利用机器学习技术洞察鱼类与人为压力的关系:Castilla-La Mancha(西班牙)的案例

Carlotta Valerio, Graciela Gómez Nicola, Rocío Aránzazu Baquero Noriega, A. Garrido, L. De Stefano
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摘要

自1970年以来,全球淡水物种数量减少了83%,人类活动被认为是生态系统退化的主要驱动因素。将生态响应与系统中多种人为压力因素联系起来,对于有效设计恢复河流生态系统的政策措施至关重要。然而,考虑到生态系统响应的非线性和需要考虑多种因素的影响,获得压力源与生态状况之间的定量联系仍然具有挑战性。本研究应用机器学习技术来探索Castilla-La Mancha流域的人为压力与鱼类群落组成之间的关系,该地区覆盖近79500公里²位于西班牙中部。在过去的二十年里,该地区的本地鱼类物种的保护状况出现了惊人的下降。分析的起点是一个10x10公里的网格,每个网格定义了2001年前后几种鱼类的存在或缺失。该数据库用于描述鱼类物种丰富度的几个指标随时间的演变,包括物种起源(本地或外来)、物种特征(如污染耐受性)和栖息地偏好。使用随机森林和梯度增强回归树算法将结果度量与描述河流中人为压力的压力源变量(如城市废水排放、土地利用覆盖、水文形态退化和河流流量变化)联系起来。该研究为河流中的压力-生态系统关系提供了新的定量见解,并揭示了导致卡斯蒂利亚-拉曼查鱼类丰富度下降的主要因素,这有助于为环境政策举措提供信息。
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Insights into fish-anthropogenic pressures relationships using machine learning techniques: the case of Castilla-La Mancha (Spain)

Since 1970 the number of freshwater species has suffered a decline of 83% worldwide and anthropic activities are considered to be major drivers of ecosystems degradation. Linking the ecological response to the multiple anthropogenic stressors acting in the system is essential to effectively design policy measures to restore riverine ecosystems. However, obtaining quantitative links between stressors and ecological status is still challenging, given the non-linearity of the ecosystem response and the need to consider multiple factors at play. This study applies machine learning techniques to explore the relationships between anthropogenic pressures and the composition of fish communities in the river basins of Castilla-La Mancha, a region covering nearly 79 500 km² in central Spain. During the past two decades, this region has experienced an alarming decline of the conservation status of native fish species. The starting point for the analysis is a 10x10 km grid that defines for each cell the presence or absence of several fish species before and after 2001. This database was used to characterize the evolution of several metrics of fish species richness over time, accounting for the species origin (native or alien), species features (e.g. pollution tolerance) and habitat preferences. Random Forest and Gradient Boosted Regression Trees algorithms were used to relate the resulting metrics to the stressor variables describing the anthropogenic pressures acting in the rivers, such as urban wastewater discharges, land use cover, hydro-morphological degradation and the alteration of the river flow regime. The study provides new, quantitative insights into pressures-ecosystem relationships in rivers and reveals the main factors that lead to the decline of fish richness in Castilla-La Mancha, which could help inform environmental policy initiatives.

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