Abstract

Mapping and monitoring the process of pre-consumer food waste generation in the foodservice sector is needed to fully understand food waste, identify hotspots, and strengthen the evidence-base in this sector of the food supply chain. The purpose of this study was to validate a tool for separation and quantifying pre-consumer food waste in a quick service restaurant (QSR) setting, and to map the food waste generation process using statistical process control methodology. This included consideration of food waste categories and edible versus inedible waste. The study also explored key foodservice and menu practices which may impact food waste production. Food waste audits were undertaken in two food outlets (FOs) in an Australian university campus over a two-week operating period for each outlet using a direct weighing method. Foodservice operation and menu practices occurring in the outlets during the audit period were also recorded. These observations validated practices reported by the owner-manager of the FOs during interviews. The amount of waste collected separately from each outlet was analysed using statistical process control methodology. While each FO was treated as a separate case study, the same methodology was applied to each, allowing some comparison between outlets. Despite differences in foodservice style and menus, the average daily pre-consumer food waste produced from all food waste categories was approximately 25 kg for both outlets, with about 60% from inedible waste. This equated to approximately 5.5–6.1 kg of pre-consumer waste per full-time-equivalent employee (FTE) per day. Used coffee grounds was the largest single contributor of total pre-consumer waste for both FOs. Both FOs demonstrated compliance with Australian best practice in foodservice operations and menu design. The study concludes that the method used to separate pre-consumer food waste into different categories and quantify this waste was a practical tool for these QSRs and allowed researchers to validate both the separation process and the amount of waste collected. Analysis of data using statistical process control allowed differentiation between common and special cause of variations. These findings can help inform processes which generate food waste in these types of foodservice settings and assist with the development of food waste reduction initiatives.

Full Text
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