Preface |
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viii | |
Nomenclature |
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x | |
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xiv | |
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1 Methods for inverse/optimal design of an enclosed environment |
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1 | (23) |
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1 | (1) |
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1.2 Inverse design for an enclosed environment |
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2 | (13) |
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3 | (4) |
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7 | (8) |
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15 | (2) |
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17 | (7) |
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2 CFD-based genetic algorithm method |
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24 | (33) |
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24 | (2) |
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2.2 Principles of the CFD-based genetic algorithm |
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26 | (5) |
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2.2.1 General principles of a genetic algorithm |
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26 | (2) |
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2.2.2 Integration of a genetic algorithm with CFD |
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28 | (1) |
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2.2.3 Improvements to the integrated GA and CFD method |
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29 | (2) |
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2.3 Applications of the CFD-based genetic algorithm |
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31 | (20) |
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2.3.1 Inverse identification of ventilation parameters in a built environment |
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31 | (2) |
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2.3.2 Inverse design of an enclosed environment |
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33 | (18) |
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51 | (2) |
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53 | (4) |
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3 CFD-based adjoint method |
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57 | (51) |
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57 | (1) |
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3.2 CFD-based adjoint method |
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58 | (12) |
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3.2.1 Design objective vs. objective function |
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58 | (1) |
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3.2.2 Principle of the CFD-based adjoint method |
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59 | (11) |
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70 | (1) |
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3.3 Application of the CFD-based adjoint method |
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70 | (34) |
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3.3.1 Inverse identification problems in built environments |
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70 | (20) |
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3.3.2 Optimal design of the built environment |
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90 | (14) |
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104 | (4) |
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4 CFD-based artificial neural network method |
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108 | (45) |
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108 | (1) |
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4.2 Principles of the CFD-based ANN method |
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109 | (21) |
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4.2.1 Structure of the ANN |
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109 | (2) |
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4.2.2 Sampling method for the ANN |
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111 | (3) |
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4.2.3 Normalization methods for the ANN |
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114 | (1) |
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4.2.4 Training algorithms for the ANN |
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115 | (8) |
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4.2.5 Integration of the ANN with CFD |
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123 | (7) |
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4.3 Application of the CFD-based ANN method |
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130 | (19) |
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4.3.1 Inverse identification of a built environment |
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130 | (10) |
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4.3.2 Optimal design of a built environment |
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140 | (9) |
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149 | (1) |
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149 | (1) |
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149 | (1) |
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150 | (3) |
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5 CFD-based proper orthogonal decomposition method |
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153 | (28) |
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153 | (1) |
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5.2 Principles of inverse design with the CFD-based POD method |
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154 | (8) |
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5.2.1 Fundamentals of POD |
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155 | (2) |
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5.2.2 Interpolation of coefficients of POD modes |
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157 | (3) |
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5.2.3 Original CFD data preparation and criteria for data saturation |
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160 | (1) |
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5.2.4 POD-based design procedure |
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161 | (1) |
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5.3 Application of the CFD-based POD method |
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162 | (17) |
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5.3.1 Inverse solution of air-supply parameters in a two-dimensional air cavity |
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163 | (6) |
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5.3.2 Inverse design of air-supply parameters in an office |
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169 | (4) |
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5.3.3 Inverse design of air-supply parameters in an aircraft cabin |
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173 | (6) |
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179 | (2) |
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6 Enhancement of the inverse design methods |
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181 | (59) |
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181 | (1) |
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6.2 Integration of genetic algorithm and adjoint method |
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182 | (6) |
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6.2.1 Comparison of genetic algorithm and adjoint method |
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182 | (2) |
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6.2.2 External integration of genetic algorithm and adjoint method |
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184 | (2) |
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6.2.3 Internal integration of genetic algorithm and adjoint method |
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186 | (2) |
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6.3 Integration of genetic algorithm method and artificial neural network |
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188 | (11) |
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6.3.1 Classification of combination modes |
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189 | (2) |
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6.3.2 Multi-objective problems |
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191 | (2) |
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6.3.3 Factors affecting convergence and computational cost |
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193 | (1) |
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6.3.4 Methods for improving GA and ANN performance |
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194 | (1) |
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6.3.5 Application examples |
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194 | (5) |
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6.4 Enhancement of computing speed by fast fluid dynamics |
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199 | (23) |
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6.4.1 Fast fluid dynamics |
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200 | (5) |
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6.4.2 Validation of fast fluid dynamics |
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205 | (17) |
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6.5 Enhancement of computing speed by semi-Lagrangian PISO algorithm |
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222 | (12) |
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6.5.1 Principle of semi-Lagrangian scheme in combination with PISO algorithm |
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223 | (2) |
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225 | (3) |
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228 | (1) |
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6.5.4 Validation of the SLPISO algorithm |
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229 | (5) |
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234 | (2) |
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236 | (4) |
Index |
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240 | |