AIChE Symposium Series, Volume 93, Issue 316American Institute of Chemical Engineers, 1997 - Chemical engineering |
From inside the book
Results 1-3 of 82
Page 52
... shown in Fig 2 : the NN model provided the long - range prediction , and " ADS , " a public domain non- linear optimization routine ( obtained from the Naval Post- graduate School in Monterey , California ) was used to de- termine ...
... shown in Fig 2 : the NN model provided the long - range prediction , and " ADS , " a public domain non- linear optimization routine ( obtained from the Naval Post- graduate School in Monterey , California ) was used to de- termine ...
Page 57
... shown in Fig- ure 19. During this time period the lime flow rate did not vary much , as is shown in Figure 20 . The response of the system to a change in acid demand is shown in Figures 21 and 22. In the early parts of these plots , the ...
... shown in Fig- ure 19. During this time period the lime flow rate did not vary much , as is shown in Figure 20 . The response of the system to a change in acid demand is shown in Figures 21 and 22. In the early parts of these plots , the ...
Page 295
... shown in Fig . 2. Note that the parameter C1 and C2 as well as the PLS model is not built on the data . A result is shown in Fig . 4. It is shown that the error observed around 30 days in previous simulation can be decreased ...
... shown in Fig . 2. Note that the parameter C1 and C2 as well as the PLS model is not built on the data . A result is shown in Fig . 4. It is shown that the error observed around 30 days in previous simulation can be decreased ...
Contents
Industry Assessment | 1 |
Predictive Control | 5 |
Adaptive and Nonlinear Control Fact or Fantasy? | 9 |
Copyright | |
22 other sections not shown
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