Probabilistic Model of the Brown Rat Control
Probabilistic Model of the Brown Rat Control
摘要
We represent assessment of the rats control operator's actions, starting from the placement of rat control means (chemical, mechanical and others) in the object territory until the full its elimination and followed by assessment of the probability of rat population recovery. The probability of success is evaluated when using a combination of rat control means. We took into account changes in rat population occurring in different calendar periods of the year. The proposed calculation method can be used in training programs, as well as for the local forecast of releasing objects from rats and rats' re-settling.
参考文献20
-
1S. Hughes, Efficacy of difenacoum bait formulations against semi-wild and wild Rattus rattus from three different global locations, in: W.H. Robinson, D. Bajomi (Eds.), Proceeding of the 6th International Conference on Urban Pests, Budapest, 13-16 July 2, 2008, pp. 297-306.
-
2E. Schmolz, A. Kalle, M. Konecke, Method for efficacy testing of rodent bait stations under laboratory conditions, in: W.H. Robinson, D. Bajomi (Eds.), Proceeding of the 6th International Conference on Urban Pests, Budapest, 13-16 July 2008, pp. 291-296.
-
3E. Schmolz, Influence of bait type and active ingredient on rodenticide palatability and efficacy, in: W.H. Robinson, D. Bajomi (Eds.), Proceeding of the 7th International Conference on Urban Pests (Ouro Pretto, Aug. 07-10, 2011), 2011, pp. 227-232.
-
4V.A. Rylnikov, Controlling the numbers of rodents on the territory of agriculturel comlrxes with the application of rodenticides (on the model of the brown rat, Rattua rattus Berk), Agrochimia N 10 (2007) 76-87. (in Russian).
-
5S. Papini, L.E. Nakagawa, E.E. Narciso, M.I.M. Andrade, Bromadiolone paraffin blocks not-exposed and exposed to the environment, in: W.H. Robinson, A.E.C. Campos (Eds.), Proceeding of the 7th International Conference on Urban Pests (Ouro Pretto, Aug. 07-10, 2011), 2011, pp. 223-226.
-
6V.K. Melkova, Features of habitat of brown rats in multistory apartment houses, Materials on the ecology and methods of limiting the number of brown rat, Part I, Moscow Nauka, 1987, pp. 179-202. (in Russian).
-
7V.A. Rylnikov, Palaearctic synanthropic rodent control, in: W.H. Robinson, A.E.C. Campos (Eds.), Proceeding of the 7th International Conference on Urban Pests (Ouro Pretto, Aug. 07-10, 2011), 2011, pp. 237-244.
-
8N.S. Kraemer, Theory of Probability and Mathematical Statistics: A Textbook for University Students Studying in the Economic Fields, 3rd ed., Revised and Add Moscow, UNITY-DANA, 2007, p. 531. (in Russian).
-
9V.A. Rylnikov, Brown rat/Rattus norvegicus Berk/Ecological principles and approaches to population density control, Moscow, Institute of pest-management, 2010, p. 366. (in Russian).
-
10L.A. Khlyap, A.S. Malikova, Rodents sinanthropus of and limiting their number: Rodents sinanthropus and limiting their number, executive editors, members of the academy Doctor of Biological Sciences, Moscow the Russian Academy of Sciences, 1992, pp. 256-264. (in Russian).
-
1研发动态[J].中国生物工程杂志,2010,30(12):128-128.
-
2基于概率模型的基因芯片数据分析[J].中国科技成果,2011(10):63-63.
-
3Thomas Henkel.专用性芯片实验室的开发[J].实验与分析,2009(5):55-56.
-
4肖建平,丰继华,卢英,单秋甫.基于核小体位置预测的酵母进化印迹研究[J].生物信息学,2013,11(2):150-152. 被引量:3
-
5苏建平,刘季科,George O.Batzli.动物巢区二维正态概率模型的探讨[J].兽类学报,1993,13(1):61-70. 被引量:2
-
6李丽侦,姜麟,钱浩,光文华.基于BP神经网络的压缩空气用能预测模型研究[J].计算机技术与发展,2014,24(1):216-219. 被引量:2
-
7Yi-Yu KUO,Chun-Han SHIH,Ying-Chou LEE,Wei-Tse CHANG,Ta-Jen CHU.Identifying Indicator Species in Habitats Created by Coastal Structures[J].China Ocean Engineering,2010,24(1):117-134. 被引量:1
-
8Network-based method to infer the contributions of proteins to the etiology of drug side effects[J].Frontiers of Electrical and Electronic Engineering in China,2015,10(3):124-134. 被引量:3
-
9孙君,孙永南,李传锋,郭光灿.On Delay of the Delayed Choice Experiment[J].Chinese Physics Letters,2015,32(9):5-8.
-
10Thomaz Correa e Castro da Costa,Andreia Fonseca Silva,Luciana Mara Temponi de Oliveira,Joao Herbert Moreira Viana.Probabilistic Classification of Tree and Shrub Vegetation on Phytogeographic System[J].Journal of Environmental Science and Engineering(B),2015,4(6):315-330.