Ensemble neuroevolution based approach for multivariate time series
anomaly detection
- URL: http://arxiv.org/abs/2108.03585v1
- Date: Sun, 8 Aug 2021 07:55:07 GMT
- Title: Ensemble neuroevolution based approach for multivariate time series
anomaly detection
- Authors: Kamil Faber, Dominik \.Zurek, Marcin Pietro\'n, Kamil Pi\k{e}tak
- Abstract summary: In this work, a framework is shown which incorporates neuroevolution methods to boost the anomaly-detection scores of new and already known models.
The proposed framework shows that it is possible to boost most of the anomaly detection deep learning models in a reasonable time and a fully automated mode.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multivariate time series anomaly detection is a very common problem in the
field of failure prevention. Fast prevention means lower repair costs and
losses. The amount of sensors in novel industry systems makes the anomaly
detection process quite difficult for humans. Algorithms which automates the
process of detecting anomalies are crucial in modern failure-prevention
systems. Therefore, many machine and deep learning models have been designed to
address this problem. Mostly, they are autoencoder-based architectures with
some generative adversarial elements. In this work, a framework is shown which
incorporates neuroevolution methods to boost the anomaly-detection scores of
new and already known models. The presented approach adapts evolution
strategies for evolving ensemble model, in which every single model works on a
subgroup of data sensors. The next goal of neuroevolution is to optimise
architecture and hyperparameters like window size, the number of layers, layer
depths, etc. The proposed framework shows that it is possible to boost most of
the anomaly detection deep learning models in a reasonable time and a fully
automated mode. The tests were run on SWAT and WADI datasets. To our knowledge,
this is the first approach in which an ensemble deep learning anomaly detection
model is built in a fully automatic way using a neuroevolution strategy.
Related papers
- AD-NEv++ : The multi-architecture neuroevolution-based multivariate anomaly detection framework [0.794682109939797]
Anomaly detection tools and methods enable key analytical capabilities in modern cyberphysical and sensor-based systems.
We propose AD-NEv++, a three-stage neuroevolution-based method that synergically combines subspace evolution, model evolution, and fine-tuning.
We show that AD-NEv++ can improve and outperform the state-of-the-art GNN (Graph Neural Networks) model architecture in all anomaly detection benchmarks.
arXiv Detail & Related papers (2024-03-25T08:40:58Z) - AD-NEV: A Scalable Multi-level Neuroevolution Framework for Multivariate
Anomaly Detection [1.0323063834827415]
Anomaly detection tools and methods present a key capability in modern cyberphysical and failure prediction systems.
Model optimization for a given dataset is a cumbersome and time consuming process.
We propose Anomaly Detection Neuroevolution (AD-NEv) - a scalable multi-level optimized neuroevolution framework.
arXiv Detail & Related papers (2023-05-25T21:52:38Z) - Self-Supervised Masked Convolutional Transformer Block for Anomaly
Detection [122.4894940892536]
We present a novel self-supervised masked convolutional transformer block (SSMCTB) that comprises the reconstruction-based functionality at a core architectural level.
In this work, we extend our previous self-supervised predictive convolutional attentive block (SSPCAB) with a 3D masked convolutional layer, a transformer for channel-wise attention, as well as a novel self-supervised objective based on Huber loss.
arXiv Detail & Related papers (2022-09-25T04:56:10Z) - Towards an Awareness of Time Series Anomaly Detection Models'
Adversarial Vulnerability [21.98595908296989]
We demonstrate that the performance of state-of-the-art anomaly detection methods is degraded substantially by adding only small adversarial perturbations to the sensor data.
We use different scoring metrics such as prediction errors, anomaly, and classification scores over several public and private datasets.
We demonstrate, for the first time, the vulnerabilities of anomaly detection systems against adversarial attacks.
arXiv Detail & Related papers (2022-08-24T01:55:50Z) - Neurosymbolic hybrid approach to driver collision warning [64.02492460600905]
There are two main algorithmic approaches to autonomous driving systems.
Deep learning alone has achieved state-of-the-art results in many areas.
But sometimes it can be very difficult to debug if the deep learning model doesn't work.
arXiv Detail & Related papers (2022-03-28T20:29:50Z) - Fast and scalable neuroevolution deep learning architecture search for
multivariate anomaly detection [0.0]
The work concentrates on improvements to multi-level neuroevolution approach for anomaly detection.
The presented framework can be used as an efficient learning network architecture method for any different unsupervised task.
arXiv Detail & Related papers (2021-12-10T16:14:43Z) - Time Series Anomaly Detection with label-free Model Selection [0.6303112417588329]
We propose LaF-AD, a novel anomaly detection algorithm with label-free model selection for unlabeled times-series data.
Our algorithm is easily parallelizable, more robust for ill-conditioned and seasonal data, and highly scalable for a large number of anomaly models.
arXiv Detail & Related papers (2021-06-11T00:21:06Z) - Meta-learning One-class Classifiers with Eigenvalue Solvers for
Supervised Anomaly Detection [55.888835686183995]
We propose a neural network-based meta-learning method for supervised anomaly detection.
We experimentally demonstrate that the proposed method achieves better performance than existing anomaly detection and few-shot learning methods.
arXiv Detail & Related papers (2021-03-01T01:43:04Z) - TELESTO: A Graph Neural Network Model for Anomaly Classification in
Cloud Services [77.454688257702]
Machine learning (ML) and artificial intelligence (AI) are applied on IT system operation and maintenance.
One direction aims at the recognition of re-occurring anomaly types to enable remediation automation.
We propose a method that is invariant to dimensionality changes of given data.
arXiv Detail & Related papers (2021-02-25T14:24:49Z) - A Novel Anomaly Detection Algorithm for Hybrid Production Systems based
on Deep Learning and Timed Automata [73.38551379469533]
DAD:DeepAnomalyDetection is a new approach for automatic model learning and anomaly detection in hybrid production systems.
It combines deep learning and timed automata for creating behavioral model from observations.
The algorithm has been applied to few data sets including two from real systems and has shown promising results.
arXiv Detail & Related papers (2020-10-29T08:27:43Z) - Contextual-Bandit Anomaly Detection for IoT Data in Distributed
Hierarchical Edge Computing [65.78881372074983]
IoT devices can hardly afford complex deep neural networks (DNN) models, and offloading anomaly detection tasks to the cloud incurs long delay.
We propose and build a demo for an adaptive anomaly detection approach for distributed hierarchical edge computing (HEC) systems.
We show that our proposed approach significantly reduces detection delay without sacrificing accuracy, as compared to offloading detection tasks to the cloud.
arXiv Detail & Related papers (2020-04-15T06:13:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.