Optimal State Estimation for Process Monitoring, Fault Diagnosis and Control
Autor Ch. Venkateswarlu, Rama Rao Karrien Limba Engleză Paperback – 3 feb 2022
Design and implementation of various classical and advanced state estimation methods to solve a wide variety of problems makes this book immensely useful for the audience working in different disciplines in academics, research and industry in areas concerning to process monitoring, fault diagnosis, control and related disciplines.
• Describes various classical and advanced versions of mechanistic model based state estimation algorithms.
• Describes various data-driven model based state estimation techniques.
• Highlights a number of real applications of mechanistic model based and data-driven model based state estimators/soft sensors.
• Beneficial to those associated with process monitoring, fault diagnosis, online optimization, control and related areas.
Preț: 958.81 lei
Preț vechi: 1259.82 lei
-24% Nou
183.50€ • 193.59$ • 152.92£
Carte tipărită la comandă
Livrare economică 26 decembrie 24 - 09 ianuarie 25
Specificații
ISBN-10: 0323858783
Pagini: 366
Dimensiuni: 216 x 276 mm
Greutate: 0.92 kg
Editura: ELSEVIER SCIENCE
Cuprins
Part I - BASIC DETAILS AND STATE ESTIMATION ALGORITHMS 1.?Optimal state estimation and its importance in process systems engineering 2.?Stochastic process and filtering theory 3.?Linear filtering and observation techniques with examples 4.?Mechanistic model-based nonlinear filtering and observation techniques for state estimation 5.?Data-driven modelling techniques for state estimation 6.?Optimal sensor configuration methods for state estimation
Part II - APPLICATION OF MECHANISTIC MODEL-BASED NONLINEAR FILTERING AND OBSERVATION TECHNIQUES FOR STATE ESTIMATION IN CHEMICAL PROCESSES 7.?Optimal state estimation in multicomponent batch distillation 8.?Optimal state estimation in multicomponent reactive batch distillation with optimal sensor configuration 9.?Optimal state estimation in complex nonlinear dynamical systems 10.?Optimal state estimation of a kraft pulping digester? 11.?Optimal State Estimation of a High Dimensional Fluid Catalytic Cracking Unit 12.?Optimal state estimation of continuous distillation column with optimal sensor configuration 13.?Optimal state and parameter estimation in nonlinear CSTR
Part III - APPLICATION OF QUANTITATIVE MODEL-BASED NONLINEAR FILTERING AND OBSERVATION TECHNIQUES FOR STATE ESTIMATION IN BIOCHEMICAL PROCESSES 14.?Optimal state and parameter estimation in the nonlinear batch beer fermentation process 15.?Optimal state and parameter estimation for online optimization of an uncertain biochemical reactor
Part IV - APPLICATION OF DATA-DRIVEN MODEL-BASED TECHNIQUES FOR STATE ESTIMATION IN CHEMICAL PROCESSES 16.?Data-driven methods for state estimation in multi-component batch distillation 17.?Hybrid schemes for state estimation 18.?Future development, prospective and challenges in the application of soft sensors in industrial applications
Descriere
Optimal State Estimation for Process Monitoring, Fault Diagnosis and Control presents various mechanistic model based state estimators and data-driven model based state estimators with a special emphasis on their development and applications to process monitoring, fault diagnosis and control. The design and analysis of different state estimators are highlighted with a number of applications and case studies concerning to various real chemical and biochemical processes. The book starts with the introduction of basic concepts, extending to classical methods and successively leading to advances in this field.
Design and implementation of various classical and advanced state estimation methods to solve a wide variety of problems makes this book immensely useful for the audience working in different disciplines in academics, research and industry in areas concerning to process monitoring, fault diagnosis, control and related disciplines.
• Describes various classical and advanced versions of mechanistic model based state estimation algorithms.
• Describes various data-driven model based state estimation techniques.
• Highlights a number of real applications of mechanistic model based and data-driven model based state estimators/soft sensors.
• Beneficial to those associated with process monitoring, fault diagnosis, online optimization, control and related areas.