Cantitate/Preț
Produs

Spatio-Temporal Learning Using Irregular Data for Complex Dynamic Processes

Autor Chunhui Zhao, Wanke Yu
en Limba Engleză Paperback – iul 2025
Spatio-Temporal Learning Using Irregular Data for Complex Dynamic Processes introduces learning, modeling, and monitoring methods for highly complex dynamic processes with irregular data. Two classes of robust modeling methods are highlighted, including low-rank characteristic of matrices and heavy-tailed characteristic of distributions. In this class, the missing data, ambient noise, and outlier problems are solved using low-rank matrix complement for monitoring model development. Secondly, the Laplace distribution is explored, which is adopted to measure the process uncertainty to develop robust monitoring models.

The book not only discusses the complex models but also their real-world applications in industry.

  • Shows how to analyze, in great detail, the industrial operational status through spatio-temporal representation learning
  • Covers how to establish robust monitoring models for industrial processes with irregular data
  • Indicates how to adaptively update models in order to reduce frequent false alarms for dynamic processes
  • Explains how to take the temporal correlation into consideration to develop an adaptive monitoring model for satisfying the dynamic behaviours of industrial processes
Citește tot Restrânge

Preț: 94313 lei

Preț vechi: 103641 lei
-9% Nou

Puncte Express: 1415

Preț estimativ în valută:
18048 18729$ 15086£

Carte nepublicată încă

Doresc să fiu notificat când acest titlu va fi disponibil:

Preluare comenzi: 021 569.72.76

Specificații

ISBN-13: 9780443336751
ISBN-10: 044333675X
Pagini: 300
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE

Cuprins

1. Introduction
2. Low-Rank Characteristic and Temporal Correlation Analytics for Incipient Industrial Fault Detection with Missing Data
3. A Robust Dissimilarity Distribution Analytics with Laplace Distribution for Incipient Industrial Fault Detection
4. Variational Bayesian Student’s-t Mixture Model with Closed-Form Missing Value Imputation for Robust Process Monitoring of Low-Quality Data
5. Stationary Subspace Analysis based Hierarchical Model for Batch Processes Monitoring
6. Recursive Cointegration Analytics for Adaptive Monitoring of Nonstationary Industrial Processes with both Static and Dynamic Variations
7. Incremental Variational Bayesian Gaussian Mixture Model with Decremental Optimization for Distribution Accommodation and Fine-Scale Adaptive Process Monitoring
8. MoniNet with Concurrent Analytics of Temporal and Spatial Information for Fault Detection in Industrial Processes
9. Meticulous Process Monitoring with Multiscale Convolutional Feature Extraction