Determining spatial units for modeling regional nonnative invasive plant species spread in the southern US forestlands: using the state of Alabama as an example.

Forestry research Pub Date : 2024-04-11 eCollection Date: 2024-01-01 DOI:10.48130/forres-0024-0010
Sunil Nepal, Martin A Spetich, Zhaofei Fan
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Abstract

Nonnative invasive plant species (NNIPS) cause significant damage to the native forest ecosystems in the southern United States forestlands, such as habitat degradation, ecological instability, and biodiversity loss. Taking the state of Alabama as an example, we used more than 5,000 permanent United States Department of Agriculture-Forest Service's Forest Inventory and Analysis (FIA) plots measured between 2001 and 2019 over three measurement cycles to test the suitable modeling unit for quantifying invasion patterns and associated factors for regional NNIPS monitoring and management. NNIPS heavily infest Alabama's forestlands, and forestlands plagued with at least one NNIPS have increased over time: 41.1%, 50.8%, and 54.8% during the past three measurements. Lonicera japonica (Thunb.) was the most abundant NNIPS in Alabama, with at least 26% of its forested lands infested. The FIA data were aggregated with multiple spatial units: five levels of hydrological units, three levels of ecological units, and a county level. Invasion indices were calculated for all spatial units based on NNIPS' presence/absence and average cover in each plot. The best modeling unit was identified based on Moran's test, with the county-level modeling unit providing the best Moran's I value over all measurement periods. Influencing factors of invasion were evaluated based on spatial lag models. Our models show that the invasion index decreased with increases in public forest areas in a county. In contrast, the human population density of neighboring counties positively influenced the invasion index.

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确定美国南部林地区域非外来入侵植物物种传播模型的空间单位:以阿拉巴马州为例。
外来入侵植物物种(NNIPS)对美国南部林地的原生森林生态系统造成了严重破坏,如栖息地退化、生态不稳定和生物多样性丧失。以阿拉巴马州为例,我们利用美国农业部森林服务局在 2001 年至 2019 年三个测量周期内测量的 5000 多块永久性森林资源调查与分析(FIA)地块,测试了用于量化入侵模式和相关因素的合适建模单元,以便进行区域 NNIPS 监测和管理。NNIPS 严重侵扰阿拉巴马州的林地,至少有一处林地受到 NNIPS 的困扰,且随着时间的推移而增加:在过去的三次测量中,分别为 41.1%、50.8% 和 54.8%。忍冬(Lonicera japonica (Thunb.))是阿拉巴马州最多的 NNIPS,至少有 26% 的林地受到其侵扰。FIA 数据由多个空间单位汇总而成:五级水文单位、三级生态单位和一个县级单位。根据 NNIPS 的存在/不存在以及每个地块的平均覆盖率,计算出所有空间单位的入侵指数。根据莫兰检验确定了最佳建模单元,其中县级建模单元在所有测量期间都提供了最佳莫兰 I 值。根据空间滞后模型评估了入侵的影响因素。我们的模型显示,入侵指数随着县级公共森林面积的增加而降低。相比之下,邻县的人口密度对入侵指数有积极影响。
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