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首页> 外文期刊>Vector borne and zoonotic diseases >Meteorologically conditioned time-series predictions of West Nile virus vector mosquitoes.
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Meteorologically conditioned time-series predictions of West Nile virus vector mosquitoes.

机译:西尼罗河病毒媒介蚊的气象条件时间序列预测。

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An empirical model to forecast West Nile virus mosquito vector populations is developed using time series analysis techniques. Specifically, multivariate seasonal autoregressive integrated moving average (SARIMA) models were developed for Aedes vexans and the combined group of Culex pipiens and Culex restuans in Erie County, New York. Weekly mosquito collections data were obtained for the four mosquito seasons from 2002 to 2005 from the Erie County Department of Health, Vector and Pest Control Program. Climate variables were tested for significance with cross-correlation analysis. Minimum temperature (T(min)), maximum temperature (T(max)), average temperature (T(ave)), precipitation (P), relative humidity (R(H)), and evapotranspiration (E(T)) were acquired from the Northeast Regional Climate Center (NRCC) at Cornell University. Weekly averages or sums of climate variables were calculated from the daily data. Other climate indexes were calculated and were tested for significance with the mosquito population data, including cooling degree days base 60 degrees (C(DD_60)), cooling degree days base 63 (C(DD_63)), cooling degree days base 65 (C(DD_65)), a ponding index (I(P)), and an interactive C(DD_65)-precipitation variable (C(DD_65) x P(week_4)). Ae. vexans were adequately modeled with a (2,1,1)(1,1,0)(52) SARIMA model. The combined group of Culex pipiens-restuans were modeled with a (0,1,1)(1,1,0)(52) SARIMA model. The most significant meteorological variables for forecasting Aedes vexans abundance was the interactive C(DD_65) x P(week_4) variable at a lag of two weeks, E(T) x E(T) at a lag of five weeks, and C(DD_65) x C(DD_65) at a lag of seven weeks. The most significant predictive variables for the grouped Culex pipiens-restuans were C(DD_63) x C(DD_63) at a lag of zero weeks, C(DD_63) at a lag of eight weeks, and the cumulative maximum ponding index (I(Pcum)) at a lag of zero weeks.
机译:使用时间序列分析技术,建立了预测西尼罗河病毒蚊媒数量的经验模型。具体而言,针对纽约伊利县的伊蚊和库蚊(Pilexens)和库蚊(Culex restuans)的组合群开发了多元季节自回归综合移动平均值(SARIMA)模型。从伊利县卫生,媒介和害虫控制计划获得了2002年至2005年这四个蚊季的每周蚊子收集数据。使用互相关分析测试了气候变量的重要性。最低温度(T(min)),最高温度(T(max)),平均温度(T(ave)),降水量(P),相对湿度(R(H))和蒸散量(E(T))为从康奈尔大学的东北地区气候中心(NRCC)获得。从每日数据中计算出每周的气候变量平均值或总和。计算了其他气候指数并通过蚊子种群数据进行了显着性检验,包括凉爽天数以60度为基准(C(DD_60)),凉爽天数以63为基准(C(DD_63)),凉爽天数以65天为基准(C( DD_65)),思考指数(I(P))和交互式C(DD_65)降水变量(C(DD_65)x P(week_4))。 e使用(2,1,1)(1,1,0)(52)SARIMA模型对vexans进行了充分建模。用(0,1,1)(1,1,0)(52)SARIMA模型对淡色库蚊(Culex pipiens-restuans)的组合组进行建模。预测埃及伊蚊数量的最重要的气象变量是在两周的滞后中的交互式C(DD_65)x P(week_4)变量,在五周的滞后中的E(T)x E(T)和C(DD_65 )x C(DD_65),间隔为七个星期。分组的库蚊(Pilexens-restuans)的最重要的预测变量是零周后C(DD_63)x C(DD_63),八周后C(DD_63)和累积最大积水指数(I )),为零周。

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