CGLGOct 28, 2020

Explainable Artificial Intelligence for Manufacturing Cost Estimation and Machining Feature Visualization

arXiv:2010.14824v294 citations
Originality Incremental advance
AI Analysis

This addresses the need for interpretable cost estimation in manufacturing design, offering design guidance and real-time quotes, but it is incremental as it builds on existing deep learning methods with explainability enhancements.

The study tackled the problem of explaining manufacturing cost predictions for 3D CAD models by proposing an explainable AI process that visualizes machining features influencing costs, achieving high predictability for CNC machined parts and differentiating machining difficulty.

Studies on manufacturing cost prediction based on deep learning have begun in recent years, but the cost prediction rationale cannot be explained because the models are still used as a black box. This study aims to propose a manufacturing cost prediction process for 3D computer-aided design (CAD) models using explainable artificial intelligence. The proposed process can visualize the machining features of the 3D CAD model that are influencing the increase in manufacturing costs. The proposed process consists of (1) data collection and pre-processing, (2) 3D deep learning architecture exploration, and (3) visualization to explain the prediction results. The proposed deep learning model shows high predictability of manufacturing cost for the computer numerical control (CNC) machined parts. In particular, using 3D gradient-weighted class activation mapping proves that the proposed model not only can detect the CNC machining features but also can differentiate the machining difficulty for the same feature. Using the proposed process, we can provide a design guidance to engineering designers in reducing manufacturing costs during the conceptual design phase. We can also provide real-time quotations and redesign proposals to online manufacturing platform customers.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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