Research on path planning of robot based on adaptive ACS fused with SHAA neural network
In this paper, we proposed an adaptive ACS algorithm by introducing an adaptive pheromone volatility coefficient and the algorithm diversity dynamically varying in different iterations of the algorithm. It incorporates a shunting hierarchical hybrid neural network application algorithm (Shunting HHN...
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2020-11-01
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Online Access: | https://doi.org/10.1177/0020294020959751 |
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doaj-6c55fda78cbf4e1f999f1595ccff99302021-02-04T06:03:26ZengSAGE PublishingMeasurement + Control0020-29402020-11-015310.1177/0020294020959751Research on path planning of robot based on adaptive ACS fused with SHAA neural networkChen HaiyangNiu LonghuiJi YebiaoIn this paper, we proposed an adaptive ACS algorithm by introducing an adaptive pheromone volatility coefficient and the algorithm diversity dynamically varying in different iterations of the algorithm. It incorporates a shunting hierarchical hybrid neural network application algorithm (Shunting HHNN Application Algorithm, SHAA) to overcome the drawbacks of global optimization capabilities of ant colony system (ACS) in solving robot path and easily being trapped into the local optimal solution. Considering the influence of the activation value size on the selection of the grid in the SHAA neural network algorithm, the distance factor and the activation value are combined to improve the heuristic function. This will not only ensure the convergence speed, but also avoid the premature stagnation and being trapped into a local optimal path. Simulation results show that the algorithm discussed in this paper outperforms better in both the global optimization ability and the robustness.https://doi.org/10.1177/0020294020959751 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chen Haiyang Niu Longhui Ji Yebiao |
spellingShingle |
Chen Haiyang Niu Longhui Ji Yebiao Research on path planning of robot based on adaptive ACS fused with SHAA neural network Measurement + Control |
author_facet |
Chen Haiyang Niu Longhui Ji Yebiao |
author_sort |
Chen Haiyang |
title |
Research on path planning of robot based on adaptive ACS fused with SHAA neural network |
title_short |
Research on path planning of robot based on adaptive ACS fused with SHAA neural network |
title_full |
Research on path planning of robot based on adaptive ACS fused with SHAA neural network |
title_fullStr |
Research on path planning of robot based on adaptive ACS fused with SHAA neural network |
title_full_unstemmed |
Research on path planning of robot based on adaptive ACS fused with SHAA neural network |
title_sort |
research on path planning of robot based on adaptive acs fused with shaa neural network |
publisher |
SAGE Publishing |
series |
Measurement + Control |
issn |
0020-2940 |
publishDate |
2020-11-01 |
description |
In this paper, we proposed an adaptive ACS algorithm by introducing an adaptive pheromone volatility coefficient and the algorithm diversity dynamically varying in different iterations of the algorithm. It incorporates a shunting hierarchical hybrid neural network application algorithm (Shunting HHNN Application Algorithm, SHAA) to overcome the drawbacks of global optimization capabilities of ant colony system (ACS) in solving robot path and easily being trapped into the local optimal solution. Considering the influence of the activation value size on the selection of the grid in the SHAA neural network algorithm, the distance factor and the activation value are combined to improve the heuristic function. This will not only ensure the convergence speed, but also avoid the premature stagnation and being trapped into a local optimal path. Simulation results show that the algorithm discussed in this paper outperforms better in both the global optimization ability and the robustness. |
url |
https://doi.org/10.1177/0020294020959751 |
work_keys_str_mv |
AT chenhaiyang researchonpathplanningofrobotbasedonadaptiveacsfusedwithshaaneuralnetwork AT niulonghui researchonpathplanningofrobotbasedonadaptiveacsfusedwithshaaneuralnetwork AT jiyebiao researchonpathplanningofrobotbasedonadaptiveacsfusedwithshaaneuralnetwork |
_version_ |
1724285476900175872 |