scholarly journals Development of a transboundary model of livestock disease in Europe

Author(s):  
Richard Bradhurst ◽  
Graeme Garner ◽  
Márk Hóvári ◽  
Maria Puente ◽  
Koen Mintiens ◽  
...  
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2015 ◽  
Vol 62 (1) ◽  
pp. 51-64 ◽  
Author(s):  
Catherine E. Cowie ◽  
Michael R. Hutchings ◽  
Jose Angel Barasona ◽  
Christian Gortázar ◽  
Joaquín Vicente ◽  
...  


Author(s):  
Judith R. Mourant ◽  
Paul W. Fenimore ◽  
Carrie A. Manore ◽  
Benjamin H. McMahon


2021 ◽  
Vol 26 (4) ◽  
pp. 9-18
Author(s):  
Zainab A. Makawi

  Abstract The research was performed in order to investigate the prevalence of  Eimeria spp in buffalo. Coccidiosis, is a common livestock disease include water buffaloes and nothing is known about the most pathogenic species of Eimeria. Since the highest prevalence of oocyst shedding and incidence of disease occurs in buffalo calves less than one year of age. The omnipresent occurrence and negative effects of the infection on health and buffalo growth output are taken into account. Therefore, both farmers and veterinarians should pay greater attention to infections with Eimeria spp. And there is little analysis of data reported in Iraq and the world regarding Eimeria infection in river buffalo spp.



Author(s):  
Mitchell Welch ◽  
Paul Kwan ◽  
A.S.M. Sajeev ◽  
Graeme Garner

Agent-based modelling is becoming a widely used approach for simulating complex phenomena. By making use of emergent behaviour, agent based models can simulate systems right down to the most minute interactions that affect a system’s behaviour. In order to capture the level of detail desired by users, many agent based models now contain hundreds of thousands and even millions of interacting agents. The scale of these models makes them computationally expensive to operate in terms of memory and CPU time, limiting their practicality and use. This chapter details the techniques for applying Dynamic Hierarchical Agent Compression to agent based modelling systems, with the aim of reducing the amount of memory and number of CPU cycles required to manage a set of agents within a model. The scheme outlined extracts the state data stored within a model’s agents and takes advantage of redundancy in this data to reduce the memory required to represent this information. The techniques show how a hierarchical data structure can be used to achieve compression of this data and the techniques for implementing this type of structure within an existing modelling system. The chapter includes a case study that outlines the practical considerations related to the application of this scheme to Australia’s National Model for Emerging Livestock Disease Threats that is currently being developed.



2020 ◽  
Vol 7 ◽  
Author(s):  
Paul R. Bessell ◽  
Harriet K. Auty ◽  
Helen Roberts ◽  
Iain J. McKendrick ◽  
B. Mark de C. Bronsvoort ◽  
...  
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