How Do Designers Choose Among Multiple Noisy Information Sources in Engineering Design Optimization? An Experimental Study

Ashish M. Chaudhari, Ilias Bilionis, Jitesh H. Panchal
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引用次数: 3

Abstract

Designers make process-level decisions to (i) select designs for performance evaluation, (ii) select information source, and (iii) decide whether to stop design exploration. These decisions are influenced by problem-related factors, such as costs and uncertainty in information sources, and budget constraints for design evaluations. The objective of this paper is to analyze individuals’ strategies for making process-level decisions under the availability of noisy information sources of different cost and uncertainty, and limited budget. Our approach involves a) conducting a behavioral experiment with an engineering optimization task to collect data on subjects’ decision strategies, b) eliciting their decision strategies using a survey, and c) performing a descriptive analysis to compare elicited strategies and observations from the data. We observe that subjects use specific criteria such as fixed values of attributes, highest prediction of performance, highest uncertainty in performance, and attribute thresholds when making decisions of interest. When subjects have higher budget, they are less likely to evaluate points having highest prediction of performance, and more likely to evaluate points having highest uncertainty in performance. Further, subjects conduct expensive evaluations even when their decisions have not sufficiently converged to the region of maximum performance in the design space and improvements from additional cheap evaluations are large. The implications of the results in identifying deviations from optimal strategies and structuring decisions for further model development are discussed.
工程设计优化中,设计人员如何在多噪声信息源中进行选择?实验研究
设计师做出过程级决策,以(i)选择设计进行性能评估,(ii)选择信息源,(iii)决定是否停止设计探索。这些决策受到与问题相关的因素的影响,例如信息源中的成本和不确定性,以及设计评估的预算限制。本文的目的是分析个体在不同成本和不确定性的嘈杂信息源可用性和有限预算下的过程级决策策略。我们的方法包括a)通过工程优化任务进行行为实验以收集受试者决策策略的数据,b)通过调查得出他们的决策策略,以及c)进行描述性分析以比较得出的策略和从数据中观察到的结果。我们观察到,受试者在做出感兴趣的决策时使用特定的标准,如属性的固定值、性能的最高预测、性能的最高不确定性和属性阈值。当被试有较高的预算时,他们不太可能评价表现预测最高的点,而更可能评价表现不确定性最高的点。此外,受试者进行昂贵的评估,甚至当他们的决定没有充分汇聚到设计空间中最大性能的区域,并且额外的廉价评估的改进很大时。讨论了结果在识别最优策略偏差和为进一步模型开发构建决策方面的含义。
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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