Journal of Machine and Computing


Analyzing the Effectiveness of Ensemble Based Analysis in Wireless Sensor Networks



Journal of Machine and Computing

Received On : 02 June 2023

Revised On : 25 August 2023

Accepted On : 26 November 2023

Published On : 05 January 2024

Volume 04, Issue 01

Pages : 200-209


Abstract


The usefulness of ensemble-based total time series analysis in Wi-Fi sensor networks is examined in this paper. A device to uses an ensemble approach combines multiple strategies to enhance overall predictive performance. This research assesses various tactics using unique metrics, such as robustness and accuracy. It contrasts the effectiveness of traditional time series methods with ensemble-based total fashions. An experimental approach focusing mostly on exceptional Wi-Fi sensor network scenarios is employed to evaluate the overall effectiveness of the suggested methods. Additionally, this study looks into how changes to community features like energy delivery, conversation range, and node density affect how effective the suggested methods are. The study's findings maintain the capacity to create effective Wi-Fi sensor networks with improved predicted overall performance. The usefulness of ensemble-based time collecting and analysis techniques for wireless sensor networks is investigated in this research. This study primarily looks upon function extraction and seasonality discounting of time series records in WSNs. In this analysis, seasonality is discounted using an ensemble median filter, and feature extraction is accomplished by primary component assessment. To assess the performance of the suggested ensemble technique on every simulated and real-world international WSN fact, multiple experiments are carried out. The findings suggest that the ensemble approach can improve the exceptional time-gathering records within WSNs and reduce seasonality. Furthermore, when compared to single-sensor strategies, the ensemble technique further improves the accuracy of the function extraction system. This work demonstrates the applicability of the ensemble approach for the investigation of time collection data in WSNs


Keywords


Ensemble-Based Analysis, Effectiveness, Wireless Sensor Networks, Robustness, Accuracy.


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Acknowledgements


This research was supported by AI Advanced School, aSSIST University, Seoul, Korea.


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Cite this article


Seng-Phil Hong, “Analyzing the Effectiveness of Ensemble Based Analysis in Wireless Sensor Networks”, Journal of Machine and Computing, pp. 200-209, January 2024. doi: 10.53759/7669/jmc202404019.


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© 2024 Seng-Phil Hong. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.