基于ml的水下航行器洋流预测技术

Shaik Shakeera, V. Bala Naga Jyothi, H. Venkataraman
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引用次数: 0

摘要

实时动态洋流对水下航行器的精确导航具有重要意义。利用传统方法(如Navier-Stokes方程)估算和预测洋流,这些方法计算非常复杂,并且需要大量的历史海洋数据来建立数值模型。因此,在本文中,机器学习是基于不太复杂和易于部署的回归方法来识别洋流的最佳预测模型。进一步,将所有回归方法与R2评分、平均绝对误差(MAE)和均方误差(MSE)进行比较。在所有方法中,基于决策树回归的ML方法表现最好,准确率为84%,误差最小。利用数据关联可视化研究定性性能,生成热图并进行比较。
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ML-based techniques for prediction of Ocean currents for underwater vehicles
Dynamic ocean current in real-time plays a significant role for the precise navigation of underwater vehicles. Estimation and prediction of ocean currents with traditional methods such as Navier–Stokes equations, which are computationally very complex and also need huge historical ocean data for developing numerical models. Hence, in this paper Machine Learning, based on less complex and easily deployable regression methods is exercised to identify the best prediction model for ocean currents. Further, all the regression methods performed were compared with the R2 score, Mean Absolute Error (MAE) and Mean Square Error (MSE). Among all methods, the Decision tree regression-based ML method performed best with 84% accuracy with minimal error. Qualitative performance is studied using visualization of data correlation, heat maps are also generated and compared.
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