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AUTONOMOUS WASTE CHARACTERIZATION IN ENVIRONMENTALLY CONSCIOUS DECISION MAKING

机译:环保决策中的自主废物表征

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摘要

Product take-back and reuse is an effective way to reduce the environmental footprint of products. Millions of tons of waste are disposed in landfills in the United States, electronic products being of particular concern. While constituting a small fraction of landfilled waste, electronic components account for a majority of the environmental impact. The major challenge in addressing this issue is that the components are functionally obsolete and in a state where their numbers and type are not known. Even with concerted efforts to solve this problem through better design or collection practices, a major unknown is how much actually falls through the cracks and makes it to landfills. Human sorting and identification is impractical, while automating this process has been difficult because of limitations of algorithms to match human ability to discern objects. Deep learning promises to change this. This paper discusses the use of autonomous systems that can scan unorganized heaps of products to identify and catalog components, particularly electronics. This approach can fill an important gap in our knowledge. This paper discusses the testbeds created by the authors which shows promise in accomplishing this task. The paper also discusses the repercussions of such a study and cataloging on design decision-making as well as environmental legislation.
机译:产品回收和再利用是减少产品环境足迹的有效方法。在美国,数百万吨的废物被丢弃在垃圾填埋场中,电子产品尤其受到关注。电子垃圾占垃圾掩埋废物的一小部分,但对环境的影响却很大。解决此问题的主要挑战是组件在功能上已过时并且处于其数量和类型未知的状态。即使通过共同努力通过更好的设计或收集方法来解决此问题,一个主要未知数是实际上有多少东西从裂缝中掉下来并进入了垃圾填埋场。人的分类和识别是不切实际的,但是由于算法的局限性,难以匹配该人识别物体的能力,因此使该过程自动化是困难的。深度学习有望改变这一点。本文讨论了自治系统的使用,该系统可以扫描无组织的产品堆以识别和分类组件,特别是电子组件。这种方法可以填补我们知识上的重要空白。本文讨论了作者创建的测试平台,这些测试平台显示了完成此任务的希望。本文还讨论了这种研究和编目对设计决策以及环境立法的影响。

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