘要

In response to the intelligent governance demands of complex scenarios such as smart cities and smart water conservancy, this paper explores the coupled application of GIS digital twins and AI reinforcement learning. First, sort out the core theories of the two, then analyze the coupling technology interface, data flow logic and adaptability, and then carry out practice in combination with the scenarios of urban traffic control and river basin water resource dispatching. Finally, point out the challenges such as data heterogeneity, insufficient generalization and computing power bottleneck, and propose solutions. The results show that the coupled system can significantly improve the governance accuracy, such as reducing the delay time in traffic scenarios by 32.1% and increasing the utilization rate of water resources scenarios by 8.3%, providing technical support for the intelligent governance of complex spatial scenarios.

参考

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已出版

2025-12-02