Soft computing-based calibration of microplane M4 model parameters: Methodology and validation
نویسندگان
چکیده
Constitutive models for concrete based on the microplane concept have repeatedly proven their ability to well-reproduce non-linear response of concrete on material as well as structural scales. The major obstacle to a routine application of this class of models is, however, the calibration of microplane-related constants from macroscopic data. The goal of this paper is two-fold: (i) to introduce the basic ingredients of a robust inverse procedure for the determination of dominant parameters of the M4 model proposed by Bažant and co-workers in [4] based on cascade Artificial Neural Networks trained by Evolutionary Algorithm and (ii) to validate the proposed methodology against a representative set of experimental data. The obtained results demonstrate that the soft computing-based method is capable of delivering the searched response with an accuracy comparable to the values obtained by expert users. ∗Corresponding author. Tel. +420 224 355 326; fax: +420 224 310 775. E-mail address: [email protected] 1 ar X iv :1 30 4. 60 99 v2 [ cs .C E ] 1 2 Ju l 2 01 3
منابع مشابه
Estimating Parameters of Microplane Material Model Using Soft Computing Methods
1. Abstract The material model M4 for concrete based on a microplane paradigm [1] is a realistic but very complex model with a large number of phenomenological constitutive parameters, which are rather difficult to determine from experiments. In addition, high computational complexity and non-smoothness of the model response prohibits the use of traditional deterministic optimization methods to...
متن کاملMicroplane Model M 4 for Concrete . Ii : Algorithm and Calibration
This paper represents Part II of a two-part study in which a new improved version of the microplane constitutive model for damage-plastic behavior of concrete in 3D is developed. In Part II, an explicit numerical algorithm for model M4 is formulated, the material parameters of model M4 are calibrated by optimum fitting of the basic test data available in the literature, and the model is verifie...
متن کاملBack analysis of microplane model parameters using soft computing methods
A new procedure based on layered feed-forward neural networks for the microplane material model parameters identification is proposed in the present paper. Novelties are usage of the Latin Hypercube Sampling method for the generation of training sets, a systematic employment of stochastic sensitivity analysis and a genetic algorithmbased training of a neural network by an evolutionary algorithm...
متن کاملSpectral Stiffness Microplane Model for Quasibrittle Composite Laminates—Part I: Theory
The paper presents the spectral stiffness microplane model, which is a general constitutive model for unidirectional composite laminates, able to simulate the orthotropic stiffness, prepeak nonlinearity, failure envelopes, and, in tandem with the material characteristic length, also the post-peak softening and fracture. The framework of the microplane model is adopted. The model exploits the sp...
متن کاملDevelopment of near infrared reflectance spectroscopy (NIRS) calibration model for estimation of oil content in a worldwide safflower germplasm collection
The development of NIRS calibration model as a rapid, precise, robust, and cost-effective method to estimate oil content in ground seeds of worldwide safflower germplasm collection grown under different agro-climatic conditions was the key objective of this research project. The oil content was measured by accelerated solvent extraction method in a total of 328 samples collected across 2004 (16...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Advances in Engineering Software
دوره 72 شماره
صفحات -
تاریخ انتشار 2014