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Load Optimization Scheduling of Chip Mounter Based on Hybrid Adaptive Optimization 被引量:2
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作者 xuesong yan Hao Zuo +2 位作者 Chengyu Hu Wenyin Gong Victor S.Sheng 《Complex System Modeling and Simulation》 2023年第1期1-11,共11页
A chip mounter is the core equipment in the production line of the surface-mount technology,which is responsible for finishing the mount operation.It is the most complex and time-consuming stage in the production proc... A chip mounter is the core equipment in the production line of the surface-mount technology,which is responsible for finishing the mount operation.It is the most complex and time-consuming stage in the production process.Therefore,it is of great significance to optimize the load balance and mounting efficiency of the chip mounter and improve the mounting efficiency of the production line.In this study,according to the specific type of chip mounter in the actual production line of a company,a maximum and minimum model is established to minimize the maximum cycle time of the chip mounter in the production line.The production efficiency of the production line can be improved by optimizing the workload scheduling of each chip mounter.On this basis,a hybrid adaptive optimization algorithm is proposed to solve the load scheduling problem of the mounter.The hybrid algorithm is a hybrid of an adaptive genetic algorithm and the improved ant colony algorithm.It combines the advantages of the two algorithms and improves their global search ability and convergence speed.The experimental results show that the proposed hybrid optimization algorithm has a good optimization effect and convergence in the load scheduling problem of chip mounters. 展开更多
关键词 Surface Mount Technology(SMT) chip mounter load optimization scheduling adaptive genetic algorithm ant colony algorithm
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Dynamic Scheduling Algorithm Based on Evolutionary Reinforcement Learning for Sudden Contaminant Events Under Uncertain Environment
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作者 Chengyu Hu Rui Qiao +2 位作者 Zhe Zhang xuesong yan Ming Li 《Complex System Modeling and Simulation》 2022年第3期213-223,共11页
For sudden drinking water pollution event,reasonable opening or closing valves and hydrants in a water distribution network(WDN),which ensures the isolation and discharge of contaminant as soon as possible,is consider... For sudden drinking water pollution event,reasonable opening or closing valves and hydrants in a water distribution network(WDN),which ensures the isolation and discharge of contaminant as soon as possible,is considered as an effective emergency measure.In this paper,we propose an emergency scheduling algorithm based on evolutionary reinforcement learning(ERL),which can train a good scheduling policy by the combination of the evolutionary computation(EC)and reinforcement learning(RL).Then,the optimal scheduling policy can guide the operation of valves and hydrants in real time based on sensor information,and protect people from the risk of contaminated water.Experiments verify our algorithm can achieve good results and effectively reduce the impact of pollution events. 展开更多
关键词 evolutionary reinforcement learning water distribution network scheduling problem
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