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Sustainability assessment of U.S. manufacturing sectors: an economic input output-based frontier approach

机译:美国制造业的可持续性评估:基于经济投入产出的前沿方法

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Due to increasing concerns related to emerging environmental problems as a result of industrial activities, sustainable manufacturing has become a topic of considerable interest worldwide. In this study, Economic Input-Output Life Cycle Assessment (EIO-LCA) and Data Envelopment Analysis (DEA), a linear programming-based mathematical optimization model, were integrated to analyze the eco-efficiency of manufacturing sectors in the United States. This integration was achieved by aggregating different environmental pressures into a single eco-efficiency score. First, greenhouse gas emissions, energy use, water withdrawals, hazardous waste generation, and toxic releases of each manufacturing sector were quantified using the EIO-LCA model. Second, an input-oriented DEA multiplier model was developed. Third, eco-efficiency scores and rankings, target and performance improvement values of each environmental category were determined. Finally, the sensitivity of each environmental impact category was analyzed. Analysis results showed that five industrial sectors, such as "Petroleum and Coal Products Manufacturing", "Food Manufacturing", "Printing and Related Support Activities", "Ordinance and Accessories Manufacturing", and "Motor Vehicle Manufacturing" were 100% eco-efficient compared to other manufacturing sectors. On the other hand, approximately 90% of U.S. manufacturing sectors were found to be inefficient and require significant improvements in their life cycle performance. Among the environmental impact categories, energy use had the highest sensitivity on the eco-efficiency of U.S. manufacturing sectors, and therefore improved energy efficiency in industrial processes and successful policy making toward increasing the share of renewable energy utilization were highly recommended.
机译:由于由于工业活动而引起的与新出现的环境问题有关的关注日益增加,可持续制造已成为世界范围内备受关注的话题。在这项研究中,经济投入产出生命周期评估(EIO-LCA)和数据包络分析(DEA)是一种基于线性规划的数学优化模型,用于分析美国制造业的生态效率。通过将不同的环境压力汇总到一个生态效率评分中来实现这种整合。首先,使用EIO-LCA模型对每个制造业的温室气体排放量,能源使用量,取水量,危险废物的产生和有毒物质的排放进行了量化。其次,开发了一种面向输入的DEA乘数模型。第三,确定每个环境类别的生态效率得分和等级,目标和绩效改善值。最后,分析了每个环境影响类别的敏感性。分析结果显示,“石油和煤炭产品制造”,“食品制造”,“印刷和相关支持活动”,“条例和配件制造”以及“汽车制造”五个工业部门的生态效率均为100%与其他制造业相比。另一方面,发现约90%的美国制造业部门效率低下,需要对其生命周期性能进行重大改进。在环境影响类别中,能源使用对美国制造业的生态效率具有最高的敏感性,因此强烈建议提高工业流程中的能源效率,并建议制定成功的政策以增加可再生能源利用的比例。

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