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Main Authors: Katyara, Sunny, Sharma, Suchita, Damacharla, Praveen, Santiago, Carlos Garcia, Dhirani, Lubina, Chowdhry, Bhawani Shankar
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.10784
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author Katyara, Sunny
Sharma, Suchita
Damacharla, Praveen
Santiago, Carlos Garcia
Dhirani, Lubina
Chowdhry, Bhawani Shankar
author_facet Katyara, Sunny
Sharma, Suchita
Damacharla, Praveen
Santiago, Carlos Garcia
Dhirani, Lubina
Chowdhry, Bhawani Shankar
contents As the manufacturing industry shifts from mass production to mass customization, there is a growing emphasis on adopting agile, resilient, and human-centric methodologies in line with the directives of Industry 5.0. Central to this transformation is the deployment of digital twins, a technology that digitally replicates manufacturing assets to enable enhanced process optimization, predictive maintenance, synthetic data generation, and accelerated customization and prototyping. This chapter delves into the technologies underpinning the creation of digital twins specifically tailored to agile manufacturing scenarios within the realm of robotic automation. It explores the transfer of trained policies and process optimizations from simulated settings to real-world applications through advanced techniques such as domain randomization, domain adaptation, curriculum learning, and model-based system identification. The chapter also examines various industrial manufacturing automation scenarios, including bin-picking, part inspection, and product assembly, under Sim2Real conditions. The performance of digital twin technologies in these scenarios is evaluated using practical metrics including data latency, adaptation rate, simulation fidelity among others reported, providing a comprehensive assessment of their efficacy and potential impact on modern manufacturing processes.
format Preprint
id arxiv_https___arxiv_org_abs_2409_10784
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Benchmarking Sim2Real Gap: High-fidelity Digital Twinning of Agile Manufacturing
Katyara, Sunny
Sharma, Suchita
Damacharla, Praveen
Santiago, Carlos Garcia
Dhirani, Lubina
Chowdhry, Bhawani Shankar
Robotics
As the manufacturing industry shifts from mass production to mass customization, there is a growing emphasis on adopting agile, resilient, and human-centric methodologies in line with the directives of Industry 5.0. Central to this transformation is the deployment of digital twins, a technology that digitally replicates manufacturing assets to enable enhanced process optimization, predictive maintenance, synthetic data generation, and accelerated customization and prototyping. This chapter delves into the technologies underpinning the creation of digital twins specifically tailored to agile manufacturing scenarios within the realm of robotic automation. It explores the transfer of trained policies and process optimizations from simulated settings to real-world applications through advanced techniques such as domain randomization, domain adaptation, curriculum learning, and model-based system identification. The chapter also examines various industrial manufacturing automation scenarios, including bin-picking, part inspection, and product assembly, under Sim2Real conditions. The performance of digital twin technologies in these scenarios is evaluated using practical metrics including data latency, adaptation rate, simulation fidelity among others reported, providing a comprehensive assessment of their efficacy and potential impact on modern manufacturing processes.
title Benchmarking Sim2Real Gap: High-fidelity Digital Twinning of Agile Manufacturing
topic Robotics
url https://arxiv.org/abs/2409.10784