Kumar Sathish, Chinthaginjala Ravikumar, C Dhanamjayulu, Kim Tai-Hoon, Abbas Mohammed, Pau Giovanni, Reddy Nava Bharath
School of Electronics Engineering, Vellore Institute of Technology, Vellore, 632014, India.
School of Electrical and Computer Engineering, Yeosu Campus, Chonnam National University, 50 Daehak-ro, Yeosu-si, Jeollanam-do, 59626, Republic of Korea.
Heliyon. 2024 Mar 30;10(7):e28725. doi: 10.1016/j.heliyon.2024.e28725. eCollection 2024 Apr 15.
Environmental monitoring, ocean research, and underwater exploration are just a few of the marine applications that require precise underwater target localization. This study goes into the field of underwater target localization using Recurrent Neural Networks (RNNs) enhanced with proximity-based approaches, with a focus on mean estimation error as a performance metric. In complex and dynamic underwater environments, conventional localization systems frequently face challenges such as signal degradation, noise interference, and unstable hydrodynamic conditions. This paper presents a novel approach to employing RNNs to increase the accuracy of underwater target localization by exploiting the temporal dynamics of proximity-informed data. This method uses an RNN architecture to track changes in audio emissions from underwater targets sensed by a microphone network. Using the temporal correlations represented in the data, the RNN learns patterns indicative of target localization quickly and correctly. Furthermore, the addition of proximity-based features increases the model's ability to understand the relative distances between hydrophone nodes and the target, resulting in more accurate localization estimates. To evaluate the suggested methodology, thorough simulations and practical experiments were carried out in a variety of underwater environments. The results show that the RNN-based strategy beats conventional methods and works effectively even in difficult settings. The utility of the proximity-aware RNN model is demonstrated, in particular, by considerable reductions in the mean estimate error (MEE), an important performance measure.
环境监测、海洋研究和水下探测只是需要精确水下目标定位的部分海洋应用。本研究进入了使用基于接近度方法增强的递归神经网络(RNN)进行水下目标定位的领域,重点是将平均估计误差作为性能指标。在复杂且动态的水下环境中,传统定位系统经常面临诸如信号退化、噪声干扰和不稳定的水动力条件等挑战。本文提出了一种新颖的方法,即通过利用接近度信息数据的时间动态来使用RNN提高水下目标定位的准确性。该方法使用RNN架构来跟踪由麦克风网络感测到的水下目标音频发射的变化。利用数据中表示的时间相关性,RNN能够快速且正确地学习指示目标定位的模式。此外,添加基于接近度的特征提高了模型理解水听器节点与目标之间相对距离的能力,从而产生更准确的定位估计。为了评估所建议的方法,在各种水下环境中进行了全面的模拟和实际实验。结果表明,基于RNN的策略优于传统方法,并且即使在困难的环境中也能有效工作。特别是,通过显著降低作为重要性能指标的平均估计误差(MEE),证明了接近度感知RNN模型的实用性。