Data-driven prediction for industrial processes and their applications. ([2018])
- Record Type:
- Book
- Title:
- Data-driven prediction for industrial processes and their applications. ([2018])
- Main Title:
- Data-driven prediction for industrial processes and their applications
- Further Information:
- Note: Jun Zhao, Wei Wang, Chunyang Sheng.
- Authors:
- Zhao, Jun
Wang, Wei
Sheng, Chunyang - Contents:
- Intro; Preface; Audience and Goal of This Book; Acknowledgements; Contents; Chapter 1: Introduction; 1.1 Why Prediction Is Required for Industrial Process; 1.2 Category of Data-Based Industrial Process Prediction; 1.2.1 Data Feature-Based Prediction; 1.2.2 Time Scale-Based Prediction; 1.2.3 Prediction Reliability-Based Prediction; 1.3 Commonly Used Techniques for Industrial Prediction; 1.3.1 Time Series Prediction Methods; 1.3.2 Factor-Based Prediction Methods; 1.3.3 Methods for PIs Construction; 1.3.4 Long-Term Prediction Intervals Methods; 1.4 Summary; References. Chapter 2: Data Preprocessing Techniques2.1 Introduction; 2.2 Anomaly Data Detection; 2.2.1 K-Nearest-Neighbor; 2.2.2 Fuzzy C Means; 2.2.3 Adaptive Fuzzy C Means; 2.2.4 Trend Anomaly Detection Based on AFCM and DTW; 2.2.5 Deviants Detection Based on KNN-AFCM; 2.2.6 Case Study; 2.3 Data Imputation; 2.3.1 Data-Missing Mechanism; 2.3.2 Regression Filling Method; 2.3.3 Expectation Maximum; 2.3.4 Varied Window Similarity Measure; 2.3.5 Segmented Shape-Representation Based Method; Key-Sliding-Window for Sequence Segmentation; Representation of Sequence Segmentation. Procedure of Data Imputation Based on Segmented Shape-Representation2.3.6 Non-equal-Length Granules Correlation; Calculation for NGCC; NGCC-Based Correlation Analysis; Correlation-Based Data Imputation; 2.3.7 Case Study; 2.4 Data De-noising Techniques; 2.4.1 Empirical Mode Decomposition; 2.4.2 Case Study; 2.5 Discussion; References; Chapter 3: IndustrialIntro; Preface; Audience and Goal of This Book; Acknowledgements; Contents; Chapter 1: Introduction; 1.1 Why Prediction Is Required for Industrial Process; 1.2 Category of Data-Based Industrial Process Prediction; 1.2.1 Data Feature-Based Prediction; 1.2.2 Time Scale-Based Prediction; 1.2.3 Prediction Reliability-Based Prediction; 1.3 Commonly Used Techniques for Industrial Prediction; 1.3.1 Time Series Prediction Methods; 1.3.2 Factor-Based Prediction Methods; 1.3.3 Methods for PIs Construction; 1.3.4 Long-Term Prediction Intervals Methods; 1.4 Summary; References. Chapter 2: Data Preprocessing Techniques2.1 Introduction; 2.2 Anomaly Data Detection; 2.2.1 K-Nearest-Neighbor; 2.2.2 Fuzzy C Means; 2.2.3 Adaptive Fuzzy C Means; 2.2.4 Trend Anomaly Detection Based on AFCM and DTW; 2.2.5 Deviants Detection Based on KNN-AFCM; 2.2.6 Case Study; 2.3 Data Imputation; 2.3.1 Data-Missing Mechanism; 2.3.2 Regression Filling Method; 2.3.3 Expectation Maximum; 2.3.4 Varied Window Similarity Measure; 2.3.5 Segmented Shape-Representation Based Method; Key-Sliding-Window for Sequence Segmentation; Representation of Sequence Segmentation. Procedure of Data Imputation Based on Segmented Shape-Representation2.3.6 Non-equal-Length Granules Correlation; Calculation for NGCC; NGCC-Based Correlation Analysis; Correlation-Based Data Imputation; 2.3.7 Case Study; 2.4 Data De-noising Techniques; 2.4.1 Empirical Mode Decomposition; 2.4.2 Case Study; 2.5 Discussion; References; Chapter 3: Industrial Time Series Prediction; 3.1 Introduction; 3.2 Phase Space Reconstruction; 3.2.1 Determination of Embedding Dimensionality; False Nearest-Neighbor Method (FNN); Cao Method; 3.2.2 Determination of Delay Time; Autocorrelation Function Method. Mutual Information Method3.2.3 Simultaneous Determination of Embedding Dimensionality and Delay Time; 3.3 Linear Models for Regression; 3.3.1 Basic Linear Regression; 3.3.2 Probabilistic Linear Regression; 3.4 Gaussian Process-Based Prediction; 3.4.1 Kernel-Based Regression; 3.4.2 Gaussian Process for Prediction; 3.4.3 Gaussian Process-Based ESN; 3.4.4 Case Study; 3.5 Artificial Neural Networks-Based Prediction; 3.5.1 RNNs for Regression; 3.5.2 ESN for Regression; 3.5.3 SVD-Based ESN for Industrial Prediction; 3.5.4 ESNs with Leaky Integrator Neurons; 3.5.5 Dual Estimation-Based ESN. 3.5.6 Case StudyExtended Kalman-Filter-Based Elman Network; SVD-Based ESN for Industrial Prediction; ESN with Leaky Integrator Neurons; Dual Estimation-Based ESN; 3.6 Support Vector Machine-Based Prediction; 3.6.1 Basic Concept of SVM; 3.6.2 SVMs for Regression; 3.6.3 Least Square Support Vector Machine; 3.6.4 Sample Selection-Based Reduced SVM; 3.6.5 Bayesian Treatment for LSSVM Regression; Probabilistic Interpretation of LSSVM Regressor (Level 1): Predictive Mean and Error Bars; Calculation of Maximum Posterior; Moderated Output of LSSVM Regressor; Inference of Hyper-Parameters (Level 2). … (more)
- Publisher Details:
- Cham, Switzerland : Springer
- Publication Date:
- 2018
- Extent:
- 1 online resource, illustrations
- Subjects:
- 670.285
Computer science
Manufacturing processes -- Mathematical models
Industrial engineering
TECHNOLOGY & ENGINEERING -- Industrial Engineering
TECHNOLOGY & ENGINEERING -- Industrial Technology
TECHNOLOGY & ENGINEERING -- Manufacturing
TECHNOLOGY & ENGINEERING -- Technical & Manufacturing Industries & Trades
Industrial engineering
Manufacturing processes -- Mathematical models
Computers -- Intelligence (AI) & Semantics
Technology & Engineering -- Quality Control
Business & Economics -- Operations Research
Production engineering
Artificial intelligence
Reliability engineering
Operational research
Data mining
Manufactures
Artificial intelligence
System safety
Operations research
Computers -- Database Management -- Data Mining
Data mining
Electronic books - Languages:
- English
- ISBNs:
- 9783319940519
3319940511 - Related ISBNs:
- 9783319940502
3319940503 - Notes:
- Note: Includes bibliographical references and index.
Note: Description based on online record; title from digital title page (viewed on December 11, 2018). - Access Rights:
- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
- Access Usage:
- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.371290
- Ingest File:
- 02_351.xml