SFFDD: Deep Neural Network with Enriched Features for Failure Prediction
with Its Application to Computer Disk Driver
- URL: http://arxiv.org/abs/2109.09856v1
- Date: Mon, 20 Sep 2021 21:43:43 GMT
- Title: SFFDD: Deep Neural Network with Enriched Features for Failure Prediction
with Its Application to Computer Disk Driver
- Authors: Lanfa Frank Wang and Danjue Li
- Abstract summary: We treat the multivariate time series sensor data as images for both visualization and computation.
In addition to feature derivation, ensemble method is used to further improve the performance.
We apply the proposed method on the early predict failure of computer disk drive in order to improve storage systems availability and avoid data loss.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: A classification technique incorporating a novel feature derivation method is
proposed for predicting failure of a system or device with multivariate time
series sensor data. We treat the multivariate time series sensor data as images
for both visualization and computation. Failure follows various patterns which
are closely related to the root causes. Different predefined transformations
are applied on the original sensors data to better characterize the failure
patterns. In addition to feature derivation, ensemble method is used to further
improve the performance. In addition, a general algorithm architecture of deep
neural network is proposed to handle multiple types of data with less manual
feature engineering. We apply the proposed method on the early predict failure
of computer disk drive in order to improve storage systems availability and
avoid data loss. The classification accuracy is largely improved with the
enriched features, named smart features.
Related papers
- Multi-scale Fusion Fault Diagnosis Method Based on Two-Dimensionaliztion
Sequence in Complex Scenarios [0.0]
Rolling bearings are critical components in rotating machinery, and their faults can cause severe damage.
Early detection of abnormalities is crucial to prevent catastrophic accidents.
Traditional and intelligent methods have been used to analyze time series data, but in real-life scenarios, sensor data is often noisy and cannot be accurately characterized in the time domain.
This paper proposes an improved convolutional neural network method with a multi-scale feature fusion model and deep learning compression techniques for deployment in industrial scenarios.
arXiv Detail & Related papers (2023-04-11T13:05:50Z) - Anomaly Detection with Ensemble of Encoder and Decoder [2.8199078343161266]
Anomaly detection in power grids aims to detect and discriminate anomalies caused by cyber attacks against the power system.
We propose a novel anomaly detection method by modeling the data distribution of normal samples via multiple encoders and decoders.
Experiment results on network intrusion and power system datasets demonstrate the effectiveness of our proposed method.
arXiv Detail & Related papers (2023-03-11T15:49:29Z) - Graph Neural Networks with Trainable Adjacency Matrices for Fault
Diagnosis on Multivariate Sensor Data [69.25738064847175]
It is necessary to consider the behavior of the signals in each sensor separately, to take into account their correlation and hidden relationships with each other.
The graph nodes can be represented as data from the different sensors, and the edges can display the influence of these data on each other.
It was proposed to construct a graph during the training of graph neural network. This allows to train models on data where the dependencies between the sensors are not known in advance.
arXiv Detail & Related papers (2022-10-20T11:03:21Z) - Learning to Learn with Generative Models of Neural Network Checkpoints [71.06722933442956]
We construct a dataset of neural network checkpoints and train a generative model on the parameters.
We find that our approach successfully generates parameters for a wide range of loss prompts.
We apply our method to different neural network architectures and tasks in supervised and reinforcement learning.
arXiv Detail & Related papers (2022-09-26T17:59:58Z) - A Robust and Explainable Data-Driven Anomaly Detection Approach For
Power Electronics [56.86150790999639]
We present two anomaly detection and classification approaches, namely the Matrix Profile algorithm and anomaly transformer.
The Matrix Profile algorithm is shown to be well suited as a generalizable approach for detecting real-time anomalies in streaming time-series data.
A series of custom filters is created and added to the detector to tune its sensitivity, recall, and detection accuracy.
arXiv Detail & Related papers (2022-09-23T06:09:35Z) - Anomaly Detection and Inter-Sensor Transfer Learning on Smart
Manufacturing Datasets [6.114996271792091]
In many cases, the goal of the smart manufacturing system is to rapidly detect (or anticipate) failures to reduce operational cost and eliminate downtime.
This often boils down to detecting anomalies within the sensor date acquired from the system.
The smart manufacturing application domain poses certain salient technical challenges.
We show that predictive failure classification can be achieved, thus paving the way for predictive maintenance.
arXiv Detail & Related papers (2022-06-13T17:51:24Z) - Convolutional generative adversarial imputation networks for
spatio-temporal missing data in storm surge simulations [86.5302150777089]
Generative Adversarial Imputation Nets (GANs) and GAN-based techniques have attracted attention as unsupervised machine learning methods.
We name our proposed method as Con Conval Generative Adversarial Imputation Nets (Conv-GAIN)
arXiv Detail & Related papers (2021-11-03T03:50:48Z) - SignalNet: A Low Resolution Sinusoid Decomposition and Estimation
Network [79.04274563889548]
We propose SignalNet, a neural network architecture that detects the number of sinusoids and estimates their parameters from quantized in-phase and quadrature samples.
We introduce a worst-case learning threshold for comparing the results of our network relative to the underlying data distributions.
In simulation, we find that our algorithm is always able to surpass the threshold for three-bit data but often cannot exceed the threshold for one-bit data.
arXiv Detail & Related papers (2021-06-10T04:21:20Z) - Including Sparse Production Knowledge into Variational Autoencoders to
Increase Anomaly Detection Reliability [3.867363075280544]
We study using rarely occurring information about labeled anomalies into Variational Autoencoder neural network structures.
This method outperforms all other models in terms of accuracy, precision, and recall.
arXiv Detail & Related papers (2021-03-24T05:54:12Z) - 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)
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.