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Published in: Wireless Personal Communications 4/2020

17-04-2020

A Review on Precision Agriculture Using Wireless Sensor Networks Incorporating Energy Forecast Techniques

Authors: Sukhampreet Kaur Dhillon, Charu Madhu, Daljeet Kaur, Sarvjit Singh

Published in: Wireless Personal Communications | Issue 4/2020

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Abstract

Wireless sensor networks (WSNs) are prominently used for environment monitoring, however, energy constraints limit their applications. So, the energy consumption need to be optimized and also an attempt should be made to harvest energy from natural resources. Most of the WSNs depend on solar irradiations for energy harvesting. Unfortunately, the energy harvested from solar radiations is intermittent and highly dependent on weather conditions. To make the systems more energy efficient, energy prediction is essential so that the sensor nodes can schedule tasks accordingly to best suit energy level of battery. This review outlines the various energy prediction techniques, the clustering and routing selection methods and compares earlier research works on agriculture based WSNs. An attempt is made to find the best method for energy prediction and optimum task scheduling.

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Metadata
Title
A Review on Precision Agriculture Using Wireless Sensor Networks Incorporating Energy Forecast Techniques
Authors
Sukhampreet Kaur Dhillon
Charu Madhu
Daljeet Kaur
Sarvjit Singh
Publication date
17-04-2020
Publisher
Springer US
Published in
Wireless Personal Communications / Issue 4/2020
Print ISSN: 0929-6212
Electronic ISSN: 1572-834X
DOI
https://doi.org/10.1007/s11277-020-07341-y

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