05013nam 2200673Ia 450 991078212310332120230124182741.01-281-86600-897866118660061-84816-146-8(CKB)1000000000537749(EBL)1681506(OCoLC)748530828(SSID)ssj0000104565(PQKBManifestationID)11121879(PQKBTitleCode)TC0000104565(PQKBWorkID)10080105(PQKB)11767443(MiAaPQ)EBC1681506(WSP)0000P225(Au-PeEL)EBL1681506(CaPaEBR)ebr10255373(CaONFJC)MIL186600(EXLCZ)99100000000053774920010227d2001 uy 0engur|n|---|||||txtccrApplication of neural networks and other learning technologies in process engineering[electronic resource] /editors, I.M. Mujtaba, M.A. HussainRiver Edge, NJ ICP20011 online resource (423 p.)Description based upon print version of record.1-86094-263-6 Includes bibliographical references.Contents ; Foreword ; Acknowledgements ; Part I: Modelling and Identification ; 1. Simulation of Liquid-Liquid Extraction Data with Artificial Neural Networks ; 2. RBFN Identification of an Industrial Polymerization Reactor Model ; 3. Process Identification with Self-Organizing Networks4. Training Radial Basis Function Networks for Process Identification with an Emphasis on the Bayesian Evidence Approach 5. Process Identification of a Fed-Batch Penicillin Production Process - Training with the Extended Kalman Filter ; Part II: Hybrid Schemes6. Combining Neural Networks and First Principle Models for Bioprocess Modeling 7. Neural Networks in a Hybrid Scheme for Optimisation of Dynamic Processes: Application to Batch Distillation ; 8. Hierarchical Neural Fuzzy Models as a Tool for Process Identification: A Bioprocess ApplicationPart III: Estimation and Control 9. Adaptive Inverse Model Control of a Continuous Fermentation Process Using Neural Networks ; 10. Set Point Tracking in Batch Reactors: Use of PID and Generic Model Control with Neural Network Techniques11. Inferential Estimation and Optimal Control of a Batch Polymerisation Reactor Using Stacked Neural Networks Part IV: New Learning Technologies ; 12. Reinforcement Learning in Batch Processes ; 13. Knowledge Discovery through Mining Process Operational DataPart V: Experimental and Industrial Applications This book is a follow-up to the IChemE symposium on "Neural Networks and Other Learning Technologies", held at Imperial College, UK, in May 1999. The interest shown by the participants, especially those from the industry, has been instrumental in producing the book. The papers have been written by contributors of the symposium and experts in this field from around the world. They present all the important aspects of neural network utilisation as well as show the versatility of neural networks in various aspects of process engineering problems - modelling, estimation, control, optimisation andNeural networks (Computer science)Process controlManufacturing processesNeural networks (Computer science)Process control.Manufacturing processes.006.3/2Mujtaba I. M1531976Hussain M. A(Mohamed Azlan),1958-1531977MiAaPQMiAaPQMiAaPQBOOK9910782123103321Application of neural networks and other learning technologies in process engineering3777948UNINA