An Anomaly Detection Method for Satellites Using Monte Carlo Dropout

Recently, there has been a significant amount of interest in satellite telemetry anomaly detection (AD) using neural networks (NN). For AD purposes, the current approaches focus on either forecasting or reconstruction of the time series, and they cannot measure the level of reliability or the probability of correct detection. Although the Bayesian neural network (BNN)-based approaches are well known for time series uncertainty estimation, they are computationally intractable. In this paper, we present a tractable approximation for BNN based on the Monte Carlo (MC) dropout method for capturing the uncertainty in the satellite telemetry time series, without sacrificing accuracy. For time series forecasting, we employ an NN, which consists of several Long Short-Term Memory (LSTM) layers followed by various dense layers. We employ the MC dropout inside each LSTM layer and before the dense layers for uncertainty estimation. With the proposed uncertainty region and by utilizing a post-processing filter, we can effectively capture the anomaly points. Numerical results show that our proposed time series AD approach outperforms the existing methods from both prediction accuracy and AD perspectives.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/10/2023

Satellite Anomaly Detection Using Variance Based Genetic Ensemble of Neural Networks

In this paper, we use a variance-based genetic ensemble (VGE) of Neural ...
research
09/06/2017

Deep and Confident Prediction for Time Series at Uber

Reliable uncertainty estimation for time series prediction is critical i...
research
08/24/2023

Single-shot Bayesian approximation for neural networks

Deep neural networks (NNs) are known for their high-prediction performan...
research
01/21/2023

Estimation of Sea State Parameters from Ship Motion Responses Using Attention-based Neural Networks

On-site estimation of sea state parameters is crucial for ship navigatio...
research
06/10/2019

Evaluating aleatoric and epistemic uncertainties of time series deep learning models for soil moisture predictions

Soil moisture is an important variable that determines floods, vegetatio...
research
09/05/2023

An LSTM-Based Predictive Monitoring Method for Data with Time-varying Variability

The recurrent neural network and its variants have shown great success i...
research
01/04/2023

Bayesian Weapon System Reliability Modeling with Cox-Weibull Neural Network

We propose to integrate weapon system features (such as weapon system ma...

Please sign up or login with your details

Forgot password? Click here to reset