Temperature Monitoring of Agricultural Areas in a Secure Data Room
- URL: http://arxiv.org/abs/2310.18019v1
- Date: Fri, 27 Oct 2023 09:49:52 GMT
- Title: Temperature Monitoring of Agricultural Areas in a Secure Data Room
- Authors: Thomas Ederer, Martin Ivancsits, and Igor Ivki\'c
- Abstract summary: Late frosts occurring shortly after the crops have sprouted have the potential to cause massive damage to plants.
In this article we present a cost-efficient temperature monitoring system for detecting and reacting to late frosts to prevent crop failures.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Agricultural production is highly dependent on naturally occurring
environmental conditions like change of seasons and the weather. Especially in
fruit and wine growing, late frosts occurring shortly after the crops have
sprouted have the potential to cause massive damage to plants [L1,L2] [1]. In
this article we present a cost-efficient temperature monitoring system for
detecting and reacting to late frosts to prevent crop failures. The proposed
solution includes a data space where Internet of Things (IoT) devices can form
a cyber-physical system (CPS) to interact with their nearby environment and
securely exchange data. Based on this data, more accurate predictions can be
made in the future using machine learning (ML), which will further contribute
to minimising economic damage caused by crop failures.
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