Book Chapter10.1007/978-1-84996-432-6_28
A Knowledge-Based Engineering System for Assembly Sequence Planning
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TL;DR: The results show that the proposed KBE system can facilitate feasible assembly sequences and allow designers to recognize contact relationships, assembly difficulties, and assembly constraints of three-dimensional components in a virtual environment type.
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Abstract: In this study, we developed a knowledge-based engineering (KBE) system to assist engineers in promptly predicting a near-optimal assembly sequence. A three-stage assembly optimization approach with some heuristic working rules was employed to establish the proposed system. In the first stage, Above Graph and a transforming rule were used to create a correct explosion graph of the assembly models. In the second stage, a three-level relational model graph, with geometric constraints and assembly precedence diagrams, was generated to create a completely relational model graph, an incidence matrix, and a feasible assembly sequence. In the third stage, a robust back-propagation neural network engine was developed and embedded in the Siemens NX system. System users can easily access the volume, weight, and feature number through the Siemens NX system interface, input the related parameters such as contact relationship number and total penalty value, and predict a feasible assembly sequence via a robust engine. Three real-world examples were used to evaluate the feasibility of the KBE system. The results show that the proposed system can facilitate feasible assembly sequences and allow designers to recognize contact relationships, assembly difficulties, and assembly constraints of three-dimensional components in a virtual environment type.
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Citations
A review on assembly sequence generation and its automation
Mva Raju Bahubalendruni,Bibhuti Bhusan Biswal +1 more
- 01 Mar 2016
TL;DR: A detailed review on various assembly sequence generation methods, their applications and limitations is presented and well discussed in this article, where the integration of sequence generation with computer aided design environment ensures more correctness and flexibility.
148
Relationship matrix based automatic assembly sequence generation from a CAD model
Li-Ming Ou,Xun Xu +1 more
TL;DR: A system that can analyse and utilize assembly data available from a CAD model to generate assembly sequences is presented, which is capable of producing a set of ranked feasible assembly sequence plans for an operator to evaluate.
105
Assembly sequence planning using soft computing methods: A review:
Bbvl Deepak,G. Bala Murali,Mva Raju Bahubalendruni,Bibhuti Bhusan Biswal +3 more
- 01 Jun 2019
TL;DR: This review provides an outlook for the researchers on various artificial intell1igent techniques which will be useful to carry out research for obtaining the optimum assembly sequence planning while qualifying various assembly predicate criteria.
84
Research on a kind of assembly sequence planning based on immune algorithm and particle swarm optimization algorithm
TL;DR: In this article, the authors proposed a new method under the name of immune particle swarm optimization algorithm to solve the assembly sequence planning problem, and the results show that the proposed method is an efficient approach to solve this problem.
66
An Optimal Robotic Assembly Sequence Planning by Assembly Subsets Detection Method Using Teaching Learning-Based Optimization Algorithm
TL;DR: The researchers studied the existing literature on assembly sequence generation methods and their limitations, and came up with efficient automated optimal sequence generation method that eliminates those assembly sets that have more directional changes and require more energy.
63
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