This article describes the process of creating a script and conducting an
analytical study of a dataset using the DeepMIMO emulator. An advertorial
attack was carried out using the FGSM method to maximize the gradient. A
comparison is made of the effectiveness of binary classifiers in the task of
detecting distorted data. The dynamics of changes in the quality indicators of
the regression model were analyzed in conditions without adversarial attacks,
during an adversarial attack and when the distorted data was isolated. It is
shown that an adversarial FGSM attack with gradient maximization leads to an
increase in the value of the MSE metric by 33% and a decrease in the R2
indicator by 10% on average. The LightGBM binary classifier effectively
identifies data with adversarial anomalies with 98% accuracy. Regression
machine learning models are susceptible to adversarial attacks, but rapid
analysis of network traffic and data transmitted over the network makes it
possible to identify malicious activity