Biblio

Filters: Author is Lin, Nan  [Clear All Filters]
2022-07-29
Zhang, KunSan, Chen, Chen, Lin, Nan, Zeng, Zhen, Fu, ShiChen.  2021.  Automatic patch installation method of operating system based on deep learning. 2021 IEEE 5th Information Technology,Networking,Electronic and Automation Control Conference (ITNEC). 5:1072—1075.
In order to improve the security and reliability of information system and reduce the risk of vulnerability intrusion and attack, an automatic patch installation method of operating systems based on deep learning is proposed, If the installation is successful, the basic information of the system will be returned to the visualization server. If the installation fails, it is recommended to upgrading manually and display it on the patch detection visualization server. Through the practical application of statistical analysis, the statistical results show that the proposed method is significantly better than the original and traditional installation methods, which can effectively avoid the problem of client repeated download, and greatly improve the success rate of patch automatic upgrades. It effectively saves the upgrade cost and ensures the security and reliability of the information system.
2020-03-27
Lin, Nan, Zhang, Linrui, Chen, Yuxuan, Zhu, Yujun, Chen, Ruoxi, Wu, Peichen, Chen, Xiaoping.  2019.  Reinforcement Learning for Robotic Safe Control with Force Sensing. 2019 WRC Symposium on Advanced Robotics and Automation (WRC SARA). :148–153.

For the task with complicated manipulation in unstructured environments, traditional hand-coded methods are ineffective, while reinforcement learning can provide more general and useful policy. Although the reinforcement learning is able to obtain impressive results, its stability and reliability is hard to guarantee, which would cause the potential safety threats. Besides, the transfer from simulation to real-world also will lead in unpredictable situations. To enhance the safety and reliability of robots, we introduce the force and haptic perception into reinforcement learning. Force and tactual sensation play key roles in robotic dynamic control and human-robot interaction. We demonstrate that the force-based reinforcement learning method can be more adaptive to environment, especially in sim-to-real transfer. Experimental results show in object pushing task, our strategy is safer and more efficient in both simulation and real world, thus it holds prospects for a wide variety of robotic applications.