ITEA is the Eureka Cluster on software innovation
ITEA is the Eureka Cluster on software innovation
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DeepAD

Project
18022 IVVES
Description
  • Condition monitoring
  • Predictive maintenance
  • Abnormal behavior detection
Contact
Sima Sinaei and Mehrdad Saadatmand, RISE Research Institutes of Sweden
Email
sima.sinaei@ri.se
Technical features

Input(s):

  • Sensors’ data or data from other sources in timeseries format

Main feature(s):

  • Deep Learning-based Anomaly Detection tool
  • Suitable for unsupervised datasets
  • Autoencoders (AE) and LongShort Term Memory (LSTM) Neural Networks

Output(s):

  • Discovers patterns in data that do not conform to the expected normal behaviour
Integration constraints

Input data in a sequence format with time sample.

Targeted customer(s)

Software developers and designers of industrial application need to implement Anomaly Detection techniques. It has applications in cyber-security intrusion detection, fraud detection, fault detection, system health monitoring, event detection in sensor networks, detecting ecosystem disturbances, defect detection, and medical diagnosis.

Conditions for reuse

Licensing and permission required.

Confidentiality
Public
Publication date
29-11-2022
Involved partners
RISE - Research institutes of Sweden (SWE)