References
- Diaz Gerardo, Sen Mihir, Yang K T & McCllain R L, Dynamic prediction and control of heat exchangers using artificial neural networks, International Journal of Heat and Mass Transfer, vol 44, issue 9, pp 1671–1679, May 2001.
- Renotie, C, Wouwer A V & Remy, M, Neural modeling and control of a heat exchanger based on SPSA techniques, Proceedings of American Control Conference, Illinois, pp 3299–3303, 2000.
- Diaz, G, Sen, M, Yang, K T & McClain, R L, Simulation of heat exchanger performance by artificial neural networks, International Journal HVAC & R Res, vol 5, no 3, pp 195–208, 1999.
- Ayoubi M, Dynamic multi-layer perception networks: application to the nonlinear identification and predictive control of a heat exchanger, in: Applications of Neural Adaptive Control Technology, World Scientific series in Robotics and Intelligent Systems, 17, pp 205–230, 1997.
- 4. Bittanti, S & Piroddi L, Nonlinear identification and control of a heat exchanger: a neural network approach, Journal of the Franklin Institute, vol 334, issue 1, January 1997, pp 135–153, 1997.
- Lim, K W & Ling, K V, Generalized predictive control of a heat exchanger, IEEE Control System Magazine, pp 9–12, 1989.
- Parte, M P & Camacho, E F, Application of a predictive sliding mode controller to a heat exchanger, Proceedings of IEEE Conference on Control Application, Glasgow, Scotland, pp 1219–1224, 2002.
- Skrijave, I & Matko, D, Predictive functional control based on fuzzy model for heat exchanger pilot plant, IEEE Transactions on Fuzzy Systems, vol 8, no 6, pp 805–812, 2000.
- Ljung L, System Identification - Theory for the User, Prentice Hall, Upper Saddle River, NJ, 2nd edition, 1999.
- Franklin, G F, Powell, J D & Workman, M L, Digital Control of Dynamic Systems, Addison-Wesley, Reading, MA, 3rd edition, 1998.
- Soderstrom, T & Stoica, P, System Identification, Prentice-Hall, London, UK, 1989.
- Juang J N, Applied System Identification, Englewood Cliffs. NJ: Prentice Hall, 1994.
- Barron, A R, Universal approximation bounds for superpositions of a sigmoid function, IEEE Transactions on Information Theory, 39, pp 930–945, 1993.
- Juditsky, A, Hjalmarson, H, Benveniste, A, Delyon, B, Ljung, L, Sjoberg, J & Zang, Q, Nonlinear black-box models in system identification: Mathematical foundations, Automatica, vol 31, no 12, pp 1725–1750, 1995.
- De Moor B L R (ed.), DaISy: Database for the Identification of systems. Department of Electrical Engineering, ESAT/SISTA, K.U. Leuven, Belgium, URL: http://www.esat.kuleuven.ac.be/sista/daisy/; contributed by Sergio Bittanti, [email protected], Jairo Espinosa, ESTA-SISTA KULEUVEN, Kardinaal Mercierlaan 94, B-3001 Heverlee Belgium, [email protected]
- Narendra K S & Parthasarathy K, Gradient Methods for Optimization of Dynamic Systems Containing Neural Networks, IEEE Transactions on Neural Networks, vol 2, no 2, pp 252–62, 1991.
- Narendra, K S & Parthasarathy, K, Identification and control of dynamic systems using neural networks, IEEE Trans on Neural Networks, vol 1, no 1, pp 4–27, 1992.
- Quin S Z, Su H T & McAvoy T J, Comparison of Four Neural Net Learning Methods for Dynamic System Identification, IEEE Transactions on Neural Networks, vol 3, no 1, pp 122–30, 1992.
- Demuth, H & Beale, M, Neural Network Toolbox: User’s Guide, Version 3.0, The MathWorks, Inc, Natick, MA, 1998.
- Cybenko, G, Approximation by superpositions of a sigmoidal function, Mathematics of Control, Signals, and Systems, vol 2, no 4, pp 303–314, 1989.
- Waibel, A, T Hanazana, G Hinton, K Shikano & K J Lang, Phoneme recognition using time-delay neural networks, IEEE Transactions on Acoustics, Speech, and Signal Processing, vol ASSP-37, pp 328–339, 1989.
- Jose C Principe, Neil R Euliano & W Curt Lefebvre, Neural and Adaptive Systems - Fundamentals Through Simulations, John-Wiley & Sons, Inc, 2000.
- de Vries, B & J C Principe, The gamma model-A new neural model for temporal processing. Neural Networks, vol 5, pp 565–576, 1992.