A novel collaborative decision-making method based on generalized abductive learning for resolving design conflicts

Zhexin Cui, Jiguang Yue, Wei Tao, Qian Xia, Chenhao Wu
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引用次数: 0

Abstract

In complex product design, lots of time and resources are consumed to choose a preference-based compromise decision from non-inferior preliminary design models with multi-objective conflicts. However, since complex products involve intensive multi-domain knowledge, preference is not only a comprehensive representation of objective data and subjective knowledge but also characterized by fuzzy and uncertain. In recent years, enormous challenges are involved in the design process, within the increasing complexity of preference. This article mainly proposes a novel decision-making method based on generalized abductive learning (G-ABL) to achieve autonomous and efficient decision-making driven by data and knowledge collaboratively. The proposed G-ABL framework, containing three cores: classifier, abductive kernel, and abductive machine, supports preference integration from data and fuzzy knowledge. In particular, a subtle improvement is presented for WK-means based on the entropy weight method (EWM) to address the local static weight problem caused by the fixed data preferences as the decision set is locally invariant. Furthermore, fuzzy comprehensive evaluation (FCE) and Pearson correlation are adopted to quantify domain knowledge and obtain abducted labels. Multi-objective weighted calculations are utilized only to label and compare solutions in the final decision set. Finally, an engineering application is provided to verify the effectiveness of the proposed method, and the superiority of which is illustrated by comparative analysis.

一种基于广义溯因学习的解决设计冲突的协同决策新方法
在复杂产品设计中,要从具有多目标冲突的非劣质初步设计模型中选择一个基于偏好的折中决策,需要耗费大量的时间和资源。然而,由于复杂产品涉及密集的多领域知识,偏好不仅是客观数据和主观知识的综合体现,还具有模糊性和不确定性的特点。近年来,由于偏好的复杂性不断增加,设计过程面临着巨大的挑战。本文主要提出一种基于广义归纳学习(G-ABL)的新型决策方法,以实现数据和知识协同驱动的自主高效决策。所提出的 G-ABL 框架包含三个核心:分类器、归纳内核和归纳机,支持从数据和模糊知识中整合偏好。其中,基于熵权法(EWM)对 WK-means进行了微妙的改进,解决了由于决策集局部不变而由固定数据偏好引起的局部静态权重问题。此外,还采用了模糊综合评价(FCE)和皮尔逊相关性来量化领域知识并获得归纳标签。多目标加权计算仅用于标记和比较最终决策集中的解决方案。最后,提供了一个工程应用来验证所提方法的有效性,并通过比较分析说明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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