Anomaly Detection in Beehives using Deep Recurrent Autoencoders
- URL: http://arxiv.org/abs/2003.04576v1
- Date: Tue, 10 Mar 2020 08:39:37 GMT
- Title: Anomaly Detection in Beehives using Deep Recurrent Autoencoders
- Authors: Padraig Davidson, Michael Steininger, Florian Lautenschlager,
Konstantin Kobs, Anna Krause and Andreas Hotho
- Abstract summary: We present an autoencoder, a deep learning model, which detects any type of anomaly in data independent of its origin.
Our model is able to reveal the same swarms as a simple rule-based swarm detection algorithm but is also triggered by any other anomaly.
- Score: 3.449808359602251
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Precision beekeeping allows to monitor bees' living conditions by equipping
beehives with sensors. The data recorded by these hives can be analyzed by
machine learning models to learn behavioral patterns of or search for unusual
events in bee colonies. One typical target is the early detection of bee
swarming as apiarists want to avoid this due to economical reasons. Advanced
methods should be able to detect any other unusual or abnormal behavior arising
from illness of bees or from technical reasons, e.g. sensor failure.
In this position paper we present an autoencoder, a deep learning model,
which detects any type of anomaly in data independent of its origin. Our model
is able to reveal the same swarms as a simple rule-based swarm detection
algorithm but is also triggered by any other anomaly. We evaluated our model on
real world data sets that were collected on different hives and with different
sensor setups.
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