Food waste reduction and economic savings in times of crisis: The potential of machine learning methods to plan guest attendance in Swedish public catering during the Covid-19 pandemic.

Journal: Socio-economic planning sciences
Published Date:

Abstract

Food waste is a significant problem within public catering establishments in any normal situation. During spring 2020 the Covid-19 pandemic placed the public catering system under greater pressure, revealing weaknesses within the system and generation of food waste due to rapidly changing consumption patterns. In times of crisis, it is especially important to conserve resources and allocate existing resources to areas where they can be of most use, but this poses significant challenges. This study evaluated the potential of a forecasting model to predict guest attendance during the start and throughout the pandemic. This was done by collecting data on guest attendance in Swedish school and preschool catering establishments before and during the pandemic, and using a machine learning approach to predict future guest attendance based on historical data. Comparison of various learning methods revealed that random forest produced more accurate forecasts than a simple artificial neural network, with conditional mean absolute prediction error of 0.15 for the trained dataset. Economic savings were obtained by forecasting compared with a no-plan scenario, supporting selection of the random forest approach for effective forecasting of meal planning. Overall, the results obtained using forecasting models for meal planning in times of crisis confirmed their usefulness. Continuous use can improve estimates for the test period, due to the agile and flexible nature of these models. This is particularly important when guest attendance is unpredictable, so that production planning can be optimized to reduce food waste and contribute to a more sustainable and resilient food system.

Authors

  • Christopher Malefors
    Department of Energy and Technology, Swedish University of Agricultural Science, Box 7032, 75007, Uppsala, Sweden.
  • Luca Secondi
    Department for Innovation in Biological, Agro-Food and Forest Systems (DIBAF), University of Tuscia, Via S.Camillo De Lellis, Snc, Viterbo (Vt), 01100, Italy.
  • Stefano Marchetti
    Department of Economics and Management, University of Pisa, Via Ridolfi 10, Pisa, 56124, Italy.
  • Mattias Eriksson
    Department of Energy and Technology, Swedish University of Agricultural Science, Box 7032, 75007, Uppsala, Sweden.

Keywords

No keywords available for this article.