Master of Talents 2015 (TND15) - Fondazione CRT

Leicester Language Academy - 23 New Walk, LEICESTER LE1 6TE (UK) - UNITED KINGDOM

Experience abroad promoted by Fondazione CRT in the program Talenti Neodiplomati 2015 edition for secondary school leavers.
First Week: English lessons held by Simon prof. Runswick attended at the Leicester Language Academy.
Work Experience: volunteer for The Air Ambulance Charity Shop Blaby, 5 Johns Ct, Blaby District, LEICESTER LE8 4DJ, (UK)
I was hosted by an English family in Blaby District, LEICESTER LE8 4AY (UK)

06/27/2015 - 09/27/2015

MARCO MARTINO ROSSO

PhD Student

Structural Civil Engineering

Politecnico di Torino

Marco Martino Rosso

PhD Student

Structural Civil Engineering

Politecnico di Torino

http://rossomarcomartino.flazio.com/   All Right Reserved 2020

PhD Student at Politecnico di Torino

Marco Martino Rosso

Structural Civil Engineer

News & Activities

orcidlogo

ORCID ID

https://orcid.org/0000-0002-9098-4132

Recently published articles

blog

Optimal preliminary design of variable section beams criterion
Research Articles, A.Y. 2020/2021,

Optimal preliminary design of variable section beams criterion

Marco Martino Rosso

19/08/2021 11:10

Hindawi | Advances in Civil Engineering | Research Article

Safety assessment and retrofitting of existing structures and infrastructures (01UDLMX)
Didactics, A.Y. 2020/2021,

Safety assessment and retrofitting of existing structures and infrastructures (01UDLMX)

Marco Martino Rosso

19/08/2021 10:57

Teaching assistantA.Y. 2020/21

Tecnica delle costruzioni (01CPBMC)
Didactics, A.Y. 2020/2021,

Tecnica delle costruzioni (01CPBMC)

Marco Martino Rosso

19/08/2021 10:51

Teaching assistantA.Y. 2020/21

Teoria e progetto di strutture A (01QMTPQ)
Didactics, A.Y. 2020/2021,

Teoria e progetto di strutture A (01QMTPQ)

Marco Martino Rosso

09/04/2021 11:23

Teaching assistantA.Y. 2020/21

Nonpenalty Machine Learning Constraint Handling Using PSO-SVM for Structural Optimization
Research Articles, A.Y. 2020/2021,

Nonpenalty Machine Learning Constraint Handling Using PSO-SVM for Structural Optimization

Marco Martino Rosso

15/02/2021 23:00

Hindawi | Advances in Civil Engineering | Research Article

Museo della Matematica e dell'Astronomia con annesso osservatorio astronomico
Research Articles, High-school-diploma,

Museo della Matematica e dell'Astronomia con annesso osservatorio astronomico

Marco Martino Rosso

05/02/2020 21:09

High-school Diploma for surveyorsIIS Bianchi-Virginio Cuneo Thesis: La Matematica per spiegare l'universoFinal grade 100/100 cum laude Rendering and p

Filter Categories

    Recently Didactics

    Nonpenalty Machine Learning Constraint Handling Using PSO-SVM for Structural Optimization

    15/02/2021 23:00

    Marco Martino Rosso

    Research Articles, A.Y. 2020/2021,

    Nonpenalty Machine Learning Constraint Handling Using PSO-SVM for Structural Optimization

    Hindawi | Advances in Civil Engineering | Research Article

    Hindawi | Advances in Civil Engineering

    Research Article | Open Access | Volume 2021 | Article ID 6617750 | https://doi.org/10.1155/2021/6617750

     

    Abstract

     

    Firstly formulated to solve unconstrained optimization problems, the common way to solve constrained ones with the metaheuristic particle swarm optimization algorithm (PSO) is represented by adopting some penalty functions. In this paper, a new nonpenalty-based constraint handling approach for PSO is implemented, adopting a supervised classification machine learning method, the support vector machine (SVM). Because of its generality, constraint handling with SVM appears more adaptive both to nonlinear and discontinuous boundary. To preserve the feasibility of the population, a simple bisection algorithm is also implemented. To improve the search performances of the algorithm, a relaxation function of the constraints is also adopted. In the end part of this paper, two numerical literature benchmark examples and two structural examples are discussed. The first structural example refers to a homogeneous constant cross-section simply supported beam. The second one refers to the optimization of a plane simply supported Warren truss beam. The obtained results in terms of objective function demonstrate that this new approach represents a valid alternative to solve constrained optimization problems even in structural optimization field. Furthermore, as demonstrated by the Warren truss beam problem, this new algorithm provides an optimal structural design which represents also a good solution from the technical point of view with a trivial rounding-off that does not jeopardize significantly the optimization design process.

     

     

    Cite as:

    Marco M. Rosso, Raffaele Cucuzza, Fabio Di Trapani, Giuseppe C. Marano, "Nonpenalty Machine Learning Constraint Handling Using PSO-SVM for Structural Optimization", Advances in Civil Engineering, vol. 2021, Article ID 6617750, 17 pages, 2021.

    1-1617960637.jpg2-1617960645.jpg3-1617960653.jpg4-1617960662.jpg5-1617960671.jpg6-1617960679.jpg