Lewellen Ruth H, Vessey Stephen H
Department of Biological Sciences, Bowling Green State University, Bowling Green, OH 43403, USA Fax: (419) 372-2024; e-mail:
Oecologia. 1998 Jan;113(2):210-218. doi: 10.1007/s004420050370.
Most previous work in population ecology has modeled density-dependent effects in isolation. In this paper, we concurrently modeled the effect of density-dependent and density-independent factors on the rate of population change (R ) in Peromyscus leucopus (white-footed mouse), using a Ricker equation expanded to include weather and seasonality. From 1973 to 1996, we live-trapped P. leucopus monthly in a 2-ha Ohio woodlot. Population peaks (July to August) varied from 27 to 181 individuals, while troughs (December to March) varied from 4 to 46 individuals. We used time-delayed densities to act as surrogates for unobserved density-dependent factors, and principal components to represent 12 highly collinear weather variables. We identified time-delayed correlations by season between R and the independent variables (i.e., previous densities and weather principal components) using transfer function analysis. In summer, when P. leucopus densities were above the seasonal mean for the month, R was lower in the following 2 months; however, in winter, R was greater in the first but lower in the second succeeding month. R also correlated positively in autumn with contemporaneous precipitation, and was negatively correlated with extreme' weather in summer with 2- and 3-month lags and in winter with a 3-month lag. We hypothesize that precipitation affected juveniles by influencing food resources and that extreme' weather affected breeding. Our model explained 65% of the variability in R , and density-dependent and density-independent factors explained an equal percentage of that variability. This model created good forecasts of population density up to 12 months in the future.
以往大多数种群生态学研究都孤立地模拟密度依赖效应。在本文中,我们使用一个扩展后纳入天气和季节性因素的里克方程,同时模拟了密度依赖和密度独立因素对白足鼠种群变化率((R))的影响。1973年至1996年期间,我们每月在俄亥俄州一块2公顷的林地中对白足鼠进行活体诱捕。种群高峰期(7月至8月)个体数量在27至181只之间变化,而低谷期(12月至3月)个体数量在4至46只之间变化。我们使用时间延迟密度作为未观测到的密度依赖因素的替代指标,并使用主成分来代表12个高度共线的天气变量。我们通过传递函数分析确定了(R)与自变量(即先前的密度和天气主成分)之间按季节的时间延迟相关性。在夏季,当白足鼠密度高于当月季节性平均值时,接下来的两个月里(R)较低;然而,在冬季,第一个月(R)较高,而第二个后续月份(R)较低。(R)在秋季也与同期降水量呈正相关,并且在夏季与滞后2个月和3个月的“极端”天气呈负相关,在冬季与滞后3个月的“极端”天气呈负相关。我们推测降水通过影响食物资源来影响幼体,而“极端”天气影响繁殖。我们的模型解释了(R)中65%的变异性,密度依赖和密度独立因素对该变异性的解释比例相同。该模型能够很好地预测未来长达12个月的种群密度。