Waste Reduction in Fresh Food Supply Chains: An Operations Research Approach

Chapter

Abstract

Sustainability has a high priority for all actors in modern supply chains, and food waste issues attract significant political, market and media consideration. Many retailers have setup programs aimed at tackling it, while the food industry has also launched programs including waste reduction among their main goals. Indeed, food waste is already a crucial theme, and its importance is growing in these years. In the last decade, retailers have achieved relevant progresses in reducing the amount of food wasted in their stores as well as along distribution networks. Nevertheless, there is still room for further improvements: better forecasting, more careful assortment and order decisions, suitable policies promoting products’ freshness, and shelf life management can yield significant waste reductions. Besides, retailers can help to reduce waste along the supply chain through closer collaboration with other upstream actors. This chapter considers methods and models devoted to waste reduction in fresh food supply chain operations to be included in a Decision Support System, and presents a case study on a real supply chain dedicated to fresh and perishable packaged products, involving a set of retailers with both small and medium sized stores located in the Apulia region (Italy). Optimization is a crucial issue in such a context and the main criticalities are related to the uncertainty on future sales. This study proposes an integrated and flexible approach that accounts for the following issues: demand forecasting, order planning and delivery optimization. The aim is to support the decision maker to determine operations plans with respect to waste reduction and other different criteria, such as shortage, freshness and residual stock of products. Results are reported and discussed enlightening both quality of forecasting and its effects on the order planning activity. The results show the potential benefits of the proposed approach to pursue the waste reduction in the distribution and the retailer supply chain and the possible extensions to contribute to the recovery of fresh food surplus.

Keywords

Fresh food supply chain Waste reduction Mathematical modeling Optimization Operations research 

Notes

Acknowledgements

This work was partially supported by the E-CEDI project, funded by Apulia Region under the POR FESR 2007–2013 grant, Asse I, Linea 1.2–Azione 1.2.4.

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Copyright information

© Springer International Publishing AG 2017

Authors and Affiliations

  1. 1.Istituto per le Applicazioni del Calcolo “Mauro Picone”CNRBariItaly
  2. 2.Dipartimento di Ingegneria Elettrica e dell’InformazionePolitecnico di BariBariItaly

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