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公开(公告)号:US20230377123A1
公开(公告)日:2023-11-23
申请号:US17749195
申请日:2022-05-20
Applicant: ZHENGZHOU UNIVERSITY OF LIGHT INDUSTRY
Inventor: Hao LI , Xinyu YAN , Gen LIU , Haoqi WANG , Zhongshang ZHAI , Bing LI , Yuyan ZHANG , Yan LIU
IPC: G06T7/00 , G06V10/82 , G05B19/418
CPC classification number: G06T7/0008 , G06V10/82 , G05B19/41875 , G06T2200/24 , G06T2207/20084 , G05B2219/32335
Abstract: A material completeness detection method configured to detect whether materials of a target object in a physical production line are complete, includes: inputting an image of the target object in the physical production line into a material completeness detection algorithm to acquire a first detection result; inputting a virtual model of the target object in a virtual production line into the material completeness detection algorithm to acquire a second detection result, where the virtual production line is a DT of the physical production line; and acquiring a material completeness detection result of the target object based on the first detection result and the second detection result. The embodiments of the present disclosure can realize efficient and accurate material completeness detection.
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公开(公告)号:US20230039454A1
公开(公告)日:2023-02-09
申请号:US17734113
申请日:2022-05-02
Applicant: ZHENGZHOU UNIVERSITY OF LIGHT INDUSTRY
Inventor: Haoqi WANG , Hao LI , Rongjie HUANG , Gen LIU , Hongyu DU , Bing LI , Xiaoyu WEN , Yuyan ZHANG , Chunya SUN
IPC: G05B19/4063 , G05B19/4069
Abstract: An intelligent identification and warning method for an uncertain object of a production line in a digital twin environment, includes: establishing a model library for uncertain physical objects from a non-production line system; adding attribute data to the uncertain physical objects from the non-production line system; importing an established model library and added attribute data for the uncertain physical objects from the non-production line system into a model library of an existing DT production line system; performing auto-detection on an uncertain physical object entering a production line system; performing auto-detection on an actual size of the uncertain physical object entering the production line system; warning a danger for an unsafe object by means of voice prompting, system alarming and information pushing; matching a corresponding three-dimensional (3D) model in the established model library for a safe object; and loading a matched 3D model to the DT production line system.
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公开(公告)号:US20240354657A1
公开(公告)日:2024-10-24
申请号:US18739779
申请日:2024-06-11
Applicant: ZHENGZHOU UNIVERSITY OF LIGHT INDUSTRY
Inventor: Hao LI , Gen LIU , Xingyou HE , Haoqi WANG , Linli LI , Xiaoyu WEN , Shizhong WEI , Yuyan ZHANG , Weifei GUO , Wenchao YANG
IPC: G06N20/00
CPC classification number: G06N20/00
Abstract: A method for digital twin virtual-reality synchronization mapping of a mechanical arm comprises acquiring a virtual mechanical arm model built based on an actual mechanical arm in a virtual environment, where the virtual mechanical arm model is configured to map the actual mechanical arm; acquiring real motion information collected when the actual mechanical arm moves; constructing a training set and a test set based on the real motion information; training a target multilayer perceptron model based on the training set, and testing the target multilayer perceptron model based on the test set, where the target multilayer perceptron model is configured to predict a motion of the virtual mechanical arm model in the virtual environment; and deploying the target multilayer perceptron model on the actual mechanical arm when the target multilayer perceptron model meets a preset condition. According to this method, operation accuracy and efficiency of the mechanical arm are improved.
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公开(公告)号:US20240351199A1
公开(公告)日:2024-10-24
申请号:US18739773
申请日:2024-06-11
Applicant: ZHENGZHOU UNIVERSITY OF LIGHT INDUSTRY
Inventor: Hao LI , Gen LIU , Yonglei WU , Haoqi WANG , Linli LI , Xiaoyu WEN , Shizhong WEI , Yuyan ZHANG , Like ZHANG , Weifei GUO
IPC: B25J9/16
CPC classification number: B25J9/163 , B25J9/1661
Abstract: A method for intelligently controlling a mechanical arm includes building a twin model of a mechanical arm, and extracting a state parameter and an action parameter corresponding to task characteristics from the twin model; determining a reward function corresponding to the task characteristics; training a twin delayed deep deterministic policy gradient (TD3) reinforcement learning model; simulating in the twin model based on a physical state parameter of the mechanical arm by using the TD3 reinforcement learning model, to obtain a controllable parameter; and controlling the mechanical arm to execute a corresponding task by using the controllable parameter. The TD3 reinforcement learning model is built based on the state parameter and the action parameter corresponding to the task characteristics and the reward function corresponding to the task characteristics, which can adapt to a dynamically changing environment and requirements for multiple tasks.
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