Search
Code Directory
 ASP
 ASP.NET
 C/C++
 CFML
 CGI/PERL
 Delphi
 Development
 Flash
 HTML
 Java
 JavaScript
 Pascal
 PHP
 Python
 SQL
 Tools
 Visual Basic & VB.NET
 XML
New Code
The C# Excel Library 2020.5
dbForge Studio for MySQL 9.0
LinkedIn Clone 2.2
Uber clone Apps 4.0
Cab Booking Script 1.3.2
Airbnb Clone HomestayDNN 3.0
Magento Language switcher 1.2.1
The .Net PDF Library 2020.3.2
IP2Location Geolocation Database 2020.5
ODBC Driver for MailChimp 2.0
ODBC Driver for NetSuite 2.0
ODBC Driver for SQL Azure 3.1
dbForge Schema Compare for Oracle 4.1
dbForge Data Compare for Oracle 5.1
dbForge Studio for Oracle 4.1
Top Code
dbForge Studio for MySQL 8.1
dbForge Studio for Oracle 3.10
dbForge Schema Compare for Oracle 2.7
dbForge Data Compare for Oracle 3.7
IP2Location Geolocation Database 2020.5
Availability Booking Calendar PHP 1.0
ATN Site Builder 3.0
ATN Resume Finder 2.0
Invoice Manager by PHPJabbers 3.0
Classified Ad Lister 1.0
Extreme Injector 3.7
PHP Review Script 1.0
ICPennyBid Penny Auction Script 4.0
Aglowsoft SQL Query Tools 8.2
Solid File System OS edition 5.1
Top Rated
phpEnter 5.1.
Single Leg MLM 1.2.1
Azizi search engine script PHP 4.1.10
Paste phpSoftPro 1.4.1
Extreme Injector 3.7
Deals and Discounts Website Script 1.0.2
Solid File System OS edition 5.1
Classified Ad Lister 1.0
Aglowsoft SQL Query Tools 8.2
Invoice Manager by PHPJabbers 3.0
ICPennyBid Penny Auction Script 4.0
PHP Review Script 1.0
ATN Resume Finder 2.0
ATN Site Builder 3.0
Availability Booking Calendar PHP 1.0
Optimal Component Selection Using the Mixed-Integer Genetic Algorithm 1.0
File ID: 84845






Optimal Component Selection Using the Mixed-Integer Genetic Algorithm 1.0
Download Optimal Component Selection Using the Mixed-Integer Genetic Algorithm 1.0http://www.mathworks.comReport Error Link
License: Shareware
File Size: 153.6 KB
Downloads: 80
Submit Rating:
Optimal Component Selection Using the Mixed-Integer Genetic Algorithm 1.0 Description
Description: Use the mixed-integer genetic algorithm to solve an engineering design problem.
Designs often require that components come from a list of available sizes. In this example, we show how the Genetic Algorithm can be used to find values for the Resistors and Thermistors in a circuit that meet our design criteria. The example uses optimization techniques to minimize the difference between a desired response curve and the curve generated from a simulation of the circuit. Because Resistors and Thermistors are only available in standard sizes, this becomes an interger-constrained problem as our design variables are limited to these standard sizes.

License: Shareware

Related: desired, Response, Difference, Minimize, criteria, Optimization, techniques, curve, Generated

O/S:BSD, Linux, Solaris, Mac OS X

File Size: 153.6 KB

Downloads: 80



More Similar Code

This function solves the mixed integer linear programming problems. It uses the linprog.m function that comes with the optimization toolbox of MATLAB. It employs the branch and bound algorithm. It uses depth first search



Solves the mixed integer nonlinear problem:

min p(x,y)

s.t. f(x,y)



Solves the mixed integer linear problem:

min c'*x

s.t. A*x <= b
s.t. Aeq*x == beq
s.t. lb <= x <= ub
x(yidx) integer

where yidx is a logical index vector.

This program solves...



This program demonstrates the optimization by genetic algorithm to find the global maximum height for thee dimensional multiple peak surface. The GA operates by real coding method with elitism



B3MSV Bidirectional Branch and Bound(B3) subset selection using the the Minimum Singular Value (MSV) as the criterion.

Consider the following subset selection problem:

Given a tall (m x n, m>n) matrix, A, to find n rows of...



solves the linear least squares problem with nonnegative variables using the block principal pivoting algorithm in:
Portugal, Judice and Vicente, A comparison of block pivoting and interior point algorithms for linear least squares problems...



The model here describes the classical SIS (Susceptible infected) Model It has been implemented using the Gillespie's stochastic algorithm. It is not meant for experts in the field but for people who need an introduction of how to implement the...



JNSGA2 is a Java library with an implementation of the multi-objective genetic algorithm NSGA-II published by Deb et al.



Using the ServerZip ASP Component is an useful tutorial for the ASP programmers to learn about generating active server component with several advanced functionalties which work along with existing components. The author explains about executing...



Files used in the Webinar "Developing a Financial Market Index Tracker using MATLAB OOP and Genetic Algorithms"

The zip file contains the data and files used to develop an application to track a market index using Genetic...

User Review for Optimal Component Selection Using the Mixed-Integer Genetic Algorithm
- required fields
     

Please enter text on the image