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Quantification of Goods Purchases and Waste Generation at the Level of Individual Households
Author(s) -
Harder Robin,
Kalmykova Yuliya,
Morrison Gregory M.,
Feng Fen,
Mangold Mikael,
Dahlén Lisa
Publication year - 2014
Publication title -
journal of industrial ecology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.377
H-Index - 102
eISSN - 1530-9290
pISSN - 1088-1980
DOI - 10.1111/jiec.12111
Subject(s) - data collection , receipt , context (archaeology) , consumption (sociology) , environmental economics , goods and services , industrial ecology , business , usage data , computer science , economics , sustainability , geography , statistics , ecology , social science , mathematics , accounting , archaeology , sociology , world wide web , biology , market economy
Summary Quantifying differences in resource use and waste generation between individual households and exploring the reasons for the variations observed implies the need for disaggregated data on household activities and related physical flows. The collection of disaggregated data for water use, gas use, electricity use, and mobility has been reported in the literature and is normally achieved through sensors and computational algorithms. This study focuses on collecting disaggregated data for goods consumption and related waste generation at the level of individual households. To this end, two data collection approaches were devised and evaluated: (1) triangulating shopping receipt analysis and waste component analysis and (2) tracking goods consumption and waste generation using a smartphone. A case study on two households demonstrated that it is possible to collect quantitative data on goods consumption and related waste generation on a per unit basis for individual households. The study suggested that the type of data collected can be relevant in a number of different research contexts: eco‐feedback; user‐centered research; living‐lab research; and life cycle impacts of household consumption. The approaches presented in this study are most applicable in the context of user‐centered or living‐lab research. For the other contexts, alternative data sources (e.g., retailers and producers) may be better suited to data collection on larger samples, though at a lesser level of detail, compared with the two data collection approaches devised and evaluated in this study.