Predicting time cattle spend in streams to quantify direct deposition of manure

被引:0
|
作者
机构
[1] Brown, Shannon B.
[2] Ikenberry, Charles D.
[3] Soupir, Michelle L.
[4] Bisinger, Justin
[5] Russell, Jim R.
来源
Soupir, M.L. (msoupir@iastate.edu) | 1600年 / American Society of Agricultural and Biological Engineers卷 / 30期
关键词
Forecasting - Regression analysis - Rivers - Escherichia coli - Fertilizers - Manures - Deposition - Estimation;
D O I
10.13031/aea.30.10393
中图分类号
学科分类号
摘要
Current methods to predict bacterial loads into streams resulting from direct deposition of manure by livestock do not consider factors that influence livestock behavior. Data from three studies that monitored spatial behavior of cattle through GPS were used to develop a new method with increased temporal resolution and consideration of environmental factors to predict the time that cattle spend in streams. Information on relative location of the cattle to the pasture stream was used to calculate the number of hours a cow spent in the stream, and from that the load of bacteria deposited directlyinto the stream. Ultimately, four empirical equations were developed based on the pasturegeometryandshaded area, andeach varied as a function of the daily minimum temperature. The models were applied to the Duck Creek watershed, Iowa,(at USGS Station 05422560) to demonstrate the variation in temporal resolution when compared to standard monthly load allocation methods. Three of four models estimated fewer days of E. coli load exceeding the water quality standard than days predicted using conventional methods. While the models do not capture the entire range of cattle spatial behavior,results suggest that the models can be used as a more detailed means of calculating bacterial loads. Daily load estimations averaged over a month can be used to populate current predictive tools as an alternate to the less representative estimation method on which the current modeling tools rely. ©2014 American Society of Agricultural and Biological Engineers.
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