2014
DOI: 10.1016/j.pnucene.2014.03.002
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Path-planning research in radioactive environment based on particle swarm algorithm

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Cited by 51 publications
(12 citation statements)
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“…(a) Case One: Ten Targets Need to Be Rescued. Consider the situation that ten targets need to be rescued, and their positions are (70, 0), (60, 25), (80, 40), (80, 80), (20,45), (15,65), (36,87), (41,22), (95,20), and (2,11). From formula (4), the initial strengths (after the disaster) of all these targets are 14.03, 9.05, 6.71, 3.61, 10.30, 10.05, 6.73, 10.73, 11.66, and 17.26, respectively.…”
Section: Simulation Results Of Two Casesmentioning
confidence: 99%
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“…(a) Case One: Ten Targets Need to Be Rescued. Consider the situation that ten targets need to be rescued, and their positions are (70, 0), (60, 25), (80, 40), (80, 80), (20,45), (15,65), (36,87), (41,22), (95,20), and (2,11). From formula (4), the initial strengths (after the disaster) of all these targets are 14.03, 9.05, 6.71, 3.61, 10.30, 10.05, 6.73, 10.73, 11.66, and 17.26, respectively.…”
Section: Simulation Results Of Two Casesmentioning
confidence: 99%
“…The positions of the 100 targets in case two are listed as follows: (70, 0), (60, 25), (82, 40), (80, 80), (20,45), (15,65), (36,87), (41,22), (95, 50), (2,11), (73, 10), (60, 35), (8,50), (20,90), (20,55), (15,76), (36,70), (41, 12), (95, 52), (12,17), (76,8), (60, 15), (29,30), (80, 70), (20, 35, (15, 55), (36,47), (41, 12), (95, 40), (2,31), (71,20), (60, 70), (11,90), (89,20), (20,2), (15,40), (36,65), (41, 6), (95, 40), (2,15), (70, 27), (60, 10), (88, 40), (26,60), (20,30), (15,3...…”
Section: Appendixmentioning
confidence: 99%
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“…A fitness-scaling adaptive Chaotic PSO approach was presented to solve the path planning of UCAVs [46]. Based on PSO, Liu et al [47] introduced some key technologies for path planning in radiation environment. The probability and effectiveness of the method is verified by the experiment.…”
Section: Psomentioning
confidence: 99%
“…The idea of GA is also used in the path planning using BEA which more adaptive than GA [9][10] [11]. The other evolutionary algorithms that were used to produce path planning were PSO [11] [12], [14], [15]. Each particle represents a potential solution that is evaluated by three factors: position, velocity, and adaptability.…”
Section: Related Workmentioning
confidence: 99%