An Artificial Intelligence of Things based Method for Early Detection of Bark Beetle Infested Trees
Loading...
Fulltext URI
Document type
Text/Conference Paper
Additional Information
Date
2022
Journal Title
Journal ISSN
Volume Title
Source
Publisher
Gesellschaft für Informatik e.V.
Abstract
Bark beetles, like the European Spruce Bark Beetle (Ips typographus), are inherent partsof a forest ecosystem. However, with favorable conditions, they can multiply quickly and infest vastamounts of trees and cause their extinction. Therefore, it is important for forest officials and rangers ofe. g. a national park, to monitor the population of the beetles and the infested trees. There are severalways to approach this, but they are often costly and time-consuming. Therefore, we design and test abark beetle early warning system with AI-based data analysis: Audio data, data on pheromones andinformation for a drought stress assessment of the affected trees are to be collected and used as a basisfor the analysis. The aim is to devise a micro-controller-based sensor system that detects the infestationof a tree as early as possible and warns the forest officials, e. g. via a message on their cell phone.
Description
Keywords
Soundscape Ecology, Bark beetle detection, IoT sensors, AIoT-based evaluation