College of Marine Engineering, Dalian Maritime University, Dalian 116026, China.
School of Geomatics and Prospecting Engineering, Jilin Jianzhu University, Changchun 130018, China.
Sensors (Basel). 2023 Aug 29;23(17):7513. doi: 10.3390/s23177513.
Globally, natural wetlands have suffered severe ecological degradation (vegetation, soil, and biotic community) due to multiple factors. Understanding the spatiotemporal dynamics and driving forces of natural wetlands is the key to natural wetlands' protection and regional restoration. In this study, we first investigated the spatiotemporal evolutionary trends and shifting characteristics of natural wetlands in the Northeast Plain of China from 1990 to 2020. A dataset of driving-force evaluation indicators was constructed with nine indirect (elevation, temperature, road network, etc.) and four direct influencing factors (dryland, paddy field, woodland, grassland). Finally, we built the driving force analysis model of natural wetlands changes to quantitatively refine the contribution of different driving factors for natural wetlands' dynamic change by introducing the sparrow search algorithm (SSA) and extreme gradient boosting algorithm (XGBoost). The results showed that the total area of natural wetlands in the Northeast Plain of China increased by 32% from 1990 to 2020, mainly showing a first decline and then an increasing trend. Combined with the results of transfer intensity, we found that the substantial turn-out phenomenon of natural wetlands occurred in 2000-2005 and was mainly concentrated in the central and eastern parts of the Northeast Plain, while the substantial turn-in phenomenon of 2005-2010 was mainly located in the northeast of the study area. Compared with a traditional regression model, the SSA-XGBoost model not only weakened the multicollinearity of each driver but also significantly improved the generalization ability and interpretability of the model. The coefficient of determination () of the SSA-XGBoost model exceeded 0.6 in both the natural wetland decline and rise cycles, which could effectively quantify the contribution of each driving factor. From the results of the model calculations, agricultural activities consisting of dryland and paddy fields during the entire cycle of natural wetland change were the main driving factors, with relative contributions of 18.59% and 15.40%, respectively. Both meteorological (temperature, precipitation) and topographic factors (elevation, slope) had a driving role in the spatiotemporal variation of natural wetlands. The gross domestic product (GDP) had the lowest contribution to natural wetlands' variation. This study provides a new method of quantitative analysis based on machine learning theory for determining the causes of natural wetland changes; it can be applied to large spatial scale areas, which is essential for a rapid monitoring of natural wetlands' resources and an accurate decision-making on the ecological environment's security.
全球范围内,由于多种因素的影响,自然湿地遭受了严重的生态退化(植被、土壤和生物群落)。了解自然湿地的时空动态和驱动因素是保护和区域恢复自然湿地的关键。本研究首先调查了 1990 年至 2020 年中国东北平原自然湿地的时空演变趋势和转移特征。构建了一个由 9 个间接(海拔、温度、道路网络等)和 4 个直接影响因素(旱地、水田、林地、草地)组成的驱动力评价指标数据集。最后,我们建立了自然湿地变化的驱动力分析模型,通过引入麻雀搜索算法(SSA)和极端梯度增强算法(XGBoost),定量细化不同驱动因素对自然湿地动态变化的贡献。结果表明,1990 年至 2020 年中国东北平原自然湿地总面积增加了 32%,主要呈先下降后上升的趋势。结合转移强度的结果,我们发现自然湿地的实质性转变现象出现在 2000-2005 年,主要集中在东北平原中部和东部,而 2005-2010 年的实质性回归现象主要发生在研究区的东北部。与传统回归模型相比,SSA-XGBoost 模型不仅削弱了每个驱动因素之间的多重共线性,而且显著提高了模型的泛化能力和可解释性。SSA-XGBoost 模型在自然湿地下降和上升周期的决定系数(R2)均超过 0.6,能够有效量化每个驱动因素的贡献。从模型计算结果来看,自然湿地变化整个周期内旱地和水田组成的农业活动是主要驱动因素,相对贡献率分别为 18.59%和 15.40%。气象(温度、降水)和地形因素(海拔、坡度)对自然湿地的时空变化均有驱动作用。国内生产总值(GDP)对自然湿地变化的贡献最低。本研究为基于机器学习理论的自然湿地变化原因的定量分析提供了一种新方法,可应用于大空间尺度,这对于快速监测自然湿地资源和准确决策生态环境安全至关重要。