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23 April 2019 | Story Ruan Bruwer
Wihan Victor
Wihan Victor, opening batsman of the Kovsie cricket team, was the fourth-highest run scorer at the National Club

The first cricket team of the University of the Free State (UFS) ended the National Club Championship in Pretoria in fifth position, officially making them the country’s fifth-best club-cricket team for the 2018/2019 season. 

They secured two wins – over the Madibaz and Impala – in five matches.

The Kovsies, without two of their stars, Marno van Greunen and Sean Whitehead – due to work and study commitments – ended the tournament on a high on Wednesday 17 April 2019. They thumped Impala, the Gauteng representative, by an emphatic nine wickets on the final day.

The winning margin against the Madibaz was six wickets.

The UFS, who did not qualify for last year’s champs, bowled Impala out for 144 in 33 overs. Wizzard Ncedane led a fine bowling display. The medium-pacer claimed 3 for 49. He was well-supported by Siphamandla Mavanda (2/8), Christo van Staden (2/9), and captain AJ van Wyk (2/33). 

Breezy half-centuries from Wihan Victor (53 off 52 balls, 8 fours) and Stephan van Vollenhoven (54 off 40 balls, 7 fours, 1 six) then powered the Knights representatives to victory with more than 30 overs to spare.

Victor, an opening batsman, ended as the UFS top run scorer. He scored 204 runs in five innings at an average of 51.

Only three other batsmen at the tournament scored more runs.

Wizard was the pick of the bowlers. He claimed eight wickets for 132 runs in four innings at an average of 16,5 and a strike rate of 24,5. His eight scalps were the joint second most at the tournament.



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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