Exploratory Analysis of Metallurgical Process Data with Neural Networks and Related MethodsElsevier, 2002. gada 19. apr. - 386 lappuses This volume is concerned with the analysis and interpretation of multivariate measurements commonly found in the mineral and metallurgical industries, with the emphasis on the use of neural networks. The book is primarily aimed at the practicing metallurgist or process engineer, and a considerable part of it is of necessity devoted to the basic theory which is introduced as briefly as possible within the large scope of the field. Also, although the book focuses on neural networks, they cannot be divorced from their statistical framework and this is discussed in length. The book is therefore a blend of basic theory and some of the most recent advances in the practical application of neural networks. |
No grāmatas satura
6.–10. rezultāts no 46.
20. lappuse
... consists of first determining the overall structure of the neural network (number of layers, number of nodes per layer, types of nodes, etc.). Once the structure of the network is fixed, the parameters (weights) of the network have to ...
... consists of first determining the overall structure of the neural network (number of layers, number of nodes per layer, types of nodes, etc.). Once the structure of the network is fixed, the parameters (weights) of the network have to ...
21. lappuse
... consists of an input layer, which is fully connected to one or more two-dimensional Kohonen layers, as shown in ... consist of m-dimensional vectors of the form x = {x1, x2, ... xm}, then each Kohonen node will have m weight values ...
... consists of an input layer, which is fully connected to one or more two-dimensional Kohonen layers, as shown in ... consist of m-dimensional vectors of the form x = {x1, x2, ... xm}, then each Kohonen node will have m weight values ...
25. lappuse
... consisting of q classification layer Figure 1.8. A learning vector quantization neural network with two classes. The essential concept on which learning vector quantization networks (see Figure 1.8) is based, is that a set of vectors ...
... consisting of q classification layer Figure 1.8. A learning vector quantization neural network with two classes. The essential concept on which learning vector quantization networks (see Figure 1.8) is based, is that a set of vectors ...
28. lappuse
... consists of p different classes ci, c2, ... cp, and that the data on which the classification process are based can be represented by a feature vector with m dimensions T x = [x1, x2, ... xm) If F(x) = Figure 1.11(a). A hyperspheric, (b) ...
... consists of p different classes ci, c2, ... cp, and that the data on which the classification process are based can be represented by a feature vector with m dimensions T x = [x1, x2, ... xm) If F(x) = Figure 1.11(a). A hyperspheric, (b) ...
29. lappuse
... consists of an input layer, a normalizing layer (which normalizes the feature vector x, so that xTx = 1), a pattern or exemplar layer, which represents the Parzen kernels, a summation layer in which the kernels are summed, and a ...
... consists of an input layer, a normalizing layer (which normalizes the feature vector x, so that xTx = 1), a pattern or exemplar layer, which represents the Parzen kernels, a summation layer in which the kernels are summed, and a ...
Saturs
1 | |
50 | |
CHAPTER 3 LATENT VARIABLE METHODS | 74 |
CHAPTER 4 REGRESSION MODELS | 112 |
CHAPTER 5 TOPOGRAPHICAL MAPPINGS WITH NEURAL NETWORKS | 172 |
CHAPTER 6 CLUSTER ANALYSIS | 199 |
CHAPTER 7 EXTRACTION OF RULES FROM DATA WITH NEURAL NETWORKS | 228 |
CHAPTER 8 INTRODUCTION TO THE MODELLING OF DYNAMIC SYSTEMSCHAPTER | 262 |
DYNAMIC SYSTEMS ANALYSIS AND MODELLING | 285 |
CHAPTER 10 EMBEDDING OF MULTIVARIATE DYNAMIC PROCESS SYSTEMS | 299 |
CHAPTER 11 FROM EXPLORATORY DATA ANALYSIS TO DECISION SUPPORT AND PROCESS CONTROL | 313 |
REFERENCES | 333 |
INDEX | 366 |
DATA FILES | 370 |
Citi izdevumi - Skatīt visu
Exploratory Analysis of Metallurgical Process Data with Neural Networks and ... C. Aldrich Ierobežota priekšskatīšana - 2002 |
Exploratory Analysis of Metallurgical Process Data with Neural ..., 1. sējums Chris Aldrich Priekšskatījums nav pieejams - 2002 |
Bieži izmantoti vārdi un frāzes
activation addition algorithm analysis application approach approximately associated attractor attribute calculated classification cluster coefficients complexity computational considered consists constructed containing continuous correlation curve data set decision defined dependent derived determined dimension direction distance distribution dynamic embedding equation error estimated example exemplars extracted Figure fitted follows fuzzy rules Gaussian given hidden layer indicated individual initial input learning least linear matrix means measure methods mill minimize multivariate neural network nodes noise nonlinear objects observations obtained operator optimal original output parameters pattern performance plant points possible prediction principal component principal component analysis problem projection radial basis function reconstructed region regression represented respectively rules sample scale selected separation shown in Figure similar single space squares statistical step structure Table techniques tree values variables variance vector weight
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