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Global optimal path planning for mobile robot based onimproved Dijkstra algorithm and ant system algorithm 被引量:21
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作者 谭冠政 贺欢 Aaron Sloman 《Journal of Central South University of Technology》 EI 2006年第1期80-86,共7页
A novel method of global optimal path planning for mobile robot was proposed based on the improved Dijkstra algorithm and ant system algorithm. This method includes three steps: the first step is adopting the MAKLINK ... A novel method of global optimal path planning for mobile robot was proposed based on the improved Dijkstra algorithm and ant system algorithm. This method includes three steps: the first step is adopting the MAKLINK graph theory to establish the free space model of the mobile robot, the second step is adopting the improved Dijkstra algorithm to find out a sub-optimal collision-free path, and the third step is using the ant system algorithm to adjust and optimize the location of the sub-optimal path so as to generate the global optimal path for the mobile robot. The computer simulation experiment was carried out and the results show that this method is correct and effective. The comparison of the results confirms that the proposed method is better than the hybrid genetic algorithm in the global optimal path planning. 展开更多
关键词 mobile robot global optimal path planning improved dijkstra algorithm ant system algorithm MAKLINK graph free MAKLINK line
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Optimal path planning method of electric vehicles considering power supply 被引量:7
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作者 GUO Dong LI Chao-chao +8 位作者 YAN Wei HAO Yu-jiao XU Yi WANG Yu-qiong ZHOU Ying-chao E Wen-juan ZHANG Tong-qing GAO Xing-bang TAN Xiao-chuan 《Journal of Central South University》 SCIE EI CAS CSCD 2022年第1期331-345,共15页
Because of the limitations of electric vehicle(EV)battery technology and relevant supporting facilities,there is a great risk of breakdown of EVs during driving.The resulting driver“range anxiety”greatly affects the... Because of the limitations of electric vehicle(EV)battery technology and relevant supporting facilities,there is a great risk of breakdown of EVs during driving.The resulting driver“range anxiety”greatly affects the travel quality of EVs.These limitations should be overcome to promote the use of EVs.In this study,a method for travel path planning considering EV power supply was developed.First,based on real-time road conditions,a dynamic energy model of EVs was established considering the driving energy and accessory energy.Second,a multi-objective travel path planning model of EVs was constructed considering the power supply,taking the distance,time,energy,and charging cost as the optimization objectives.Finally,taking the actual traffic network of 15 km×15 km area in a city as the research object,the model was simulated and verified in MATLAB based on Dijkstra shortest path algorithm.The simulation results show that compared with the traditional route planning method,the total distance in the proposed optimal route planning method increased by 1.18%,but the energy consumption,charging cost,and driving time decreased by 11.62%,41.26%and 11.00%,respectively,thus effectively reducing the travel cost of EVs and improving the driving quality of EVs. 展开更多
关键词 electric vehicle vehicle special power charging path multi-objective optimization dijkstra algorithm
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Application of rough graph in relationship mining 被引量:2
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作者 He Tong Xue Peijun Shi Kaiquan 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2008年第4期742-747,共6页
Based on the definition of class shortest path in weighted rough graph, class shortest path algorithm in weighted rough graph is presented, which extends classical shortest path algorithm. The application in relations... Based on the definition of class shortest path in weighted rough graph, class shortest path algorithm in weighted rough graph is presented, which extends classical shortest path algorithm. The application in relationship mining shows effectiveness of it. 展开更多
关键词 rough graph weighted rough graph class shortest path dijkstra algorithm relationship mining
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