Adaptive Environmental Sampling for Underwater Vehicles Based on Ant Colony Optimization Algorithm

Yichen Hu, Danrong Wang, Jianlong Li, Ye Wang, Hui Shen
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引用次数: 4

Abstract

The high-precision oceanographic environment parameters are important for the study of underwater acoustic channels. However, the oceanographic environment is complex and changeable. The underwater vehicles are useful for collecting data in the ocean, but their energy is limited. Thus, it is meaningful to study adaptive sampling methods of underwater vehicles to collect data in the ocean more efficiently, so as to make the estimation results of the forecast ocean environment more accurate. In the paper, an adaptive sampling method based on the ant colony algorithm (ACA) is proposed and simulated on the temperature field calculated by Regional Ocean Model System (ROMS) model. Firstly, the assimilation results of high resolution multistage spectral interpolation (HRMSI) technique are used to compare the effects of the ACA and the genetic algorithm (GA) in two-dimensional adaptive sampling path planning. Then, the ACA is extended to three-dimensional space considering the changes in the oceanographic environment in space-time domain. The simulation results show that this adaptive sampling method is beneficial for underwater vehicles to collect more efficient information in the ocean.
基于蚁群优化算法的水下航行器自适应环境采样
高精度的海洋环境参数对水声通道的研究具有重要意义。然而,海洋环境是复杂多变的。水下航行器在收集海洋数据方面很有用,但它们的能量有限。因此,研究水下航行器的自适应采样方法,提高海洋数据的采集效率,使预测海洋环境的估计结果更加准确,具有重要意义。提出了一种基于蚁群算法的自适应采样方法,并对区域海洋模式系统(ROMS)模型计算的温度场进行了仿真。首先,利用高分辨率多级光谱插值(HRMSI)同化结果,比较了遗传算法(GA)和ACA算法在二维自适应采样路径规划中的效果;然后,在时空域考虑海洋环境的变化,将ACA扩展到三维空间。仿真结果表明,这种自适应采样方法有利于水下航行器在海洋中更有效地采集信息。
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