Causality in structural engineering: discovering new knowledge by tying induction and deduction via mapping functions and explainable artificial intelligence

M. Z. Naser
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引用次数: 1

Abstract

Causality is the science of cause and effect. It is through causality that explanations can be derived, theories can be formed, and new knowledge can be discovered. This paper presents a modern look into establishing causality within structural engineering systems. In this pursuit, this paper starts with a gentle introduction to causality. Then, this paper pivots to contrast commonly adopted methods for inferring causes and effects, i.e., induction (empiricism) and deduction (rationalism), and outlines how these methods continue to shape our structural engineering philosophy and, by extension, our domain. The bulk of this paper is dedicated to establishing an approach and criteria to tie principles of induction and deduction to derive causal laws (i.e., mapping functions) through explainable artificial intelligence (XAI) capable of describing new knowledge pertaining to structural engineering phenomena. The proposed approach and criteria are then examined via a case study.

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结构工程中的因果关系:通过映射函数和可解释人工智能结合归纳和推导来发现新知识
因果关系是关于因果关系的科学。正是通过因果关系,解释才能得到,理论才能形成,新知识才能被发现。本文提出了在结构工程系统中建立因果关系的现代观点。在这个过程中,本文首先对因果关系进行了简单的介绍。然后,本文重点对比了推断因果关系的常用方法,即归纳法(经验主义)和演绎法(理性主义),并概述了这些方法如何继续塑造我们的结构工程哲学,并由此扩展到我们的领域。本文的大部分内容致力于通过可解释的人工智能(XAI)建立一种方法和标准,将归纳和演绎的原则联系起来,通过能够描述与结构工程现象有关的新知识来推导因果律(即映射函数)。然后通过案例研究对所建议的方法和标准进行检查。
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