4.6 Article

A GAN-BPNN-Based Surface Roughness Measurement Method for Robotic Grinding

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Optics

Surface roughness measurement based on singular value decomposition of objective speckle pattern

Shanta Hardas Patil et al.

Summary: This study proposed a roughness measurement method based on singular value decomposition, using objective speckle patterns to quantify surface roughness. Experimental results demonstrated the broad surface roughness measuring capability of the method with a single laser source, comparing different indicators.

OPTICS AND LASERS IN ENGINEERING (2022)

Article Robotics

Task-Oriented Real-Time Optimization Method of Dynamic Force Distribution for Multi-Fingered Grasping

Ziqi Liu et al.

Summary: Dynamic force distribution is crucial for multi-fingered hand operation. This study proposes a quadratic index gradient flow method based on a low-dimensional description matrix to optimize the contact force. A task-oriented contact stability criterion is also proposed for evaluating contact stability. The proposed algorithm outperforms traditional gradient flow optimization in terms of force optimization results and iteration count under the same stability condition.

INTERNATIONAL JOURNAL OF HUMANOID ROBOTICS (2022)

Article Chemistry, Analytical

Comparison of Correlation between 3D Surface Roughness and Laser Speckle Pattern for Experimental Setup Using He-Ne as Laser Source and Laser Pointer as Laser Source

Suganandha Bharathi Jayabarathi et al.

Summary: This study compares the correlation between 3D surface roughness and laser speckle pattern using two different experimental setups. The results show that the setup using a He-Ne laser provides better results.

SENSORS (2022)

Article Computer Science, Artificial Intelligence

Measurement and inspection of electrical discharge machined steel surfaces using deep neural networks

Jamal Saeedi et al.

Summary: This research introduces an industrial measurement and inspection system for steel workpieces eroded by electrical discharge machining, utilizing deep neural networks for surface roughness estimation and defect detection. The proposed method outperforms existing techniques by achieving higher accuracy and precision in defect detection and localization.

MACHINE VISION AND APPLICATIONS (2021)

Article Engineering, Multidisciplinary

Evaluation of turned and milled surfaces roughness using convolutional neural network

Achmad P. Rifai et al.

MEASUREMENT (2020)

Review Computer Science, Interdisciplinary Applications

Robotic grinding of complex components: A step towards efficient and intelligent machining - challenges, solutions, and applications

Dahu Zhu et al.

ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING (2020)

Proceedings Paper Computer Science, Artificial Intelligence

Prediction of Surface Roughness by Machine Vision using Principal Components based Regression Analysis

Ketaki Joshi et al.

INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND DATA SCIENCE (2020)

Article Engineering, Multidisciplinary

Evaluation of surface roughness in incremental forming using image processing based methods

Praveen Kumar Gandla et al.

MEASUREMENT (2020)

Review Automation & Control Systems

Industrial robotic machining: a review

Wei Ji et al.

INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2019)

Proceedings Paper Engineering, Manufacturing

Illumination Compensated images for surface roughness evaluation using machine vision in grinding process

Jibin G. John et al.

47TH SME NORTH AMERICAN MANUFACTURING RESEARCH CONFERENCE (NAMRC 47) (2019)

Article Engineering, Electrical & Electronic

Generative Adversarial Networks An overview

Antonia Creswell et al.

IEEE SIGNAL PROCESSING MAGAZINE (2018)

Article Automation & Control Systems

TCP-based calibration in robot-assisted belt grinding of aero-engine blades using scanner measurements

Xiaohu Xu et al.

INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2017)

Article Engineering, Multidisciplinary

A new surface roughness measurement method based on a color distribution statistical matrix

Liu Jian et al.

MEASUREMENT (2017)

Article Engineering, Industrial

Online non-contact surface finish measurement in machining using graph theory-based image analysis

M. Samie Tootooni et al.

JOURNAL OF MANUFACTURING SYSTEMS (2016)

Article Engineering, Multidisciplinary

Measuring grinding surface roughness based on the sharpness evaluation of colour images

Y. I. Huaian et al.

MEASUREMENT SCIENCE AND TECHNOLOGY (2016)

Article Materials Science, Characterization & Testing

Detecting surface roughness on SLS parts with various measuring techniques

M. Launhardt et al.

POLYMER TESTING (2016)

Article Automation & Control Systems

Measurement and evaluation of surface roughness based on optic system using image processing and artificial neural network

Gurcan Samtas

INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2014)