Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/90252
Title: Mechanical characteristics, as well as physical-and-chemical properties of the slag-filled concretes, and investigation of the predictive power of the metaheuristic approach
Authors: Borodin, K.
Zhangabay, N. Z.
Issue Date: 2019
Publisher: De Gruyter Open Ltd
Citation: Borodin, K. Mechanical characteristics, as well as physical-and-chemical properties of the slag-filled concretes, and investigation of the predictive power of the metaheuristic approach / K. Borodin, N. Z. Zhangabay. — DOI 10.1515/cls-2019-0020 // Curved and Layered Structures. — 2019. — Vol. 1. — Iss. 6. — P. 236-244.
Abstract: Our article is devoted to development and verification of the metaheuristic optimisation algorithm in the course of selection of the compositional proportions of the slag-filled concretes. The experimental selection of various compositions and working modes, which ensure one and the same fixed level of a basic property, is the very labour-intensive and time-consuming process. This process cannot be feasible in practice in many situations, for example, in the cases, where it is necessary to investigate composite materials with equal indicators of resistance to aggressive environments or with equal share of voids in the certain range of dimensions. There are many similar articles in the scientific literature. Therefore, it is possible to make the conclusion on the topicality of the above-described problem. In our article, we will consider development of the methodology of the automated experimental-and-statistical determination of optimal compositions of the slag-filled concretes. In order to optimise search of local extremums of the complicated functions of the multi-factor analysis, we will utilise the metaheuristic optimisation algorithm, which is based on the concept of the swarm intelligence. Motivation in respect of utilisation of the swarm intelligence algorithm is conditioned by the absence of the educational pattern, within which it is not necessary to establish a certain pattern of learning as it is necessary to do in the neural-network algorithms. In the course of performance of this investigation, we propose this algorithm, as well as procedure of its verification on the basis of the immediate experimental verification. Open Access. © 2019 K. Borodin and N. Zhangabayuly Zhangabay, published by De Gruyter.
Keywords: CIVIL ENGINEERING
METAHEURISTIC APPROACH
SLAG-FILLED CONCRETES
CIVIL ENGINEERING
CONCRETES
CURRICULA
MECHANICAL PROPERTIES
SLAGS
SWARM INTELLIGENCE
EXPERIMENTAL VERIFICATION
FILLED CONCRETE
MECHANICAL CHARACTERISTICS
META-HEURISTIC APPROACH
META-HEURISTIC OPTIMISATION
NEURAL NETWORK ALGORITHM
PHYSICAL AND CHEMICAL PROPERTIES
SWARM INTELLIGENCE ALGORITHMS
OPTIMIZATION
URI: http://elar.urfu.ru/handle/10995/90252
Access: info:eu-repo/semantics/openAccess
cc-by
SCOPUS ID: 85074414262
PURE ID: 11112562
ISSN: 2353-7396
DOI: 10.1515/cls-2019-0020
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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