Publication:
Efficient design assessment in the railway electric infrastructure domain using cloud computing

Loading...
Thumbnail Image

Advisors

Tutors

Editor

Publication date

Defense date

Journal Title

Journal ISSN

Volume Title

Publisher

IOS Press

publication.page.ispartofseries

Impact
Google Scholar
Export

Research Projects

Research Projects

Organizational Units

Journal Issue

To cite this item, use the following identifier: https://hdl.handle.net/10016/33743

Abstract

Nowadays, railway infrastructure designers rely heavily on computer simulators and expert systems to model, analyze and evaluate potential deployments prior to their installation. This paper presents the railway power consumption simulator model (RPCS), a cloud-based model for the design, simulation and evaluation of railway electric infrastructures. This model integrates the parameters of an infrastructure within a search engine that generates and evaluates a set of simulations to achieve optimal designs, according to a given set of objectives and restrictions. The knowledge of the domain is represented as an ontology that translates the elements in the infrastructure into an electric circuit, which is simulated to obtain a wide range of electric metrics. In order to support the execution of thousands of scenarios in a scalable, efficient and fault-tolerant manner, this paper introduces an architecture to deploy the model in a cloud environment, and a dimensioning model to find the types and number of instances that maximize performance while minimizing the externalization costs. The resulting model is applied to a particular case study, allowing the execution of over one thousand concurrent experiments in a virtual cluster on the Amazon Elastic Compute Cloud.

Note

Research project

Bibliographic citation

Caíno-Lores, S., García, A., García-Carballeira, F., Carretero, J. (2016). Efficient Design Assessment in the Railway Electric Infrastructure Domain Using Cloud Computing. Integrated Computer-Aided Engineering, 24(1), pp. 57-72. https://doi.org/10.3233/ICA-160532

Table of contents

Has version

Is version of

Related dataset

Related Publication

Is part of

Collections