We a good story
Quick delivery in the UK

Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring

About Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring

Sparsity measures are effective indicators for quantifying the sparsity of data sequences. They are often used for fault feature characterization in condition monitoring and fault diagnosis of rotating machinery. Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring introduces newly designed sparsity measures and their advanced signal processing technologies for machine condition monitoring and fault diagnosis. The book systematically introduces: (1) new sparsity measures such as quasi-arithmetic mean ratio framework for fault signatures quantification, generalized Gini index, etc.; (2) classic sparsity measures based on signal processing technologies and cycle-embedded sparsity measure based on new impulsive mode decomposition technology; and (3) a sparsity measure data-driven framework based optimized weights spectrum theory and its relevant advanced signal processing technologies.

Show more
  • Language:
  • English
  • ISBN:
  • 9780443334863
  • Binding:
  • Paperback
  • Pages:
  • 184
  • Published:
  • January 22, 2025
  • Dimensions:
  • 152x229x0 mm.
Delivery: 10-20 businessdays after publication
Expected delivery: February 14, 2025

Description of Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring

Sparsity measures are effective indicators for quantifying the sparsity of data sequences. They are often used for fault feature characterization in condition monitoring and fault diagnosis of rotating machinery. Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring introduces newly designed sparsity measures and their advanced signal processing technologies for machine condition monitoring and fault diagnosis. The book systematically introduces: (1) new sparsity measures such as quasi-arithmetic mean ratio framework for fault signatures quantification, generalized Gini index, etc.; (2) classic sparsity measures based on signal processing technologies and cycle-embedded sparsity measure based on new impulsive mode decomposition technology; and (3) a sparsity measure data-driven framework based optimized weights spectrum theory and its relevant advanced signal processing technologies.

User ratings of Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring



Find similar books
The book Sparsity Measures and their Signal Processing Applications for Machine Condition Monitoring can be found in the following categories:

Join thousands of book lovers

Sign up to our newsletter and receive discounts and inspiration for your next reading experience.