A machine learning approach to argo data analysis in a thermocline

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Abstract

With the rapid development of sensor networks, big marine data arises. To efficiently use these data to predict thermoclines, we propose a machine learning approach. We firstly focus on analyzing how temperature, salinity, and geographic location features affect the formation of thermocline. Then, an improved model based on entropy value method for the thermocline selection is demonstrated. The experiments adopt BOA Argo data sets and the experimental results show that our novel model can predict thermoclines and related data effectively.

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Jiang, Y., Gou, Y., Zhang, T., Wang, K., & Hu, C. (2017). A machine learning approach to argo data analysis in a thermocline. Sensors (Switzerland), 17(10). https://doi.org/10.3390/s17102225

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