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Deep Neural Network-based Reliability Assessment for Adaptive Gripper Fingers Utilizing a Mechanical Neural Network Lattice Structure

Alternative Title
기계적 신경망 격자구조를 활용한적응형 그리퍼 핑거의 심층신경망 기반 신뢰성 평가
Author(s)
Choi, MinhyeokBang, JinhongLim, KihoonDoh, Jaehyeok
Issued Date
2025-06
DOI
10.3795/KSME-A.2025.49.6.471
URI
https://scholarworks.unist.ac.kr/handle/201301/91442
Citation
TRANSACTIONS OF THE KOREAN SOCIETY OF MECHANICAL ENGINEERS A, v.49, no.6, pp.471 - 482
Abstract
In this study, a reliability assessment was performed, considering physical uncertainties on a conceptual design of adaptive gripper fingers comprising a mechanical neural network (MNN) lattice structure to achieve a target displacement. The feasible design domain was efficiently derived using topology optimization by applying various gripper operating conditions, considering environmental factors. Accordingly, a finite element model was designed based on an MNN lattice structure. Additionally, a deep neural network model was constructed based on a data set derived using the optimal Latin hypercube design method. The reliability assessment was performed by using Monte Carlo simulations and applying the structural safety factor and the stroke, which is the maximum distance between the gripper fingers, as reliability conditions. Thus, the reliability of the adaptive gripper fingers design was analyzed for each case, and the applicability of an actual work site was evaluated by considering physical uncertainties.
Publisher
KOREAN SOC MECHANICAL ENGINEERS
ISSN
1226-4873
Keyword (Author)
Mechanical Neural NetworkAdaptive GripperReliability AssessmentTopology OptimizationDeep Neural Network
Keyword
TOPOLOGY OPTIMIZATIONCOMPLIANT MECHANISMSDESIGN

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