Proper Weather Forecasting Internet of Things Sensor Framework with Machine Learning

Authors

  • Anil V Turukmane Vellore Institute of Technology University image/svg+xml
  • Sagar Dhanraj Pande Vellore Institute of Technology University image/svg+xml

DOI:

https://doi.org/10.4108/eetiot.5382

Abstract

Recent times have seen a rise in the amount of focus placed on the configurations of big data and the Internet of Things (IoT). The primary focus of the researchers was the development of big data analytics solutions based on machine learning. Machine learning is becoming more prevalent in this sector because of its ability to unearth hidden traits and patterns, even within exceedingly complicated datasets. This is one reason why this is the case. For the purpose of this study, we applied our Big Data and Internet of Things (IoT)-based system to a use case that involved the processing of weather information. We put climate clustering and sensor identification algorithms into practice by using data that was available to the general public. For this particular application, the execution information was shown as follows:every single level of the construction. The training method that we've decided to use for the package is a k-means cluster that's based on Scikit-Learn. According to the results of the information analyses, our strategy has the potential to be utilized in usefully retrieving information from a database that is rather complicated.

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Published

12-03-2024

How to Cite

[1]
A. V. Turukmane and S. D. Pande, “Proper Weather Forecasting Internet of Things Sensor Framework with Machine Learning ”, EAI Endorsed Trans IoT, vol. 10, Mar. 2024.

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