Logo

INTELLIGENT FAULT DIAGNOSIS AND PROGNOSIS FOR INDUSTRIAL SYSTEMS

64959 LEI
72177 LEI
-10%
În Stoc
Descriere

Industrial Fault Diagnosis and Remaining Useful Life Prediction: Cross-Domain, Zero-Sample, and Degradation Modeling Methods

introduces zero-sample learning methods that enable fault diagnosis and Predict Remaining Useful Life (RUL) without the need for labelled fault data.

This is particularly valuable in industrial settings where labelled data is scarce or unavailable.

Offers step-by-step guidance on implementing zero-shot learning models using real industrial data, reducing the learning curve for practitioners; includes real-world industrial case studies to demonstrate the application of zero-sample learning techniques in various industries, such as manufacturing, energy, and transportation.

Such case studies provide readers with actionable insights and practical solutions.

The book covers advanced methodologies for predicting the remaining useful life of industrial equipment, supporting readers in optimizing maintenance schedules, reducing downtime and extending the lifespan of critical assets.

Covers state-of-the-art algorithms, including deep learning, transfer learning and domain adaptation, tailored for zero-sample scenarios.

These tools empower readers to develop robust fault diagnosis and RUL prediction systems, enhancing predictive maintenance capabilities and ensuring the reliability of industrial systems.

Detalii
  • ISBN: 9780443442919
  • Autori: Peng Zhang, Hongpeng Yin, Li Cai
  • Limba: Engleză
  • An apariție: 2026
  • Coperta: Paperback
  • Editura: Elsevier Science
  • Nr. pagini: 222
  • Greutate: 370gr
Ratings
to add a review
Recenzii
  • Nicio recenzie găsită.

📚

Suntem în construcție!

Pregătim o nouă experiență pentru cititori.
Între timp, te invităm să vizitezi ebookshop.ro.

Mergi la site-ul existent →

Redirecționare automată în 5 secunde…