Train an autoencoder on normal operating data from an industrial machine to predict anomalies.
https://github.com/matlab-deep-learning/Industrial-Machinery-Anomaly-Detection
現在この提出コンテンツをフォロー中です。
- フォローしているコンテンツ フィードに更新が表示されます。
- コミュニケーション基本設定に応じて電子メールを受け取ることができます
編集メモ: This file was selected as MATLAB Central Pick of the Week
Industrial Machinery Anomaly Detection
This example applies various anomaly detection approaches to operating data from an industrial machine. Specifically it covers:
- Extracting relevant features from industrial vibration timeseries data using the Diagnostic Feature Designer app
- Anomaly detection using several statistical, machine learning, and deep learning techniques, including:
- LSTM-based autoencoders
- One-class SVM
- Isolation forest
- Robust covariance and Mahalanobis distance
Setup
This demo is implemented as a MATLAB® project and will require you to open the project to run it. The project will manage all paths and shortcuts you need.
To Run:
- Open the MATLAB Project
AnomalyDetection.prj - Open Parts 1-3 on the Project Shortcuts tab
MathWorks® Products (http://www.mathworks.com)
Requires MATLAB® release R2021b or newer and:
License
The license for Industrial Machinery Anomaly Detection using an Autoencoder is available in the license.txt file in this GitHub repository.
Community Support
Copyright 2021 The MathWorks, Inc.
引用
Rachel Johnson (2026). Industrial Machinery Anomaly Detection (https://github.com/matlab-deep-learning/Industrial-Machinery-Anomaly-Detection), GitHub. に取得済み.
一般的な情報
- バージョン 1.1.3 (69 MB)
-
GitHub でライセンスを表示
MATLAB リリースの互換性
- R2020b 以降のリリースと互換性あり
プラットフォームの互換性
- Windows
- macOS
- Linux
GitHub の既定のブランチを使用するバージョンはダウンロードできません
| バージョン | 公開済み | リリース ノート | Action |
|---|---|---|---|
| 1.1.3 | Renaming |
||
| 1.1.2 | Updated links |
||
| 1.1.1 | Renaming and minor edits |
||
| 1.1 | Improved visualizations and explanations |
||
| 1.0.1 | GitHub repository now located on matlab-deep-learning |
||
| 1.0.0 |

