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Deep learning: To better understand how human activities affect the value of ecosystem services—A case study of Nanjing

机译:深度学习:更好地了解人类活动如何影响生态系统服务的价值 - 以南京为例

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The value of ecosystem services is affected by increasing human activities. However, the anthropogenic driving mechanisms of ecosystem services are poorly understood. Here, we established a deep learning model to approximate the ecosystem service value (ESV) of Nanjing City using 23 socioeconomic factors. A multi-view analysis was then conducted on feasible impact mechanisms using model disassembly. The results indicated that certain factors had their own significant and independent effects on ESV, such as the proportion of water areas in the land-use structure and the output value of the secondary industry. The proportion of ecological water should be increased as much as possible, whereas the output value of the secondary industry should be reasonably controlled in Nanjing. Other intrinsically related factors were likely to be composited together to affect ESV, such as industrial water consumption and industrial electricity consumption. In Nanjing, simultaneously optimizing socio-economic factors related to city size, resources, and energy use efficiency likely represents an effective management strategy for maintaining and enhancing regional ecological service capabilities. The results of this work suggest that deep learning is an effective method of deepening studies on the prediction of ESV trends and human-driven mechanisms.
机译:生态系统服务的价值受到人类活动增加的影响。然而,生态系统服务的人为驱动机制很差。在这里,我们建立了深入学习模型,以近似使用23个社会经济因素的南京市生态系统服务价值(ESV)。然后使用模型拆卸的可行影响机制对多视图分析进行了多视图分析。结果表明,某些因素对ESV具有自身的重要和独立影响,例如土地使用结构中的水域比例和二级行业的产值。生态水的比例应尽可能增加,而二级行业的产值应在南京合理控制。其他本质相关因素可能会融合在一起,以影响ESV,例如工业用水和工业用电量。在南京,同时优化与城市规模,资源和能源利用效率相关的社会经济因素可能是维持和提高区域生态服务能力的有效管理战略。这项工作的结果表明,深度学习是对预测ESV趋势和人为驱动机制的研究的一种有效方法。

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