Home Technology peripherals AI The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

Jun 12, 2023 pm 02:04 PM
AI robot Contest

Hainan Vocational University of Science and Technology won 114 first prizes and 114 items in the Hainan Division of the 25th China Robot and Artificial Intelligence Competition

The results of the Hainan Division of the 25th China Robot and Artificial Intelligence Competition were announced recently. Hainan Vocational University of Science and Technology won 30 first prizes, 40 second prizes, and 44 third prizes in the Hainan competition area. It is the team with the most awards among participating schools in Hainan Province, and was selected as an outstanding organizational unit!

In this competition, teachers Zheng Bing and Zhao Feng of Hainan Vocational University of Science and Technology guided students Yin Juntao, Liu Yuanyuan, and Deng Wenhao to participate in the robot task challenge (target shooting); teachers Zhou Han and Zhao Feng guided students Shen Mengbin, Han Qiankun, and Chen Dong to participate in the robot Innovation competition; teachers Chen Danping and Zhou Han guided students Chen Zhida, Xu Lijuan, and Hu Wenchuang to participate in the robot innovation competition; teachers Wang Chuanbo and Lin Feng guided students He Jiayang and Wang Zhiqiang to participate in the robot dance competition (humanoid single); teachers Zhou Han and Chen Danping guided students Wang Menghui , Ye Guang, and Peng Pengpeng participated in the smart home appliance innovation competition; teachers Chen Danping and Zhou Han guided students Liu Yanming and Mo Jingtian to participate in the smart home appliance innovation competition; teachers Chen Danping and Zhou Han guided students Liu Bing, Yu Zhe, and Yang Yang to participate in the smart cultural creative innovation competition; Teachers Zhou Han and Chen Danping guided students Wang Zhengdong and Liu Yuanyuan to participate in the intelligent cultural creative innovation competition; teachers Han Huimin and Dai Wenjuan guided students Ma Yunlong, Wang Ning, and Chen Xuanzhi to participate in the intelligent manufacturing digital twin innovation competition; teachers Zhou Han and Chen Danping guided students Lai Kanghao, Wang Jingchen, and Yang Xiaolong Participated in the Intelligent Manufacturing Digital Twin Innovation Competition; teachers Chen Danping and Zhou Han guided students Zheng Lubin, Zhong Shanbo, and Wu Yusong to participate in the Intelligent Manufacturing Digital Twin Innovation Competition; teachers Zhou Han and Chen Danping guided students Zhang Runze, Wang Zhihao, and Zhu Qianjiang to participate in the Intelligent Manufacturing Digital Twin Innovation teachers Li Donglou and Xie Hui guided students Wang Genyuan, Miao Yanfeng, and Zhai Haochen to participate in the robot competition (Simuro football); teachers Li Zehan and Dai Wenjuan guided students Xiang Hong and Liao Yaoxian to participate in the robot competition (humanoid irregular terrain); Sun Ming , Teacher He Bowen guided students Hu Ning, Li Junlong, and Zhang Linyang to participate in the robot competition (humanoid penalty kick); teachers Sun Ming and Hong Shaodong guided students Hu Ning, Li Junlong, and Zhang Linyang to participate in the robot competition (humanoid sprint); Teachers Li Zehan and Wu Yujun guided students Zhang Huasheng and Sima Jun to participate in the robot competition (humanoid obstacle course); teachers Li Zehan and Zhao Feng guided students Yang Jintian and Yang Zhiwen to participate in the robot task challenge (Roban humanoid standard platform); teachers Li Zehan and Zhuo Yicheng Guiding students Tan Zhengwei and Fu Lianggang to participate in the Robot Task Challenge (Virtual Simulation of Roban Humanoid Standard Platform); Teachers Li Manman and Tang Yulong guided students Zhang Taiyao and Li Fangyu to participate in the Robot Task Challenge (Micro Drone); Teachers Xu Dongliang and Li Chuhui Guiding students Xu Mingxuan and Wang Zhe to participate in the Robot Task Challenge (micro drone); teachers Hu Nan and Li Chuhui guided students Zhang Huaqing and Li Fangyu to participate in the Robot Task Challenge (unmanned collaborative system); teachers Tang Yulong and Li Chuhui guided students Yao Yue, Zhang Taiyao participated in the Robot Task Challenge (unmanned collaborative system); teachers Wang Yanping and Li Chuhui guided students Xu Mingxuan and Wang Zhe to participate in the Robot Task Challenge (unmanned collaborative system); teachers Zhao Feng and Han Huimin guided students Zhang Jian and Chen Xuanzhi to participate in the Robot Task Challenge (Smart Pharmacy); Teachers He Bowen and Feng Liying guided students Shi Qimeng, Meng Haojie, and Yang Shengbiao to participate in the Robot Mission Challenge (Autonomous Cruise); Teachers He Bowen and Feng Liying guided students Meng Haojie, Shi Qimeng, and Yang Shengbiao to participate in the quadruped bionic robot competition (Small group); Teachers Feng Liying and He Bowen guided students Wei Guoqiao, Chen Zhida, and Sun Zhen to participate in the quadruped bionic robot competition (medium group); Teachers Wu Yujun and Han Huimin guided students Sima Jun and Tang Huibao to participate in the robot application competition (smart elderly care); Han Huimin , Teacher Dai Wenjuan guided students Zhou Jingwen and Fu Yongfeng to participate in the Robot Application Competition (Smart Home Service) and won 30 first prizes.

Teachers Zheng Bing and Zhao Feng guided students Shao Chongyang and Li Daoliang to participate in the quadruped bionic robot competition (medium group); Zhang Longjun, Zhang Lili, and Gao Dalin participated in the robot task challenge (target shooting); Bruce Lee 1 and Qin Hailong participated in the robot task Challenge (autonomous cruise). Teachers Han Huimin and Song Yanpei guided students Ma Yunlong and Wang Lihong to participate in the robot innovation competition; teachers Jie Junwu and Xie Hui guided students Tan Qiang, Yang Xiaoyu, and Bao Jiale to participate in the robot innovation competition; teachers Zhao Feng and Zhou Han guided students Wei Zixin, Zhang Xiaoyang, and Ye Yuyang to participate in the robot innovation competition competition; teachers Han Huimin and Dai Wenjuan guided students Tang Huibao and Zhang Yang to participate in the robot dance competition (humanoid single); teachers Zhou Han and Song Yanpei guided students Liu Bing and Zeng Xiangdi to participate in the artificial intelligence innovation competition; teachers Dai Wenjuan and Han Huimin guided students Long Tao , Liu Yang participated in the artificial intelligence innovation competition; teachers Chen Danping and Zhou Han guided students Meng Haojie and Xu Songhao to participate in the artificial intelligence innovation competition; teachers Zhou Han and Lin Xiaoli guided students Zhang Hui, Huang Chaochao, and He Junfeng to participate in the smart home appliance innovation competition; teachers Han Huimin and Zhao Feng guided students Cheng Zhangcai and Huang Baixiang participated in the smart home appliance innovation competition; teachers Wang Yanping and Chen Danping guided students Wang Menghui, Miao Zhengtai, and Jing Hao to participate in the smart cultural creative innovation competition; teachers Chen Danping and Zhou Han guided students Yang Zicong and Wang Xiaolong to participate in the smart cultural creative innovation competition; teachers Chen Danping and Zhao Feng Guiding students Nie Yaqi and Ma Yunlong to participate in the Intelligent Cultural Creative Innovation Competition; Teachers Zhou Han and Chen Danping guided students Wang Zhihao, Wei Zixin, and Gang Zihui to participate in the Intelligent Cultural Creative Innovation Competition; Teachers Zhou Han and Chen Gengxin guided students Zhou Xulan, Chen Linfeng, and Yang Bingxia Participated in the Intelligent Manufacturing Digital Twin Innovation Competition; teachers Zhou Han and Zhao Feng guided students Liu Wenfu, Chen Zhengren, and Yang Jie to participate in the Intelligent Manufacturing Digital Twin Innovation Competition; teachers Zhao Feng and Feng Liying guided students Gao Jinbo and Wei Guoqiao to participate in the robot competition (Simuro Football); Wan Fang, Teacher Li Zehan guided students Wang Daowei and Yang Fanghui to participate in the robot competition (humanoid irregular terrain); teachers Zhao Feng and Hong Shaodong guided students Zou Chengen and Wu Zonghong to participate in the robot competition (humanoid penalty kick); teachers Zhao Feng and Wu Yujun guided students Pan Zaishuang, Tan Hongjian and Ma Shengde participated in the robot competition (humanoid sprint); teachers Sun Ming and Han Huimin guided students Hu Ning, Li Junlong, and Zhang Linyang to participate in the robot competition (humanoid obstacle course); teachers Lin Xiaoli and Chen Danping guided students Yang Zicong, Wang Xiaolong, and Chen Zhen participated in the Intelligent Manufacturing Digital Twin Innovation Competition; Teachers Kong Fanqing and Zhou Han guided students Zhang Taiyao, Jiang Bianhao, and Luo Yulu to participate in the Intelligent Manufacturing Digital Twin Innovation Competition; Teachers Chen Danping and Zhou Han guided students Mai Yiyu, Hou Yaoxiang, and Liang Chengcheng to participate in Intelligent Manufacturing Digital Twin Innovation Competition; Teachers Chen Danping and Zhou Han guided students Chen Mengli, Xu Weiwei, and Yan Yanan to participate in the Intelligent Manufacturing Digital Twin Innovation Competition; Teachers Zhao Feng and Wan Fang guided students Zhang Hongming, Li Junlong, and Zhang Linyang to participate in the Robot Task Challenge (Aelos Humanoid Standard Platform ); Teacher Sun Ming guided students Yang Zhiwen and He Yongjin to participate in the Robot Task Challenge (Aelos Humanoid Standard Platform); Teachers He Bowen and Sun Ming guided students Wang Zhiqiang and He Jiayang to participate in the Robot Task Challenge (Roban Humanoid Standard Platform); Hu Nan , Teacher Zhao Feng guided students Chen Xingnan, Zhang Shen, and Wu Jiahao to participate in the Robot Task Challenge (Roban Humanoid Standard Platform); Teachers Zhao Feng and He Bowen guided students Zeng Dechong and Chen Youlu to participate in the Robot Task Challenge (Roban Humanoid Standard Platform Virtual Simulation); Tang Yulong , Teacher Li Manman guided students Li Yaoda and Nie Yaqi to participate in the Robot Task Challenge (micro drone); Teachers Li Chuhui and Jin Lei guided students Li Yaoda and Hou Lihui to participate in the Robot Task Challenge (unmanned collaborative system); Teachers Han Huimin and Dai Wenjuan guided the students Zhou Jingwen, Chen Tianyong, and Tang Huibao participated in the Robot Task Challenge (Smart Pharmacy); teachers Feng Liying and Zhao Feng guided students Su Qingbo and Ke Xingxue to participate in the Robot Task Challenge (Smart Pharmacy); teachers Li Manman and He Bowen guided students Hou Lihui and Nie Yaqi to participate in the quadruped bionic Robot competition (small group); teachers Han Huimin and Wu Yujun guided students Ma Shengde, Yu Jinbao, and Liao Yaoxian to participate in the robot application competition (urban road recognition); teachers Wu Yujun and Dai Wenjuan guided students Zhang Liangwei and Lu Fusheng to participate in the robot application competition (smart elderly care); Teachers Wu Yujun and Han Huimin guided students Sima Jun and Li Liwen to participate in the Robot Application Competition (Smart Home Service) and win 40 second prizes.

Teachers Zheng Bing and Zhao Feng guided students Hu Minmin and Zhang Zhiqiang to participate in the quadruped bionic robot competition (medium-sized group); Fu Chengdong, Gao Dalin, and Ren Xuanyu participated in the robot mission challenge (autonomous cruise). Teachers Dai Wenjuan and Han Huimin guided students Long Tao and Liu Yang to participate in the robot innovation competition; teachers Xie Hui and Xie Jiesheng guided students Li Yuanbao, Jia Wenze, and Li Xiwei to participate in the robot innovation competition; teacher Liu Ling guided students Zhi Guinan, Yue Lin, and Su Qian to participate in the robot innovation competition competition; teachers Li Zehan and Dai Wenjuan guided students Gao Yuanlu and Shi Jinhong to participate in the robot dance competition (humanoid single); teachers Dai Wenjuan and Hong Shaodong guided students Zhang Hongming, Li Zhenxiong, and He Wei to participate in the robot dance competition (humanoid single); Sun Ming, Li Teacher Manman guided students Chen Xingnan, Zhang Shen, and Wu Jiahao to participate in the robot dance competition (humanoid single); teachers Chen Danping and Han Huimin guided students Chen Chaohai, Yang Huiming, and Fu Chuanyang to participate in the robot dance competition (humanoid single); Zhou Han and Chen Danping Teachers guided students Jing Hao, Wang Dusen, and Ren Yuxu to participate in the Artificial Intelligence Innovation Competition; teachers Han Huimin and Dai Wenjuan guided students Huang Xiaojie and Chen Xuanzhi to participate in the Smart Home Appliances Innovation Competition; teachers Chen Danping and Zhao Feng guided students Ye Yuyang, Wang Gang, and Zhang Xiaoyang to participate in the Intelligent Cultural Creative Innovation Competition; Lin Xiaoli , Teacher Peng Jinyin guided students He Junfeng, Wang Jingchen, and Chen Zhen to participate in the Intelligent Cultural Creative Innovation Competition; Teachers Zhou Han and Li Manman guided students Zhang Runze, Xie Wenji, and Yan Yanan to participate in the Intelligent Cultural Creative Innovation Competition; Teachers Wang Yanping and Zhou Han guided students Zeng Xiangdi , Ye Yangze, and Liu Yanming participated in the Intelligent Cultural Creative Innovation Competition; teachers Chen Danping and Song Yanpei guided students Li Ruyun, Hu Minmin, and Huang Jiarong to participate in the Intelligent Manufacturing Digital Twin Innovation Competition; teachers Zhao Feng and Li Manman guided students Hou Lihui and Nie Yaqi to participate in the robot competition (Simuro Football); teachers Li Zehan and Han Huimin guided students Yu Jinbao and Li Weilie to participate in the robot competition (humanoid irregular terrain); teachers Wan Fang and Zhao Feng guided students Deng Tongpeng and Zhang Yiyuan to participate in the robot competition (humanoid penalty kick); teachers Li Zehan and Dai Wenjuan guided Students Jin Zhi and Wei Zechao participated in the robot competition (humanoid penalty kick); teachers Zhao Feng and Sun Ming guided students Fu Haizhou, Xing Ricai, and Zhao Shihang to participate in the robot competition (humanoid sprint); teachers He Bowen and Li Zehan guided students Cui Yicheng and Wang Jiamei to participate Robot Competition (Humanoid Sprint); Teachers Li Zehan and Han Huimin guided students Fu Yongfeng and Yang Lidong to participate in Robot Competition (Humanoid Obstacle Run); Teachers Sun Ming and Hong Shaodong guided students Wu Zonghong and Zou Chengen to participate in Robot Competition (Humanoid Obstacle Run) ); teachers Sun Ming and Hong Shaodong guided students Zou Chengen, Hu Ning, and Wu Zonghong to participate in the Robot Task Challenge (Roban Humanoid Standard Platform); teachers He Bowen and Tang Yulong guided students Wang Can and Chen Dong to participate in the Robot Task Challenge (Roban Humanoid Standard Platform) Standard Platform); Teachers Dai Wenjuan and Sun Ming guided students Huang Xin and Xing Liyun to participate in the Robot Task Challenge (Virtual Simulation of Roban Humanoid Standard Platform); Teachers Sun Ming and Zhao Feng guided students Wu Zonghong, Zou Chengen, and Hu Ning to participate in the Robot Task Challenge (Roban Standard Platform) Roban humanoid standard platform virtual simulation); Teachers Zhao Feng and Peng Jinyin guided students Ren Xuanyu and Li Maoxiang to participate in the Robot Task Challenge (target shooting); Teachers Feng Liying and He Bowen guided students Ke Xingxue and Tang Huibao to participate in the Robot Task Challenge (target shooting); He Bowen , Teacher Wu Yujun guided students Chen Guorui and Zhang Liangwei to participate in the Robot Task Challenge (micro-UAV); teachers Han Huimin and Zhao Feng guided students Ma Yunlong and Lai Xiujie to participate in the Robot Task Challenge (micro-UAV); teachers Tang Yulong and Li Chuhui guided students Yao Yue and Jiang Bianhao participated in the Robot Task Challenge (micro drone); teachers Tang Yulong and Li Chuhui guided students Ma Yunlong and Nie Yaqi to participate in the Robot Task Challenge (unmanned collaborative system); teachers Li Zehan and Wu Yujun guided students Mai Zhuang and Lu Fusheng participated in the Robot Task Challenge (Smart Pharmacy); Teachers Zhao Feng and Dai Wenjuan guided students Zhao Zhiyong and Qiu Caihua to participate in the Robot Task Challenge (Smart Pharmacy); Teachers Zhao Feng and Peng Jinyin guided students Huang Zhiying, Li Shuoqi, and Lai Xiujie to participate in the Robot Task Challenge (autonomous cruise) ); teachers He Bowen and Jin Lei guided students Zhang Lili, Fu Chengdong, and Zhang Longjun to participate in the quadruped bionic robot competition (small group); teachers He Bowen and Li Manman guided students Hou Lihui and Nie Yaqi to participate in the quadruped bionic robot competition (medium group) ); Teachers Dai Wenjuan and Li Zehan guided students Xiang Hong and Duan Zuodong to participate in the Robot Application Competition (Urban Road Identification); Teachers Han Huimin and Li Zehan guided students Shen Zhitong, Huang Zongrong, and Yang Lidong to participate in the Robot Application Competition (Smart Agriculture); Teachers Dai Wenjuan and Wu Yujun guided students Chen Zonghuan, Lai Xiujie participated in the Robot Application Competition (Smart Agriculture); teachers Dai Wenjuan and Han Huimin guided students Mai Zhuang and Fu Yongfeng to participate in the Robot Application Competition (Smart Elderly Care); teachers He Bowen and Peng Jinyin guided students Zeng Dechong and Chen Youlu to participate in the Robot Application Competition (Smart Home Services) and won three 44 prizes were awarded.

Zheng Bing, Feng Liying, Zhao Feng, He Bowen, Li Donglou, Han Huimin, Chen Danping, Zhou Han, Tang Yulong, Li Zehan, Sun Ming, Wang Chuanbo, Li Manman, Xu Dongliang, Hu Nan, Wang Yanping, Wu Yujun and other 17 people were arrested Rated as an outstanding instructor.

This competition fully demonstrates the school’s teaching strength in fields related to robotics and artificial intelligence. In recent years, Hainan Vocational University of Science and Technology has actively built a training base for skills competitions, created a first-class training environment for students, advocated a new talent training method of "using competitions to train, using competitions to promote learning", and supported students to participate in various skills competitions. Hainan Vocational University of Science and Technology continues to show outstanding performance and dazzling results in various skills competitions

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

The Hainan Division of the 25th China Robot and Artificial Intelligence Competition of Hainan Vocational University of Science and Technology won 114 first prizes and other awards

Editor/Tao Ling

Proofreading/Wang Xiaotian

audit/Jingjie

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