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Web System for Solving the Inverse Kinematics of 6DoF Robotic Arm Using Deep Learning Models: CNN and LSTM
by
García-Sánchez, Eduardo
, Solís-Sánchez, Luis O.
, Ibarra-Pérez, Teodoro
, Torres-Hernández, Mayra A.
, Martínez-Blanco, Ma. del Rosario
, Guerrero-Osuna, Héctor A.
in
Accuracy
/ Applications programs
/ Artificial intelligence
/ Artificial neural networks
/ Automation
/ Cloud computing
/ CNN
/ Control algorithms
/ Data processing
/ Data science
/ Datasets
/ Deep learning
/ Design
/ Interfaces
/ Inverse kinematics
/ Kinematics
/ Laboratories
/ Libraries
/ LSTM
/ Machine learning
/ Neural networks
/ Performance measurement
/ Python
/ Real time
/ Robot arms
/ Robot learning
/ Robotics
/ Robots
/ Software
/ Visualization
/ Web applications
/ web system
2025
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Web System for Solving the Inverse Kinematics of 6DoF Robotic Arm Using Deep Learning Models: CNN and LSTM
by
García-Sánchez, Eduardo
, Solís-Sánchez, Luis O.
, Ibarra-Pérez, Teodoro
, Torres-Hernández, Mayra A.
, Martínez-Blanco, Ma. del Rosario
, Guerrero-Osuna, Héctor A.
in
Accuracy
/ Applications programs
/ Artificial intelligence
/ Artificial neural networks
/ Automation
/ Cloud computing
/ CNN
/ Control algorithms
/ Data processing
/ Data science
/ Datasets
/ Deep learning
/ Design
/ Interfaces
/ Inverse kinematics
/ Kinematics
/ Laboratories
/ Libraries
/ LSTM
/ Machine learning
/ Neural networks
/ Performance measurement
/ Python
/ Real time
/ Robot arms
/ Robot learning
/ Robotics
/ Robots
/ Software
/ Visualization
/ Web applications
/ web system
2025
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Web System for Solving the Inverse Kinematics of 6DoF Robotic Arm Using Deep Learning Models: CNN and LSTM
by
García-Sánchez, Eduardo
, Solís-Sánchez, Luis O.
, Ibarra-Pérez, Teodoro
, Torres-Hernández, Mayra A.
, Martínez-Blanco, Ma. del Rosario
, Guerrero-Osuna, Héctor A.
in
Accuracy
/ Applications programs
/ Artificial intelligence
/ Artificial neural networks
/ Automation
/ Cloud computing
/ CNN
/ Control algorithms
/ Data processing
/ Data science
/ Datasets
/ Deep learning
/ Design
/ Interfaces
/ Inverse kinematics
/ Kinematics
/ Laboratories
/ Libraries
/ LSTM
/ Machine learning
/ Neural networks
/ Performance measurement
/ Python
/ Real time
/ Robot arms
/ Robot learning
/ Robotics
/ Robots
/ Software
/ Visualization
/ Web applications
/ web system
2025
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Web System for Solving the Inverse Kinematics of 6DoF Robotic Arm Using Deep Learning Models: CNN and LSTM
Journal Article
Web System for Solving the Inverse Kinematics of 6DoF Robotic Arm Using Deep Learning Models: CNN and LSTM
2025
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Overview
This work presents the development of a web system using deep learning (DL) neural networks to solve the inverse kinematics problem of the Quetzal robotic arm, designed for academic and research purposes. Two architectures, LSTM and CNN, were designed, trained, and evaluated using data generated through the Denavit–Hartenberg (D-H) model, considering the robot’s workspace. The evaluation employed the mean squared error (MSE) as the loss metric and mean absolute error (MAE) and accuracy as performance metrics. The CNN model, featuring four convolutional layers and an input of 4 timesteps, achieved the best overall performance (95.9% accuracy, MSE of 0.003, and MAE of 0.040), significantly outperforming the LSTM model in training time. A hybrid web application was implemented, allowing offline training and real-time online inference under one second via an interactive interface developed with Streamlit 1.16. The solution integrates tools such as TensorFlow™ 2.15, Python 3.10, and Anaconda Distribution 2023.03-1, ensuring portability to fog or cloud computing environments. The proposed system stands out for its fast response times (1 s), low computational cost, and high scalability to collaborative robotics environments. It is a viable alternative for applications in educational or research settings, particularly in projects focused on industrial automation.
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