National Engineering Laboratory for Resource Development of Endangered Crude Drugs in Northwest China, Shaanxi Normal University, Xi'an 710119, China; School of Geography and Tourism, Shaanxi Normal University, Xi'an 710062, China.
School of Geography and Tourism, Shaanxi Normal University, Xi'an 710062, China.
Sci Total Environ. 2021 Feb 20;756:143841. doi: 10.1016/j.scitotenv.2020.143841. Epub 2020 Nov 20.
Ageratina adenophora, Eupatorium odoratum, and Mikania micrantha are three highly destructive invasive plants of Compositae in China. Through the screening of SDMs, random forest (RF), gradient boosting model (GBM), artificial neural network (ANN), and flexible discriminant analysis (FDA) with TSS greater than 0.8 are selected to construct a high-precision ensemble model (EM) as the prediction model. We use specimen sites and environmental variables containing climate, soil, terrain, and human activities to simulate and predict the invasion trend of three invasive weeds in China in current, the 2050s, and the 2070s. Results indicate that the highly invasive risk area of three exotic plants is mostly distributed along the river in the provinces south of 30° N. In the future scenario, the three exotic plants obviously invade northwards Yunnan, Sichuan, Guizhou, Jiangxi and Fujian. Climate is the most important variable that affects the spread of three kinds of alien plant invasions. Temperature and precipitation variables have a similar effect on A. adenophora and E. odoratum, while M. micrantha is more sensitive to temperature. It has been reported that Ipomoea batatas and Vitex negundo can prevent the invasion of three invasive plants. Hence, we also simulate the suitable planting areas for I. batatas and V. negundo. The results show that I. batatas and V. negundo are suitable to be planted in the areas where the three weeds show invasion tendency. In the paper, predicting invasion trends of exotic plants and simulating the planting suitability of crops that can block invasion, to provide a practical significance reference and suggestion for the management, prevention, and control of the invasion of exotic plants in China.
紫茎泽兰、小飞蓬和微甘菊是中国菊科三种极具破坏性的入侵植物。通过 SDMs 的筛选,选择随机森林(RF)、梯度提升模型(GBM)、人工神经网络(ANN)和具有 TSS 大于 0.8 的灵活判别分析(FDA)构建高精度集成模型(EM)作为预测模型。利用包含气候、土壤、地形和人类活动的标本地点和环境变量,模拟和预测了三种外来杂草在中国当前、2050 年和 2070 年的入侵趋势。结果表明,三种外来植物的高入侵风险区主要分布在 30°N 以南的河流沿线省份。在未来情景下,三种外来植物明显向北入侵云南、四川、贵州、江西和福建。气候是影响三种外来植物入侵传播的最重要变量。温度和降水变量对 A. adenophora 和 E. odoratum 有相似的影响,而 M. micrantha 对温度更敏感。据报道,甘薯和黄荆可以阻止三种入侵植物的入侵。因此,我们还模拟了甘薯和黄荆的适宜种植区。结果表明,甘薯和黄荆适宜在三种杂草表现出入侵趋势的地区种植。本文预测了外来植物的入侵趋势,并模拟了可以阻止入侵的作物的适宜种植区,为中国外来植物入侵的管理、预防和控制提供了实际意义上的参考和建议。