Autoencoder-based Anomaly Detection in Smart Farming Ecosystem
Mary Adkisson, Jeffrey C Kimmel, Maanak Gupta, Mahmoud Abdelsalam

TL;DR
This paper presents an unsupervised autoencoder-based anomaly detection system for smart farming IoT environments, achieving high accuracy and fast detection to enhance security and reliability.
Contribution
It introduces a novel autoencoder model tailored for anomaly detection in smart farming, trained and tested on real greenhouse data.
Findings
Achieved 98.98% detection accuracy.
Training time was 262 seconds.
Detection latency was 0.0585 seconds.
Abstract
The inclusion of Internet of Things (IoT) devices is growing rapidly in all application domains. Smart Farming supports devices connected, and with the support of Internet, cloud or edge computing infrastructure provide remote control of watering and fertilization, real time monitoring of farm conditions, and provide solutions to more sustainable practices. This could involve using irrigation systems only when the detected soil moisture level is low or stop when the plant reaches a sufficient level of soil moisture content. These improvements to efficiency and ease of use come with added risks to security and privacy. Cyber attacks in large coordinated manner can disrupt economy of agriculture-dependent nations. To the sensors in the system, an attack may appear as anomalous behaviour. In this context, there are possibilities of anomalies generated due to faulty hardware, issues in…
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