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Measuring functional independence in design with deep-learning language representation models

机译:用深学习语言表示模型测量设计功能独立性

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Measuring functional coupling in complex systems is an important task for good design practice, though historically it has been an art of subjective judgement. With the recent advancements in Deep Learning and Natural Language Processing, functional requirements (FRs) and design parameters (DPs), which are expressed as words and sentences, can be represented in a vector space. The sentence embedding model, BERT, was used in this paper to vectorize FRs and DPs, to calculate functional independence and to study how metrics for functional coupling measurement can be enhanced. It was found that semantic similarity among FRs and DPs, represented in vector space, could be used to compute quantitative values for metrics of functional independence. It was also found that design cases where coupling was unambiguous yielded the best results, while cases where laws of physics needed to define the FR-DP relationship did not transliterate well to the natural language used to express the FR-DP highlighted the limitations of the model in its current state. This study, however, demonstrates a great opportunity to develop a robust, fine-tuned design language representation model for accurately measuring functional independence as a part of our effort to enhance design intelligence.
机译:测量复杂系统中的功能耦合是良好设计实践的重要任务,尽管它历史上一直是一个主观判断的艺术。随着深度学习和自然语言处理的最新进步,功能要求(FRS)和设计参数(DPS),它们表示为单词和句子,可以在矢量空间中表示。本文使用了句子嵌入模型,伯爵,以便将FRS和DPS矢量化,计算功能独立性,并研究如何提高功能耦合测量的度量。结果发现,在向量空间中表示的FRS和DPS之间的语义相似性可用于计算功能独立性度量的定量值。还有发现,设计案例,耦合明确产生的最佳结果,而定义FR-DP关系所需的物理法律的情况并不易于使用用于表达FR-DP的自然语言突出显示的局限性模型在其当前状态。然而,这项研究表明,开发强大,微调的设计语言表示模型的绝佳机会,以准确测量功能独立,以提高设计智能的努力。

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