Journal of Innovative Research in Engineering Sciences

Issn:2476-7611

Article

Application of Genetic Algorithms to Optimize Heavy Earthworks Operations

Farshad Asadbeigi, Ali Golsoorat Pahlaviani, Javad Majrouhi Sardroud
Abstract

Most of the major projects in the construction industry are faced with earthwork operations, so that one can rarely find a construction project that does not have such operations. For infrastructure projects, ground operations are one of the major areas of the project, and a wide range of construction machinery is used to carry out earthwork operations. Soil operations are one of the most important and costly parts of construction projects and projects for harvesting materials from surface mines. One of the important factors in the success of large projects and projects such as dam, road, tunnel and more is the role of machinery and, consequently, the way of selecting and managing it properly. Due to the large scale of construction projects, even a small improvement in operation operations can save a lot of work. One of the major costs of infrastructure is the cost of ground operations. Therefore, the purpose of this study is to use the genetic algorithm to optimize heavy soil operations for proposing a method for developing a method to optimize large-scale earth-borne operations for the lowest cost of land operations.

Published on the web: 2018-09-24
Received : 2018-07-10
Submitting : 2018-06-12
Keywords
Keyword:1- genetic algorithm
Keyword:2- Earthworks
Keyword:3- optimization,
Keyword:4- road construction machinery

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