Multi-criteria decision analysis framework for sustainable manufacturing in automotive industry

Journal of Cleaner Production(2018)

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摘要
Increase in societal demand for sustainability has resulted in attention to sustainable manufacturing. Although an attractive goal to most, executives face difficulties in implementing; sustainable manufacturing due to the necessity of balancing social, economic and environmental; outcomes associated with the implementation of different manufacturing alternatives and; processes. This is especially true in highly competitive consumer-oriented industries, such as the automotive industry. The literature review presented herein indicated that most of the available sustainability frameworks are qualitative in nature and limited to discussion of sustainable materials and processes, while tradeoffs between the environmental, social and economic domains of sustainability are rarely examined. To overcome such shortcomings, we develop a quantitative framework for sustainable manufacturing and illustrate its application for the automotive industry. Multi-criteria decision analysis (MCDA) is utilized to combine the values of industry executives and decision makers with performance criteria of different car manufacturing materials (ferrous metals, aluminum, plastics, organic composites, and synthetic composites). Our results show how material alternatives in manufacturing can be quantitatively selected based on sustainability objectives. Additionally, we illustrate how sensitivity analyses are used to assess the robustness of the resulting alternative selection. Although this framework may be useful for decision makers in its current form, future applications might improve the model by choosing different or more specific alternatives, using objective performance scores supported by industry research, or by investigating a more diverse set of weight distributions representing dissimilar stakeholder values.
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关键词
Sustainability,Manufacturing,Automotive industry,MCDA,Decision analysis
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