首页> 外文期刊>Journal of environmental biology >Predicting the potential geographic distribution of cotton mealybug Phenacoccus solenopsis in India based on MAXENT ecological niche Model
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Predicting the potential geographic distribution of cotton mealybug Phenacoccus solenopsis in India based on MAXENT ecological niche Model

机译:基于MAXENT生态位模型预测印度棉粉虱的潜在地理分布。

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摘要

Mealybug, Phenacoccus solenopsis Tinsley has recently emerged as a serious insect pest of cotton in India. This study demonstrates the use of Maxent algorithm for modeling the potential geographic distribution of P. solenopsis in India with presence-only data. Predictions were made based on the analysis of the relationship between 111 occurrence records for P. solenopsis and the corresponding current and future climate data defined on the study area. The climate data from worldclim database for current (1950-2000) and future (SRES A2 emission scenario for 2050) conditions were used. DIVA-GIS, an open source software for conducting spatial analysis was used for mapping the predictions from Maxent. The algorithm provided reasonable estimates of the species range indicating better discrimination of suitable and unsuitable areas for its occurrence in India under both present and future climatic conditions. The fit for the model as measured by AUC was high, with value of 0.930 for the training data and 0.895 for the test data, indicating the high level of discriminatory power for the Maxent. A Jackknife test for variable importance indicated that mean temperature of coldest quarter with highest gain value was the most important environmental variable determining the potential geographic distribution of P. solenopsis. The approaches used for delineating the ecological niche and prediction of potential geographic distribution are described briefly. Possible applications and limitations of the present modeling approach in future research and as a decision making tool in integrated pest management are discussed.
机译:Mealybug,鸡肺炎单胞菌Tinsley最近在印度成为一种严重的棉花虫害。这项研究证明了使用Maxent算法通过仅存在数据对印度斑节对虾的潜在地理分布进行建模。基于对111个鸡冠锈病发生记录与研究区域所定义的相应当前和未来气候数据之间的关系的分析,做出了预测。使用来自worldclim数据库的当前(1950-2000年)和未来(2050年SRES A2排放情景)状况的气候数据。 DIVA-GIS是用于进行空间分析的开源软件,用于映射Maxent的预测。该算法提供了对物种范围的合理估计,表明在当前和将来的气候条件下,该物种在印度的出现区都可以更好地区分。通过AUC测量的模型拟合度很高,训练数据的拟合度为0.930,测试数据的拟合度为0.895,这表明Maxent的鉴别力很高。对变量重要性的Jackknife检验表明,具有最高增益值的最冷季度的平均温度是确定茄果假单胞菌潜在地理分布的最重要的环境变量。简要描述了用于描述生态位和预测潜在地理分布的方法。讨论了当前建模方法在未来研究中以及作为病虫害综合治理的决策工具的可能应用和局限性。

著录项

  • 来源
    《Journal of environmental biology》 |2014年第5期|973-982|共10页
  • 作者单位

    National Institute of Abiotic Stress Management (Indian Council of Agricultural Research), Malegaon, Baramati, Pune-413 115, India;

    National Institute of Abiotic Stress Management (Indian Council of Agricultural Research), Malegaon, Baramati, Pune-413 115, India;

    National Institute of Abiotic Stress Management (Indian Council of Agricultural Research), Malegaon, Baramati, Pune-413 115, India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    DIVA-GIS; Entropy; Phenacoccus solenopsis; Potential distribution;

    机译:DIVA-GIS;熵;肺炎球菌;电位分布;

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