Approximate life cycle assessment of product concepts using multiple regression analysis and artificial neural networks

被引:0
|
作者
Ji Hyung Park
Kwang-Kyu Seo
机构
[1] Korea Institute of Science and Technology,CAD/CAM Research Center
[2] Sangmyung University,Department of Industrial and Information Systems Engineering
来源
关键词
Approximate Life Cycle Assessment; Product Concepts; Environmental Impact Driver; Product Attribute; Multiple Regression Analysis; Artificial Neural Networks;
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学科分类号
摘要
In the early phases of the product life cycle, Life Cycle Assessment (LCA) is recently used to support the decision-making for the product concepts, and the best alternative can be selected based on its estimated LCA and benefits. Both the lack of detailed information and time for a full LCA for a various range of design concepts need a new approach for the environmental analysis. This paper explores a new approximate LCA methodology for the product concepts by grouping products according to their environmental characteristics and by mapping product attributes into environmental impact driver (EID) index. The relationship is statistically verified by exploring the correlation between total impact indicator and energy impact category. Then, a neural network approach is developed to predict an approximate LCA of grouping products in conceptual design. Trained learning algorithms for the known characteristics of existing products will quickly give the result of LCA for newly designed products. The training is generalized by using product attributes for an EID in a group as well as another product attributes for the other EIDs in other groups. The neural network model with back propagation algorithm is used, and the results are compared with those of multiple regression analysis. The proposed approach does not replace the full LCA but it would give some useful guidelines for the design of environmentally conscious products in conceptual design phase.
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页码:1969 / 1976
页数:7
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