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Carbon (CI) and energy intensity (EI) dataset for retail stores

机译:零售商店的碳(CI)和能量强度(EI)数据集

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摘要

This data article presents data collected from the 250 highest revenue retailers around the world, assessed according to publicly available data from the fiscal year 2016, in order to determine retailer׳s overall carbon intensity (CI) and energy intensity (EI). Data collection included additional variables such as retailers’ revenue rank, operational typology, number of stores, store sales area and number of workers. Based on this dataset, CI and EI benchmarks were calculated for food and non-food retailers, applying the statistic function first quartile (Q1) for the best practice, second (Q2) and third (Q3) quartiles for conventional practice and fourth quartile (Q4) for worst practice and correlations were tested between the variables "EI", "CI" and "retailer revenue", applying the statistic function CORREL (Ferreira et al., In press) . Finally, a cluster analysis was performed for food and non-food retailers, to identify possible segmentation patterns between the variables “EI”, “CI” and “retailer revenue”. The information provided in this data article is useful for furthering research developments on the influence of isolated variables on retail EI and CI and in assisting retailers, architects, engineers, and policy makers in establishing optimal energy performance goals for the design and operation of retail stores. For further data interpretation and discussion, see the article “Combined carbon and energy intensity benchmarks for sustainable retail stores” (Ferreira et al., In press), of the same authors.
机译:本数据文章提供了从全球250家收入最高的零售商那里收集的数据,并根据2016财年的公开数据进行了评估,以确定零售商的总体碳强度(CI)和能源强度(EI)。数据收集还包括其他变量,例如零售商的收入等级,运营类型,商店数量,商店销售区域和工人数量。根据此数据集,计算出食品和非食品零售商的CI和EI基准,将统计函数的第一四分位数(Q1)用于最佳实践,将第二(Q2)和第三(Q3)四分位数用于常规做法,将第四四分位数(对于最坏的实践,使用统计函数CORREL(Ferreira等,印刷中)测试变量“ EI”,“ CI”和“零售商收入”之间的相关性。最后,对食品和非食品零售商进行了聚类分析,以识别变量“ EI”,“ CI”和“零售商收入”之间可能的细分模式。本数据文章中提供的信息对于进一步研究有关孤立变量对零售EI和CI的影响以及有助于零售商,建筑师,工程师和决策者建立零售商店的设计和运营的最佳能源绩效目标非常有用。 。有关进一步的数据解释和讨论,请参见同一作者的文章“可持续零售店的碳和能源强度综合基准”(Ferreira等,印刷中)。

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