A Novel Scheme for an IoT-Based Weather Monitoring System Using a Wireless Sensor Network

  • A. SampathkumarEmail author
  • S. Murugan
  • Ahmed A. Elngar
  • Lalit Garg
  • R. Kanmani
  • A. Christy Jeba Malar
Part of the EAI/Springer Innovations in Communication and Computing book series (EAISICC)


Life becomes exceptionally less difficult in all stages with the improvement of automation innovation. Today, programmed techniques are being picked over manual strategies. The Web has turned into a part of life, and the Internet of things (IoT) is the cutting edge technology developing web expertise in accordance with the rapid increase in the quantity of web clients. From mechanical apparatus to client, the IoT is creating a system of regular articles that can share information and complete obligations when you are occupied with different happenings. In this chapter, we present an IoT-based environment monitoring framework utilizing the WSN innovation. The primary goal of the framework is to give environmental parameters at remote areas utilizing the web. This proposed framework speaks to the environmental parameter monitor utilizing wireless sensors associated with the Internet. There are two distinctive sensor nodes in the framework. Clients can observe the information by means of the web application from anyplace on the Internet. In the event that the sensor node information surpasses the designed range in the web application, a notice message is sent to clients to improve environmental conditions.


Internet of Things (IoT) Wireless sensor network Environmental monitoring Sensor module 


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© Springer Nature Switzerland AG 2020

Authors and Affiliations

  • A. Sampathkumar
    • 1
    Email author
  • S. Murugan
    • 2
  • Ahmed A. Elngar
    • 3
  • Lalit Garg
    • 4
  • R. Kanmani
    • 5
  • A. Christy Jeba Malar
    • 5
  1. 1.School of Computing Science and Engineering, VIT Bhopal UniversityBhopalIndia
  2. 2.Department of Computer Science and EngineeringMewar UniversityChittorgarhIndia
  3. 3.Faculty of Computers & Artificial Intelligence, Beni-Suef UniversityBeni SuefEgypt
  4. 4.Department Computer Information SystemsFaculty of Information & Communication Technology, University of MaltaMsidaMalta
  5. 5.Department of ITSri Krishna College of TechnologyCoimbatoreIndia

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