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Assessment of predictive probability models for effective mechanical design feature reuse

Published online by Cambridge University Press:  06 May 2022

Gokula Vasantha*
Affiliation:
School of Engineering and the Built Environment, Edinburgh Napier University, Edinburgh, UK
David Purves
Affiliation:
Department of Management Science, University of Strathclyde, Glasgow, UK
John Quigley
Affiliation:
Department of Management Science, University of Strathclyde, Glasgow, UK
Jonathan Corney
Affiliation:
School of Engineering, University of Edinburgh, Edinburgh, UK
Andrew Sherlock
Affiliation:
Department of Design, Manufacture and Engineering Management, University of Strathclyde, Glasgow, UK
Geevin Randika
Affiliation:
School of Engineering, University of Edinburgh, Edinburgh, UK
*
Author for correspondence: Gokula Vasantha, E-mail: G.Vasantha@napier.ac.uk
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Abstract

This research envisages an automated system to inform engineers when opportunities occur to use existing features or configurations during the development of new products. Such a system could be termed a "predictive CAD system" because it would be able to suggest feature choices that follow patterns established in existing products. The predictive CAD literature largely focuses on predicting components for assemblies using 3D solid models. In contrast, this research work focuses on feature-based predictive CAD system using B-rep models. This paper investigates the performance of predictive models that could enable the creation of such an intelligent CAD system by assessing three different methods to support inference: sequential, machine learning, or probabilistic methods using N-Grams, Neural Networks (NNs), and Bayesian Networks (BNs) as representative of these methods. After defining the functional properties that characterize a predictive design system, a generic development methodology is presented. The methodology is used to carry out a systematic assessment of the relative performance of three methods each used to predict the diameter value of the next hole and boss feature type being added during the design of a hydraulic valve body. Evaluating predictive performance providing five recommendations ($k = 5$) for hole or boss features as a new design was developed, recall@k increased from around 30% to 50% and precision@k from around 50% to 70% as one to three features were added. The results indicate that the BN and NN models perform better than those using N-Grams. The practical impact of this contribution is assessed using a prototype (implemented as an extension to a commercial CAD system) by engineers whose comments defined an agenda for ongoing research in this area.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press
Figure 0

Fig. 1. Hole menu whose values and order are generated by a predictive model.

Figure 1

Table 1. Predictive CAD research papers in the solid CAD modeling literature

Figure 2

Fig. 2. Learning approaches used in reported predictive CAD systems.

Figure 3

Fig. 3. Evaluation parameters reported for predictive systems.

Figure 4

Fig. 4. Generic predictive CAD development steps mapped to the specific implementation used for evaluation of probability models.

Figure 5

Fig. 5. Component feature content representation.

Figure 6

Table 2. An illustration of feature data extracted from components

Figure 7

Fig. 6. Model assessment methodology.

Figure 8

Fig. 7. Binary matrix representation of the feature content of the components detailed in Table 2. Feature presence in a component is indicated by a 1.

Figure 9

Fig. 8. Neural network autoencoder with dropout.

Figure 10

Fig. 9. Distribution of recall@k across the ten cross-validation test folds for $k = 5$. The “observed” columns indicate the performance when either one, two, or three hole features were in the current design and predictions were made on a next relevant feature.

Figure 11

Fig. 10. Distribution of precision@k across the ten cross-validation test folds for $k = 5$. The “observed” columns indicate the performance when either one, two, or three hole features were in the current design and predictions were made on a next relevant feature.

Figure 12

Fig. 11. Precision and recall curves for each method – BN (solid), N-Gram (dashed), and ANN (dotted) – calculated at $K$ from 1 to 10. Recall increases as a greater number of suggestions are returned (as $k$ increases).

Figure 13

Fig. 12. Screenshot of Prototype Predictive CAD (PCAD) Implementation in SolidEdge. Given the current hole features in the design, a set of ordered suggestions is provided to the engineer.

Figure 14

Table 3. Evaluation results of the predictive system

Figure 15

Fig. 13. Survey suggestions mapped onto the generic steps of the predictive CAD system implemented to support the assessment.

Figure 16

Table 4. Possible feature representations

Figure 17

Fig. 14. Extending the Bayesian network structure with elaborations to model further associations between features.

Figure 18

Table 5. Research agenda

Supplementary material: PDF

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