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Performance Study of the Application of Artificial Neural Networks to the Completion and Prediction of Data Retrieved by Underwater Sensors

机译:人工神经网络在水下传感器反演数据的完成和预测中的性能研究

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This paper presents a proposal for an Artificial Neural Network (ANN)-based architecture for completion and prediction of data retrieved by underwater sensors. Due to the specific conditions under which these sensors operate, it is not uncommon for them to fail, and maintenance operations are difficult and costly. Therefore, completion and prediction of the missing data can greatly improve the quality of the underwater datasets. A performance study using real data is presented to validate the approach, concluding that the proposed architecture is able to provide very low errors. The numbers show as well that the solution is especially suitable for cases where large portions of data are missing, while in situations where the missing values are isolated the improvement over other simple interpolation methods is limited.
机译:本文提出了一种基于人工神经网络(ANN)的体系结构的建议,该体系结构用于完成和预测由水下传感器检索到的数据。由于这些传感器在特定条件下运行,因此发生故障的情况并不罕见,并且维护操作困难且成本高昂。因此,缺失数据的完成和预测可以大大提高水下数据集的质量。提出了使用实际数据进行的性能研究,以验证该方法,认为所建议的体系结构能够提供非常低的错误。数字也表明,该解决方案特别适用于丢失大量数据的情况,而在丢失值被隔离的情况下,与其他简单插值方法相比,改进受到限制。

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