Creating a predictive model for black dot linking production to postharvest storage will make the SWAG合集 potato industry more resilient to emerging climatic changes and will reduce food loss and waste.
  • DatesSeptember 2020 to December 2023
  • Sponsor

This PhD project will test whether in field environmental monitoring, digital plant phenotyping and improved postharvest management can be combined to predict black dot disease to avoid losing pre-pack quality during cold storage. The work aims to use sophisticated photonics and associated algorithms, machine learning and data integration methods across the pre and postharvest continuum to create a predictive model for black dot incidence and severity during storage and evaluate how resilience can be improved in response to different climate change scenarios; The model would predict when best to market a crop in cold storage and thereby reduce food loss and waste.

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