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UTILIZATION OF CONCEPT SELECTION METHODS - A SURVEY OF FINNISH INDUSTRY

机译:概念选择方法的运用-芬兰工业调查

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摘要

Concept selection is an area of design research that has been under considerable interest over the years. There is, however, only little information on how the methods that have been presented in design research for this task have been adopted by industry. Thus, a survey was carried out in the Finnish industry. The results revealed that the degree of industrial utilization of formal concept selection methods was relatively low. Less than one out of four companies responded to use one or several of the formal methods included in the study: Pugh's evaluation matrix, Rating matrices, or Analytic Hierarchy Process (AHP). Concept review meeting were reported as the most common approach for concept selection. However, a majority of the companies that did not utilize any formal method reported lacking effective and suitable methods for concept selection. The companies using formal methods were more satisfied. The first conclusion from the study is that there is a basis for a higher degree of utilization of formal concept selection methods in industry. Our second conclusion is that the existing formal concept selection methods do not entirely fulfill the needs of concept selection in an industry context. We propose that numerical concept selection methods should be further developed and extended to better support the decision-making practices of concept selection in industry. This type of concept selection is characterized by the participation of multiple decision makers through concept design reviews.
机译:多年来,概念选择是设计研究的一个重要领域。但是,只有很少的信息表明工业界已经采用了在设计研究中针对该任务提出的方法。因此,对芬兰工业进行了调查。结果表明,正式概念选择方法的工业利用程度相对较低。不到四分之一的公司回答使用本研究中包括的一种或几种正式方法:Pugh的评估矩阵,评分矩阵或分析层次结构(AHP)。据报道,概念审查会议是最常用的概念选择方法。但是,大多数未使用任何正式方法的公司都报告缺乏有效且合适的概念选择方法。使用正式方法的公司更满意。该研究的第一个结论是,存在一个在工业中更高程度地利用正式概念选择方法的基础。我们的第二个结论是,现有的正式概念选择方法不能完全满足行业背景下概念选择的需求。我们建议应进一步发展和扩展数值概念选择方法,以更好地支持行业中概念选择的决策实践。这种类型的概念选择的特征在于,多个决策者通过概念设计审查参与。

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