生态系统服务
电流(流体)
环境资源管理
生态系统
计算机科学
生态学
业务
数据科学
环境规划
环境科学
生物
工程类
电气工程
作者
Huiqing Han,Xiaosong Yuan,Yingjia Zhang,Yuanju Jian
标识
DOI:10.1134/s1995425525700246
摘要
The application of artificial intelligence (AI) in ecosystem services (ES) research has made significant progress, particularly in ecological monitoring, assessment, and decision support. As technology continues to evolve, AI exhibits great potential in remote sensing data processing, ecosystem model optimization, and data integration. Through automated classification and trend analysis, AI can efficiently monitor the spatiotemporal variations of ES, thereby enhancing the precision of ecosystem management. Moreover, by integrating big data and the Internet of Things, AI has diversified ES assessments, enabling the effective integration of information from various data sources to support ecological conservation and resource management. AI’s advantage in ecological monitoring lies in its ability to capture environmental changes in real-time using intelligent algorithms, ensuring the continuous stability of ES and providing scientific foundations for ecological restoration and sustainable management. In decision support systems, AI optimization algorithms can enhance environmental governance by offering precise decision-making, thus improving ecosystem management efficiency. However, AI still faces challenges in ES research, such as data quality, model adaptability, and interpretability. Future research should focus on the integration of AI with ecological management practices, improving the interpretability of AI models, and addressing their generalizability issues. Interdisciplinary collaboration will be a key pathway for the advancement of AI in ES research, promoting its applications in global environmental governance and ecological restoration.
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