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首页> 外文期刊>Weed Science >Native and Exotic Distributions of Siamweed (Chromolaena odorata) Modeled Using the Genetic Algorithm for Rule-Set Production
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Native and Exotic Distributions of Siamweed (Chromolaena odorata) Modeled Using the Genetic Algorithm for Rule-Set Production

机译:使用遗传算法对规则集生产进行建模的暹罗(Chromolaena odorata)的自然和外来分布

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摘要

Siamweed is an asteraceous shrub native to the Neotropics that ranks among the world's most widespread and troublesome invasive species. It was introduced in several regions of Africa, Southeast Asia, and the Pacific Islands, where it severely infests natural habitats and plantation crops. Although extensive data document the weed's abundance and distribution throughout the invaded continents, the details of its current range are not fully known, especially within its native region. In this study, we used point-occurrence data and digital maps summarizing relevant environmental parameters to generate predictions for the species' geographic distributional potential—specifically, we modeled the native range of siamweed in the Neotropics using the genetic algorithm for rule-set prediction, an evolutionary computing approach. The native range occurrence data set contained 239 published and herbarium records. Models were trained on a random subset of half the points and tested using the other half. The rule sets of the native-range models were projected onto the invaded continents to predict the weed's potential for invasion, blind to its known occurrences in such regions. Native-range models predicted a wide potential distribution of siamweed throughout tropical America, from southern United States to northern Argentina and southern Brazil. The weed's occurrence has been confirmed on the northern Pacific coast, in southeast Brazil, and in other South American areas, where it was supposed to be absent. Independent model projections to Africa, Asia, and Oceania are supported by known occurrence records. Four regions are predicted to be susceptible to siamweed spread: (1) Central Africa, currently being invaded from Western Africa; (2) Infestations spreading northward from South Africa, which have already reached Swaziland and Mozambique and may extend to East Africa and Madagascar; and (3) northern New Zealand and (4) Australia, which are at risk from uncontrolled infestations on several western Pacific islands.
机译:暹罗菊是新热带地区的一种菊科灌木,是世界上最广泛和最麻烦的入侵物种之一。它被引入非洲,东南亚和太平洋岛屿等多个地区,严重侵害自然栖息地和种植作物。尽管大量数据记录了杂草在整个被入侵大陆的丰富度和分布,但其当前范围的详细信息尚不完全清楚,尤其是在其本国地区。在这项研究中,我们使用了点发生数据和数字地图,总结了相关的环境参数,以预测物种的地理分布潜力,具体而言,我们使用遗传算法对新热带地区的暹罗自然范围进行了建模,以进行规则集预测,进化计算方法。原生范围发生数据集包含239个已发布和植物标本室记录。在一半分数的随机子集上训练模型,并使用另一半进行测试。将本机范围模型的规则集投影到被入侵的大陆上,以预测杂草的入侵潜力,而忽略了杂草在此类地区的已知事件。本地范围模型预测,从美国南部到阿根廷北部和巴西南部,整个热带美洲的暹罗分布潜力很大。杂草的发生已在北太平洋沿岸,巴西东南部以及本应不存在的其他南美地区得到确认。对非洲,亚洲和大洋洲的独立模型预测得到已知事件记录的支持。预计有四个地区容易发生无性繁殖:(1)中部非洲,目前正从西部非洲入侵; (2)从南非向北蔓延的侵染,已经到达斯威士兰和莫桑比克,并可能扩展到东非和马达加斯加; (3)新西兰北部和(4)澳大利亚,它们受到西太平洋几个岛屿不受控制的侵扰的威胁。

著录项

  • 来源
    《Weed Science》 |2007年第1期|p.41-48|共8页
  • 作者单位

    * First author: Centro de Formação e Tecnologias da Floresta (CEFLORA), Instituto de Desenvolvimento da Educação Profissional, Avenida 25 de Agosto 2508, CEP 69880-000, Cruzeiro do Sul, AC, Brazil;

    second author: Conservation International do Brasil, SAUS, Qd 3, Lt 2, Bl C, Ed. Business Point, 7° andar, Salas 713, 70070-934, Brasília, DF, Brasil, and Programa de Pós-Graduação em Ecologia de Agroecossistemas, ESALQ/USP, 13418-900, Piracicaba, SP, Brazil;

    third and fourth authors: Natural History Museum and Biodiversity Research Center, University of Kansas, 12 Lawrence, KS 66045;

    fifth author: Laboratório de Interações Inseto-Planta (LIIP), Departamento de Zoologia, Universidade Estadual de Campinas, CP 6109, CEP 13083-970, Campinas, SP, Brazil. Corresponding author's E-mail: thomasl@unicamp.br;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Geographic range, invasive species, predictive modeling;

    机译:地理范围;入侵物种;预测模型;

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