optimizing locomotive body structures using imperialist competitive algorithm
Authors
abstract
in today's design, system complexity and increasing demand for safer, more efficient and less costly systems have created new challenges in science and engineering. locomotives are products which are designed according to market order and technical needs of customers. accordingly, targets of companies, especially designers and manufacturers of locomotives, have always been on the path of progress and seek to offer products with higher technology than other competitors. quality of body structures is based on indicators such as natural frequency, displacement, fatigue life and maximum stress. natural frequency of various components of the system and their adaption to each other are important for avoiding the phenomenon of resonance. in this study, body structures of er24 locomotive (iran safir locomotive) was studied. a combination of imperialist competitive algorithm (ica) and artificial neural network was proposed to find optimal weight of structures while natural frequencies were in the determined range. optimization of locomotive's structure was performed with an emphasis on maintaining locomotive abilities in static and dynamic fields. the results indicated that use of optimization techniques in the design process was a powerful and effective tool for identifying and improving main dynamic characteristics of structures and also optimizing performance in stress, noise and vibration fields.
similar resources
Optimizing locomotive body structures using imperialist competitive algorithm
In today's design, system complexity and increasing demand for safer, more efficient and less costly systems have created new challenges in science and engineering. Locomotives are products which are designed according to market order and technical needs of customers. Accordingly, targets of companies, especially designers and manufacturers of locomotives, have always been on the path of progre...
full textSOLVING BLASIUS EQUATION USING IMPERIALIST COMPETITIVE ALGORITHM
In this study, a new approach isintroduced to solve Blasius differential equation using of ImperialistCompetitive Algorithm (ICA). This algorithm is inspired by competitionmechanism among Imperialists and colonies and has demonstrated excellent capabilitiessuch as simplicity, accuracy, faster convergence and better global optimumachievement in contrast to other evolutionary algorithms. The obta...
full textUsing Imperialist competitive algorithm optimization in multi-response nonlinear programming
The quality of manufactured products is characterized by many controllable quality factors. These factors should be optimized to reach high quality products. In this paper we try to find the controllable factors levels with minimum deviation from the target and with a least variation. To solve the problem a simple aggregation function is used to aggregate the multiple responses functions then a...
full textOptimization of Fabric Layout by Using Imperialist Competitive Algorithm
In textile industry, marker planning is one of the main operations in the cutting fabric stage. Marker packing is usually used to maximize cloth exploitation and minimize its waste. In this research, a method is used based on new found meta-heuristic imperialist competitive algorithm (ICA) and Bottom-Left-Fill Algorithm (BLF) to achieve optimal marker packing. Function of the proposed method wa...
full textOPTIMIZATION TO IDENTIFY MUSKINGUM MODEL PARAMETERS USING IMPERIALIST COMPETITIVE ALGORITHM
In engineering, flood routing is an important technique necessary for the solution of a floodcontrol problem and for the satisfactory operation of a flood-prediction service. A simple conceptual model like the Muskingum model is very effective for the flood routing process. One challenge in application of the Muskingum model is that its parameters cannot be measured physically. In this article ...
full textOptimizing Cost Function in Imperialist Competitive Algorithm for Path Coverage Problem in Software Testing
Search-based optimization methods have been used for software engineering activities such as software testing. In the field of software testing, search-based test data generation refers to application of meta-heuristic optimization methods to generate test data that cover the code space of a program. Automatic test data generation that can cover all the paths of software is known as a major cha...
full textMy Resources
Save resource for easier access later
Journal title:
journal of computational & applied research in mechanical engineering (jcarme)Publisher: shahid rajaee teacher training university (srttu)
ISSN 2228-7922
volume 3
issue 2 2014
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023