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A Performance Optimization Strategy Based on Improved NSGA-II for a Flexible Robotic Fish

Ben Lu, Jian Wang, Xiaocun Liao, Qianqian Zou, Min Tan, Chao Zhou

Year
2023
Citations
2

Abstract

The high speed and low energy cost are two conflicting objectives in the motion optimization of bio-inspired underwater robots, but playing a very important role. To this end, this paper proposes an optimization strategy for swimming speed and power cost using an improved NSGA-II for a flexible robotic fish. A dynamic model involving flexible deformation is established for speed prediction with the hydrodynamic parameters identified. A back propagation (BP) neural network is applied to perform compensation of power cost prediction with the dynamic model's prediction as input. In particular, an NSGA-II-AMS method is developed to improve the efficiency of solving the two-objective optimization problem based on NSGA-II. Finally, extensive simulations and experimental results demonstrate the effectiveness of the proposed optimization strategy, which offers promising prospects for the flexible robotic fish performing aquatic tasks with different performance constraints.

Keywords

Computer scienceCompensation (psychology)UnderwaterArtificial neural networkFish <Actinopterygii>Multi-objective optimizationPower (physics)RobotOptimization problemMathematical optimization

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