Title of article
Optimal Design of Composite Channels Using Genetic Algorithm
Author/Authors
Jain، Ashu نويسنده , , Bhattacharjya، Rajib Kumar نويسنده , , Sanaga، Srinivasulu نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
-285
From page
286
To page
0
Abstract
In the past, studies involving optimal design of composite channels have employed Hortonʹs equivalent roughness coefficient, which uses a lumped approach in assuming constant velocity across a composite channel cross section. In this paper, a new nonlinear optimization program (NLOP) is proposed based on a distributed approach that is equivalent to Lotterʹs observations, which allows spatial variations in velocity across a composite channel cross section. The proposed NLOP, which consists of an objective function of minimizing total construction cost per unit length of a channel, is solved using genetic algorithm (GA). Several scenarios are evaluated, including no restrictions, restricted top width, and restricted channel side slopes, to account for certain site conditions. In addition, the proposed NLOP is modified to include constraints on maximum permissible velocities corresponding to different lining materials of the composite channel cross section, probably for the first time. The proposed methodology is applied to trapezoidal and triangular channel cross sections but can be easily extended to other shapes or compound channels. Optimal design graphs are presented to determine the channel dimensions of a composite trapezoidal channel cross section. The results obtained in this study indicate that cost savings up to 35% can be achieved for the unconstrained velocity case and up to 55% for the limiting velocity case when the proposed NLOP is solved using GA as compared with the existing NLOP solved using either the classical optimization solution technique or GA.
Keywords
Hydrograph
Journal title
JOURNAL OF IRRIGATION & DRAINAGE (ASCE)
Serial Year
2004
Journal title
JOURNAL OF IRRIGATION & DRAINAGE (ASCE)
Record number
10717
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