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An investigation of used electronics return flows: A data-driven approach to capture and predict consumers storage and utilization behavior

机译:对二手电子产品回流的调查:一种数据驱动的方法来捕获和预测消费者的存储和使用行为

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摘要

Consumers often have a tendency to store their used, old or un-functional electronics for a period of time before they discard them and return them back to the waste stream. This behavior increases the obsolescence rate of used still-functional products leading to lower profitability that could be resulted out of End-of-Use (EOU) treatments such as reuse, upgrade, and refurbishment. These types of behaviors are influenced by several product and consumer-related factors such as consumers' traits and lifestyles, technology evolution, product design features, product market value, and pro-environmental stimuli. Better understanding of different groups of consumers, their utilization and storage behavior and the connection of these behaviors with product design features helps Original Equipment Manufacturers (OEMs) and recycling and recovery industry to better overcome the challenges resulting from the undesirable storage of used products. This paper aims at providing insightful statistical analysis of Electronic Waste (e-waste) dynamic nature by studying the effects of design characteristics, brand and consumer type on the electronics usage time and end of use time-in-storage. A database consisting of 10,063 Hard Disk Drives (HDD) of used personal computers returned back to a remanufacturing facility located in Chicago, IL, USA during 2011-2013 has been selected as the base for this study. The results show that commercial consumers have stored computers more than household consumers regardless of brand and capacity factors. Moreover, a heterogeneous storage behavior is observed for different brands of HDDs regardless of capacity and consumer type factors. Finally, the storage behavior trends are projected for short-time forecasting and the storage times are precisely predicted by applying machine learning methods.
机译:消费者通常倾向于将其使用过的,旧的或无法正常工作的电子设备存储一段时间,然后丢弃它们,然后将其返回废物流。此行为会增加使用过的仍功能性产品的过时率,从而导致利润下降,这可能是由于使用终止(EOU)处理(如重用,升级和翻新)导致的。这些类型的行为受多种与产品和消费者相关的因素的影响,例如消费者的性格和生活方式,技术演进,产品设计功能,产品市场价值以及对环境的刺激。更好地了解不同类别的消费者,他们的利用和存储行为以及这些行为与产品设计功能的联系,有助于原始设备制造商(OEM)和回收与回收行业更好地克服因二手产品的不良存储所带来的挑战。本文旨在通过研究设计特征,品牌和消费者类型对电子使用时间和使用终止存储时间的影响,对电子废物(电子废物)的动态性质进行深入的统计分析。本研究选择了一个数据库,该数据库由2011年至2013年间送回位于美国伊利诺伊州芝加哥的再制造工厂的二手个人计算机的10,063个硬盘驱动器(HDD)组成。结果表明,与品牌和容量因素无关,商业消费者比家庭消费者存储的计算机更多。此外,无论容量和消费者类型因素如何,对于不同品牌的HDD都观察到了异构存储行为。最后,通过短期学习预测存储行为趋势,并通过应用机器学习方法精确预测存储时间。

著录项

  • 来源
    《Waste Management》 |2015年第2期|305-315|共11页
  • 作者单位

    Industrial and Systems Engineering Department, State University of New York, University at Buffalo, 437 Bell Hall, Buffalo, NY, USA;

    Healthcare Systems Engineering Institute, Northeastern University, Boston, MA 02115, USA;

    Mechanical and Aerospace Engineering, State University of New York, University at Buffalo, 437 Bell Hall, Buffalo, NY, USA;

    Industrial and Systems Engineering Department, State University of New York, University at Buffalo, 437 Bell Hall, Buffalo, NY, USA,Mechanical and Aerospace Engineering, State University of New York, University at Buffalo, 437 Bell Hall, Buffalo, NY, USA;

    PC Rebuilder and Recyclers, 4734 W Chicago Ave, Chicago, IL 60651-3322, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Electronic waste; Consumer behavior; Design characteristics; Machine learning;

    机译:电子废物;消费者行为;设计特点;机器学习;

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