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Transactions on Computer Science and Technology

Transactions on Computer Science and Technology is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of computer science theory and technology application on the combination of computer science and modern industrial technology. The main focus of the journal is the academic papers and comments of latest power electronics theoretical and technical research improvement in the fields of nature s... [More] Transactions on Computer Science and Technology is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of computer science theory and technology application on the combination of computer science and modern industrial technology. The main focus of the journal is the academic papers and comments of latest power electronics theoretical and technical research improvement in the fields of nature science, engineering technology, economy and science, report of latest research result, aiming at providing a good communication platform to transfer, share and discuss the theoretical and technical development of computer science theory and technology development for professionals, scholars and researchers in this field, reflecting the academic front level, promote academic change and foster the rapid expansion of computer science theory and application technology.

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ISSN Print:2327-090X

ISSN Online:2327-0918

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Paper Infomation

Optimization of Robotic Arm Grasping Strategy Based on Deep Reinforcement Learning

Full Text(PDF, 30KB)

Author: Dongjun He

Abstract: In recent years, robotic arm grasping has become a pivotal task in the field of robotics, with applications spanning from industrial automation to healthcare. The optimization of grasping strategies plays a crucial role in enhancing the effectiveness, efficiency, and reliability of robotic systems. This paper presents a novel approach to optimizing robotic arm grasping strategies based on deep reinforcement learning (DRL). Through the utilization of advanced DRL algorithms, such as Q-Learning, Deep Q-Networks (DQN), Policy Gradient Methods, and Proximal Policy Optimization (PPO), the study aims to improve the performance of robotic arms in grasping objects with varying shapes, sizes, and environmental conditions. The paper provides a detailed analysis of the various deep reinforcement learning methods used for grasping strategy optimization, emphasizing the strengths and weaknesses of each algorithm. It also presents a comprehensive framework for training the DRL models, including simulation environment setup, the optimization process, and the evaluation metrics for grasping success. The results demonstrate that the proposed approach significantly enhances the accuracy and stability of the robotic arm in performing grasping tasks. The study further explores the challenges in training deep reinforcement learning models for real-time robotic applications and offers solutions for improving the efficiency and reliability of grasping strategies.

Keywords: Robotic Arm; Grasping Strategy; Deep Reinforcement Learning; Q-Learning; DQN; Policy Gradient; PPO; Optimization; Simulation; Robotics

References:

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[7] Zhizhuo Z, Change Z. Simulation of Robotic Arm Grasping Control Based on Proximal Policy Optimization Algorithm[J].Journal of Physics: Conference Series,2022,2203(1):

[8] Hiba S, Smail T, Rachid S, et al. Vision-Based Robotic Arm Control Algorithm Using Deep Reinforcement Learning for Autonomous Objects Grasping[J].Applied Sciences,2021,11(17):7917-7917.

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