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Featured researches published by Mao Zhang.


Knowledge Based Systems | 2015

Optimization of gear blank preforms based on a new R-GPLVM model utilizing GA-ELM

Zhiyong Cao; Juchen Xia; Mao Zhang; Junsong Jin; Lei Deng; Xinyun Wang; June Qu

A novel R-GPLVM is proposed to screen out critical dimensions of the preform.A newly GA-ELM framework seamlessly integrated with R-GPLVM is proposed.Discussions demonstrate that Gaussian kernel function has the higher accuracy.The relevant parameters of ELM are optimized with the improved performance.Engineering applications and FEM validate the feasibility of the proposed method. The determination of the key dimensions of gear blank preforms with complicated geometries is a highly nonlinear optimization task. To determine critical design dimensions, we propose a novel and efficient dimensionality reduction (DR) model that adapts Gaussian process regression (GPR) to construct a topological constraint between the design latent variables (LVs) and the regression space. This procedure is termed the regression-constrained Gaussian process latent variables model (R-GPLVM), which overcomes GPLVMs drawback of ignoring the regression constrains. To determine the appropriate sub-manifolds of the high-dimensional sample space, we combine the maximum a posteriori method with the scaled conjugate gradient (SCG) algorithm. This procedure can estimate the coordinates of preform samples in the space of LVs. Numerical experiments reveal that the R-GPLVM outperforms the pure GPR in various dimensional spaces, when the proper hyper-parameters and kernel functions are solved for. Results using an extreme learning model (ELM) obtain a better prediction precision than the back propagation method (BP), when the dimensions are reduced to seven and a Gaussian kernel function is adopted. After the seven key variables are screened out, the ELM model will be constructed with realistic inputs and obtains improved prediction accuracy. However, since the ELM has a problem with validity of the prediction, a genetic algorithm (GA) is exploited to optimize the connection parameters between each network layer to improve the reliability and generalization. In terms of prediction accuracy for testing datasets, GA has a better performance compared to the differential evolution (DE) approach, which motivates the choice to use the genetic algorithm-extreme learning model (GA-ELM). Moreover, GA-ELM is employed to measure the aforementioned DR using engineering criteria. In the end, to obtain the optimal geometry, a parallel selection method of multi-objective optimization is proposed to obtain the Pareto-optimal solution, while the maximum finisher forming force (MFFF) and the maximum finisher die stress (MFDS) are both minimized. Comparative analysis with other numerical models including finite element model (FEM) simulation is conducted using the GA optimized preform. Results show that the values of MFFF and MFDS predicted by GA-ELM and R-GPLVM agree well with the experimental results, which validates the feasibility of our proposed methods.


Scientific Reports | 2015

A size-dependent constitutive model of bulk metallic glasses in the supercooled liquid region

Di Yao; Lei Deng; Mao Zhang; Xinyun Wang; Na Tang; Jianjun Li

Size effect is of great importance in micro forming processes. In this paper, micro cylinder compression was conducted to investigate the deformation behavior of bulk metallic glasses (BMGs) in supercooled liquid region with different deformation variables including sample size, temperature and strain rate. It was found that the elastic and plastic behaviors of BMGs have a strong dependence on the sample size. The free volume and defect concentration were introduced to explain the size effect. In order to demonstrate the influence of deformation variables on steady stress, elastic modulus and overshoot phenomenon, four size-dependent factors were proposed to construct a size-dependent constitutive model based on the Maxwell-pulse type model previously presented by the authors according to viscosity theory and free volume model. The proposed constitutive model was then adopted in finite element method simulations, and validated by comparing the micro cylinder compression and micro double cup extrusion experimental data with the numerical results. Furthermore, the model provides a new approach to understanding the size-dependent plastic deformation behavior of BMGs.


Corrosion Science | 2014

Air oxidation of a Zr55Cu30Al10Ni5 bulk metallic glass at its super cooled liquid state

Mao Zhang; Di Yao; Xinyun Wang; Lei Deng


Corrosion Science | 2015

Effect of surface morphology on the oxidation behavior of bulk metallic glass

Mao Zhang; Lei Deng; Di Yao; Junsong Jin; Xinyun Wang


Chemical Engineering Journal | 2017

One step GO/DTES co-deposition on steels: Electro-induced fabrication and characterization of thickness-controlled coatings

Zhiyong Cao; Hairen Wang; June Qu; Mao Zhang; Xinyun Wang; Weishen Xia


Corrosion Science | 2016

Multilayered scale formation during Zr-based metallic glass oxidation in the supercooled liquid region

Mao Zhang; Lei Deng; Di Yao; Junsong Jin; Xinyun Wang


Journal of Materials Science & Technology | 2018

Thermoplastic micro-formability of TiZrHfNiCuBe high entropy metallic glass

Xinyun Wang; Wenlei Dai; Mao Zhang; Pan Gong; Ning Li


Intermetallics | 2016

Influence of oxidation on the performance of Zr55Cu30Al10Ni5 BMG

Mao Zhang; Di Yao; Zhiyong Cao; Pan Li; Peng Zhou; Xinyun Wang


Intermetallics | 2017

A size-dependent free volume prediction model of Zr55Cu30Al10Ni5 bulk metallic glass in the supercooled liquid region

Di Yao; Lei Deng; Mao Zhang; Pan Gong; Xinyun Wang


Materials Letters | 2019

Oxidation behavior of a Ti16.7Zr16.7Hf16.7Cu16.7Ni16.7Be16.7 high-entropy bulk metallic glass

Mao Zhang; Pan Gong; Ning Li; Guangping Zheng; Lei Deng; Junsong Jin; Qiaomin Li; Xinyun Wang

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Xinyun Wang

Huazhong University of Science and Technology

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Lei Deng

Huazhong University of Science and Technology

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Di Yao

Huazhong University of Science and Technology

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Junsong Jin

Huazhong University of Science and Technology

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Pan Gong

Huazhong University of Science and Technology

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Pan Li

Huazhong University of Science and Technology

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Jianjun Li

Huazhong University of Science and Technology

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