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22 February 2018 Photo Supplied
Tennis team countrys fourth-best
The Kovsies first tennis team is from left Cornelius Rall, Lienke de Kock, Reze Opperman and Arne Nel (captain).

The first tennis team of the University of the Free State (UFS) obtained a respectable fourth place at the Top Guns Club event that finished at Sun City on Monday 19 February 2018.

It was the first time the tournament was held where all the provincial tennis champs competed for the honours as national club champions.

The Kovsie team was represented by Cornelius Rall, Lienke de Kock, Reze Opperman and Arne Nel. Arne a veteran who has played for the first team for six years, led the team. They played as men’s doubles, women’s doubles and mixed doubles with optional rotation at the end of each set.

The round robin matches consisted out of three full short sets. Thus, the first team to four games, by a margin of two would win the set.

Student crown to defend
The Free State students topped their pool with three wins from three encounters.

Victories came against Lapésa Tennis Club of the Northern Cape, Wesbank from Eden and Cradock from Eastern Province, all by 3-0.

It set up an encounter with Camps Bay from the Western Cape in the semi-finals which the Kovsies lost by 1-2.

In the play-off for third and fourth place the students came unstuck against Marks Park Tennis Club from Gauteng Central.

The Kovsies will next be in action from 13 to 16 April 2018 again in Sun City in a university challenge tournament which they have won for the previous two years.

They boast an outstanding record in student competitions, having won the University Sport South Africa (Ussa) the last eight years consecutively.

News Archive

Researcher works on finding practical solutions to plant diseases for farmers
2017-10-03

 Description: Lisa read more Tags: Plant disease, Lisa Ann Rothman, Department of Plant Sciences, 3 Minute Thesis,  

Lisa Ann Rothman, researcher in the Department of
Plant Sciences.
Photo: Supplied

 


Plant disease epidemics have wreaked havoc for many centuries. Notable examples are the devastating Great Famine in Ireland and the Witches of Salem. 

Plant diseases form, due to a reaction to suitable environments, when a susceptible host and viable disease causal organism are present. If the interactions between these three factors are monitored over space and time the outcome has the ability to form a “simplification of reality”. This is more formally known as a plant disease model. Lisa Ann Rothman, a researcher in the Department of Plant Sciences at the University of the Free State (UFS) participated in the Three Minute Thesis competition in which she presented on Using mathematical models to predict plant disease. 

Forecast models provide promise fighting plant diseases
The aim of Lisa’s study is to identify weather and other driving variables that interact with critical host growth stages and pathogens to favour disease incidence and severity, for future development of risk forecasting models. Lisa used the disease, sorghum grain mold, caused by colonisation of Fusarium graminearum, and concomitant mycotoxin production to illustrate the modelling process. 

She said: “Internationally, forecasting models for many plant diseases exist and are applied commercially for important agricultural crops. The application of these models in a South African context has been limited, but provides promise for effective disease intervention technologies.

Contributing to the betterment of society
“My BSc Agric (Plant Pathology) undergraduate degree was completed in combination with Agrometeorology, agricultural weather science. I knew that I wanted to combine my love for weather science with my primary interest, Plant Pathology. 
“My research is built on the statement of Lord Kelvin: ‘To measure is to know and if you cannot measure it, you cannot improve it’. Measuring the changes in plant disease epidemics allows for these models to be developed and ultimately provide practical solutions for our farmers. Plant disease prediction models have the potential ability to reduce the risk for famers, allowing the timing of fungicide applications to be optimised, thus protecting their yields and ultimately their livelihoods. I am continuing my studies in agriculture in the hope of contributing to the betterment of society.” 

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