EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems

The emerging trend of agrovoltaic farming monitoring system aims to the reduce energy depletion in battery constrained wireless sensor network. The proposed EE-SAMS model introduces an energy-efficient approach to reduce sensor node energy depletion caused by redundant data transmissions in agrovolt...

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Main Authors: Blessina Preethi R, Berin Shalu S, Saranya Nair M, Vergin Raja Sarobin M
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Results in Engineering
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Online Access:http://www.sciencedirect.com/science/article/pii/S2590123025001410
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author Blessina Preethi R
Berin Shalu S
Saranya Nair M
Vergin Raja Sarobin M
author_facet Blessina Preethi R
Berin Shalu S
Saranya Nair M
Vergin Raja Sarobin M
author_sort Blessina Preethi R
collection DOAJ
description The emerging trend of agrovoltaic farming monitoring system aims to the reduce energy depletion in battery constrained wireless sensor network. The proposed EE-SAMS model introduces an energy-efficient approach to reduce sensor node energy depletion caused by redundant data transmissions in agrovoltaic farming systems. At the node level, redundancy is minimized using a Euclidean distance-based threshold, forwarding only non-redundant data to the aggregator. At the aggregator level, feature extraction and data classification are conducted through Conv1D and MaxPooling layers, with classification powered by a modified Spiking Neural Network (SNN) using the Adaptive Exponential Integrate-and-Fire (AdEx) model, achieving a high classification accuracy of 99.27%. Selective forwarding further enhances energy efficiency by transmitting only prioritized, non-redundant data to the base station. The performance of EE-SAMS is compared with the MLEM, MLELMAKF, SOF-SVM, and MRMR-KNN models in terms of efficiency and accuracy. The proposed model outperforming the other models and proven that the EE-SAMS is highly suitable for sustainable agrovoltaic monitoring.
format Article
id doaj-art-c2073950e67d4634b8f185f59f9b8827
institution Kabale University
issn 2590-1230
language English
publishDate 2025-03-01
publisher Elsevier
record_format Article
series Results in Engineering
spelling doaj-art-c2073950e67d4634b8f185f59f9b88272025-01-22T05:43:51ZengElsevierResults in Engineering2590-12302025-03-0125104053EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systemsBlessina Preethi R0Berin Shalu S1Saranya Nair M2Vergin Raja Sarobin M3SENSE, Vellore Institute of Technology, Chennai, Tamilnadu, IndiaSCOPE, Vellore Institute of Technology, Chennai, Tamilnadu, IndiaSENSE, Vellore Institute of Technology, Chennai, Tamilnadu, IndiaSCOPE, Vellore Institute of Technology, Chennai, Tamilnadu, India; Corresponding author.The emerging trend of agrovoltaic farming monitoring system aims to the reduce energy depletion in battery constrained wireless sensor network. The proposed EE-SAMS model introduces an energy-efficient approach to reduce sensor node energy depletion caused by redundant data transmissions in agrovoltaic farming systems. At the node level, redundancy is minimized using a Euclidean distance-based threshold, forwarding only non-redundant data to the aggregator. At the aggregator level, feature extraction and data classification are conducted through Conv1D and MaxPooling layers, with classification powered by a modified Spiking Neural Network (SNN) using the Adaptive Exponential Integrate-and-Fire (AdEx) model, achieving a high classification accuracy of 99.27%. Selective forwarding further enhances energy efficiency by transmitting only prioritized, non-redundant data to the base station. The performance of EE-SAMS is compared with the MLEM, MLELMAKF, SOF-SVM, and MRMR-KNN models in terms of efficiency and accuracy. The proposed model outperforming the other models and proven that the EE-SAMS is highly suitable for sustainable agrovoltaic monitoring.http://www.sciencedirect.com/science/article/pii/S2590123025001410Agrovoltaic systemData aggregationSpike neural networkRedundancy removalModified AdEx modelData classification
spellingShingle Blessina Preethi R
Berin Shalu S
Saranya Nair M
Vergin Raja Sarobin M
EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
Results in Engineering
Agrovoltaic system
Data aggregation
Spike neural network
Redundancy removal
Modified AdEx model
Data classification
title EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
title_full EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
title_fullStr EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
title_full_unstemmed EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
title_short EE-SAMS: An adaptive, SNN based energy-efficient data aggregation framework for agrovoltaic monitoring systems
title_sort ee sams an adaptive snn based energy efficient data aggregation framework for agrovoltaic monitoring systems
topic Agrovoltaic system
Data aggregation
Spike neural network
Redundancy removal
Modified AdEx model
Data classification
url http://www.sciencedirect.com/science/article/pii/S2590123025001410
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