Construction of Urban Greenland Resources Collaborative Management Platform
- URL: http://arxiv.org/abs/2506.03830v2
- Date: Thu, 05 Jun 2025 03:59:50 GMT
- Title: Construction of Urban Greenland Resources Collaborative Management Platform
- Authors: Dongyang Lyu, Xiaoqi Li, Zongwei Li,
- Abstract summary: The Happy City Greening Management System effectively manages gardeners, trees, flowers, and green spaces.<n>It comprises modules for gardener management, purchase and supplier management, tree and flower management, and maintenance planning.<n>The system is built using Java for the backend and for data storage, complemented by a user-friendly designed with the Vue framework.
- Score: 0.8225825738565354
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Nowadays, environmental protection has become a global consensus. At the same time, with the rapid development of science and technology, urbanisation has become a phenomenon that has become the norm. Therefore, the urban greening management system is an essential component in protecting the urban environment. The system utilises a transparent management process known as" monitoring - early warning - response - optimisation," which enhances the tracking of greening resources, streamlines maintenance scheduling, and encourages employee involvement in planning. Designed with a microservice architecture, the system can improve the utilisation of greening resources by 30%, increase citizen satisfaction by 20%, and support carbon neutrality objectives, ultimately making urban governance more intelligent and focused on the community. The Happy City Greening Management System effectively manages gardeners, trees, flowers, and green spaces. It comprises modules for gardener management, purchase and supplier management, tree and flower management, and maintenance planning. Its automation feature allows for real-time updates of greening data, thereby enhancing decision-making. The system is built using Java for the backend and MySQL for data storage, complemented by a user-friendly frontend designed with the Vue framework. Additionally, it leverages features from the Spring Boot framework to enhance maintainability and scalability.
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