Determining Root Causes - Why and How to Measure Food Loss and Waste
It is difficult to reduce FLW without understanding what causes it. For example, after performing a waste composition analysis, a restaurant may discover that it is discarding a large amount of tomatoes each week, but the waste data do not tell it why those tomatoes are being discarded. This module describes how to track causes of FLW when the information is not obvious in the quantification method.
Defining Causes and Drivers
There are two layers to identifying the cause of FLW – the immediate reason why something became FLW, and the underlying factor that led to the waste. The FLW Standard uses the terms “causes” and “drivers.” A cause is defined as the proximate or immediate reason for FLW, while a driver is defined as an underlying factor that played a role in creating that reason (FLW Protocol 2016a). Tables 4 and 5 list some possible causes and drivers by stage in the food supply chain.
Table 4. Some Causes of FLW by Stage of the Food Supply Chain
Primary Production | Processing and Manufacturing | Distribution and Wholesale | Retail | Food Service/ Institutions | Household |
---|---|---|---|---|---|
Spillage
Cosmetic or physical damage Damage from pests or animals Not harvested Unable to sell due to quantity or size Unable to reach market |
Spillage
Trimming during processing Rejected from market |
Cosmetic or physical damage
Spoilage Past sell-by date Rejected from market Unable to reach market |
Product recall
Food prepared improperly Food cooked but not eaten Cosmetic damage Spoilage Past sell-by date |
Product recall
Food prepared improperly Food cooked but not eaten Cosmetic damage Spoilage |
Product recall
Food prepared improperly Food cooked but not eaten Cosmetic Spoilage Past sell-by or use-by date |
Source: FLW Protocol 2016a, CEC 2017.
Table 5. Some Drivers of FLW by Stage of the Food Supply Chain
Primary Production | Processing and Manufacturing | Distribution and Wholesale | Retail | Food Service/ Institutions | Household |
---|---|---|---|---|---|
Premature or delayed harvesting
Poor harvesting technique/ inadequate equipment Lack of access to market or processing facilities Price volatility Overproduction Improper storage |
Outdated or inefficient equipment and processes
Stringent product specifications Human or mechanical error resulting in defects |
Excessive centralization of food distribution processes
Lack of effective cold-chain management Stringent product specifications Poor transportation infrastructure Failure in demand forecasting Ineffective packaging or storage conditions |
Regular replenishment of stocks to evoke abundance
Package sizes too large Failure in demand forecasting Too many products offered Lack of system for food donation |
Regular replenishment of buffet or cafeteria to evoke abundance
Portion sizes too large Failure in demand forecasting Too many products offered Lack of system for food donation Improper training of food preparers
|
Overpurchase
Inadequate planning before shopping Lack of cooking knowledge Confusion over date labels Inadequate or improper storage of food Desire for variety, resulting in uneaten leftovers |
Source: FAO 2014, FLW Protocol 2016a, CEC 2017.
If a restaurant discards a large amount of tomatoes, the immediate cause might be that the tomatoes spoiled after sitting unused in the kitchen. The underlying driver may be that the restaurant is incorrectly forecasting the amount of tomatoes it needs each week. Perhaps a previously popular dish that requires tomatoes is not selling as much as anticipated, but the restaurant is continuing to order tomatoes based on prior rather than current demand.
In this example, simply knowing that a large amount of tomatoes was being disposed of was not enough to determine the correct course of action to reduce waste. However, once the tomato FLW was linked to a cause (e.g., spoilage after not being used) and an underlying driver (e.g., failure of demand forecasting), the restaurant is now able to take action to reduce the FLW (e.g., reduce the weekly order for tomatoes or adjust the menu to remove the dish not being ordered).
In more complicated cases, the causes and drivers may not be clear. Meeting with an outside waste-reduction consultant may be beneficial. Numerous firms make detailed sustainability audits of facilities and organizations to address root causes of inefficiencies and unsustainable practices.
Incorporating Causes into FLW Quantification Methods
The methods described in this guide differ in how well they track the causes and drivers of FLW. Table 6 provides a list of methods, whether they can track causes and how to best do so.
Table 6. Tracking Causes by Method
Method | Can it track causes? | How to track causes with the method |
---|---|---|
Direct weighing | Yes | Although direct weighing provides only numerical data, staff can be instructed to log causes while weighing the FLW. This will provide an additional data point about how the FLW occurred. |
Waste composition analysis | No | A waste composition analysis will not directly provide information on causes of FLW, since the waste is being analyzed after it has been discarded. For this reason, waste composition analyses are often paired with a survey or process diary to generate qualitative data on causes and drivers assessed in tandem with the waste analysis. |
Records | Not usually | Because records are kept for purposes other than FLW quantification, they are less likely to contain information relating to FLW causes and drivers. However, some records will have information that can help identify causes. (For example, a repair record for a piece of faulty equipment may help identify a cause of food waste.) Usually, a diary or survey will likely need to be implemented to generate qualitative data. |
Diaries | Yes | A diary can be used to determine causes and drivers of FLW. The diarist can be asked to provide information on why the FLW occurred while recording it. |
Interviews/Surveys | Yes | A survey can be used to determine causes and drivers of FLW. The respondent can be asked to provide information about why FLW occurs within their boundaries. |
Proxy data/mass balance | No | Because inference by calculation is a mathematical operation based on material flows and proxy data, it will not provide information about causes and drivers of FLW. It provides only a quantitative estimate of the amount of FLW occurring within a given sector or commodity type. An additional analysis of the relevant sector or commodity will be necessary to understand the causes of FLW. |
Source: Authors.
How to Track Causes and Drivers
Causes and drivers can be tracked simply by capturing information on causes while numerical estimates of FLW are being logged. In most cases, only the immediate cause will be available at first and additional research may be needed to detect the driver. Table 7 shows an example of how causes and drivers can be tracked alongside numerical estimates of FLW.
Table 7. Tracking Causes and Drivers
Food Type | Amount | Stage of the Supply Chain | Cause | Driver |
---|---|---|---|---|
Wheat | 1000 kg | Primary production | Eaten by pests | Improper storage on the farm |
Apples | 10 kg | Processing | Trimmings | Inefficient equipment trims more than necessary |
Strawberries | 40 kg | Distribution and wholesale | Spoilage / Damage during transport | Lack of effective cold-chain management / Improper packaging / Excessive centralization of distribution processes |
Beef | 100 kg | Retail | Spoilage | Improper refrigeration |
Fish | 34 kg | Food service/ institution | Spoilage | Failure in demand forecasting |
Milk | 500 g | Household | Past sell-by date (but not spoiled) | Confusion over meaning of date labels |
Note: the information in this table is illustrative.
Source: Authors.