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Research on Underwater Acoustic Location Algorithm Based on Multilayer Extreme Learning Machine

机译:基于多层极限学习机的水下声定位算法研究

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In view of underwater acoustic positioning model which is complex, highly nonlinear and solving difficult, as well as the low accuracy of underwater acoustic gradient measurement, an underwater acoustic positioning algorithm based on multilayer extreme learning machine(MELM) networks was proposed to achieve the high accuracy of underwater target positioning. In this paper, the first layer ELM network in the algorithm is proposed to realize the initial location of sound source, solve its approximate location, and eliminate invalid data. The second layer ELM network calibrates the underwater acoustic velocity relying on the initial position depth, and uses the filtered data to achieve higher positioning accuracy for the target. Simulation results show that the underwater acoustic positioning algorithm using multilayer ELM networks has higher positioning accuracy and stronger fault tolerance.
机译:针对水下声学定位模型复杂,非线性高,求解难度大以及水下声学梯度测量精度低的问题,提出了一种基于多层极限学习机(MELM)网络的水下声学定位算法。水下目标定位的准确性。本文提出了算法中的第一层ELM网络,以实现声源的初始定位,求解声源的近似位置,消除无效数据。第二层ELM网络依赖于初始位置深度来校准水下声速,并使用滤波后的数据为目标实现更高的定位精度。仿真结果表明,采用多层ELM网络的水下声定位算法具有较高的定位精度和较强的容错能力。

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