TY - BOOK AU - Tayfur,G. TI - Soft computing in water resources engineering: artificial neural networks, fuzzy logic and genetic algorithms SN - 9781845646363 (hbk.) U1 - 627.04 23 PY - 2012/// CY - Southampton, Boston PB - WIT Press KW - Water resources development KW - Soft computing N1 - Part 1 Artificial Neural Networks Chapter 1 Introduction to Artificial Neural Networks 1.1 general View 1.2 biological Neuron 1.3 Artificial Neuron 1.4 Artificial neural Network 1.5 ANN Types etc Chapter 2 Artificial Neuron 2.1 Components of Artificial Neuron 2.2 Methods for computing Net Information 2.3 Activation Functions Chapter 3 Network Training 3.1 Pre-Training procedures 3.2 Network Training Chapter 4 Model Testing 4.1 De-standardization of Model output 4.2 Evaluating Model Performance 4.3 Over Training and Cross Training Chapter 5 Model application in Water Resources Engineering 5.1 Prediction 5.2 Classification 5.3 Forecasting Part II Introduction to Fuzzy Logic Algorithm Chapter 6 Introduction to Fuzzy logic Algorithm 6.1 General View 6.2 Basic concept in Fuzzy Logic 6.3 Fuzzy Systems Chapter 7 Fuzzy Membership Functions set operations and Fuzzy Relations 7.1 Fuzzy Membership Functions 7.2 Fuzzy Set Operations 7.3 Fuzzy Relations Chapter 8 Constructing Fuzzy Model 8.1 Fuzzification 8.2 Fuzzy Rule Base 8.3 Fuzzy Inference Engine Chapter 9 Fuzzy model Application in Water Resources 9.1 Introduction 9.2 TSS Prediction 9.3 Sheet Sediment Prediction 9.4 Peak Discharge Prediction etc Part III Genetic Algorithms Chapter 10 Genetic Algorithms 10.1 Introduction 10.2 Basic Units of GA 10.3 GA Operations Chapter 11 Variant of Genetic Algorithm 11.1 Variant of Genetic Algorithms Chapter 12 Genetic Algorithm Model Applications in Water Resources Engineering 12.1 Ga Application Problems; References : p. 259 - 261 . _ Subject index : p. 263 - 267 ER -