Transactions of Nonferrous Metals Society of China The Chinese Journal of Nonferrous Metals

您目前所在的位置:首頁 - 期刊簡介 - 詳細(xì)頁面

中國有色金屬學(xué)報(bào)(英文版)

Transactions of Nonferrous Metals Society of China

Vol. 35    No. 5    May 2025

[PDF Download]        

    

Phase selection prediction and component determination of multiple-principal amorphous alloy composites based on artificial neural network model
Lin WANG1, Pei-you LI1, Wei ZHANG1, Xiao-ling FU2, Fang-yi WAN3, Yong-shan WANG1, Lin-sen SHU4, Long-quan YONG5

1. School of Materials Science and Engineering, Shaanxi University of Technology, Hanzhong 723001, China;
2. School of Materials and Energy, Guangdong University of Technology, Guangzhou 510006, China;
3. School of Aeronautics, Northwestern Polytechnical University, Xi’an 710071, China;
4. School of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, China;
5. School of Mathematics and Computer Science, Shaanxi University of Technology, Hanzhong 723001, China

Abstract:The probability of phase formation was predicted using k-nearest neighbor algorithm (KNN) and artificial neural network algorithm (ANN). Additionally, the composition ranges of Ti, Cu, Ni, and Hf in 40 unknown amorphous alloy composites (AACs) were predicted using ANN. The predicted alloys were then experimentally verified through X-ray diffraction (XRD) and high-resolution transmission electron microscopy (HRTEM). The prediction accuracies of the ANN for AM and IM phases are 93.12% and 85.16%, respectively, while the prediction accuracies of KNN for AM and IM phases are 93% and 84%, respectively. It is observed that when the contents of Ti, Cu, Ni, and Hf fall within the ranges of 32.7-34.5 at.%, 16.4-17.3 at.%, 30.9-32.7 at.%, and 17.3-18.3 at.%, respectively, it is more likely to form AACs. Based on the results of XRD and HRTEM, the Ti34Cu17Ni31.36Hf17.64 and Ti36Cu18Ni29.44Hf16.56 alloys are identified as good AACs, which are in closely consistent with the predicted amorphous alloy compositions.

 

Key words: multiple-principal amorphous alloy composites; Ti-Cu-Ni-Hf alloy; phase selection; artificial neural network; machine learning

ISSN 1004-0609
CN 43-1238/TG
CODEN: ZYJXFK

ISSN 1003-6326
CN 43-1239/TG
CODEN: TNMCEW

主管:中國科學(xué)技術(shù)協(xié)會(huì) 主辦:中國有色金屬學(xué)會(huì) 承辦:中南大學(xué)
湘ICP備09001153號 版權(quán)所有:《中國有色金屬學(xué)報(bào)》編輯部
------------------------------------------------------------------------------------------
地 址:湖南省長沙市岳麓山中南大學(xué)內(nèi) 郵編:410083
電 話:0731-88876765,88877197,88830410   傳真:0731-88877197   電子郵箱:f_ysxb@163.com  
常熟市| 九江市| 府谷县| 鄂托克前旗| 黄浦区| 洛扎县| 陇西县| 临潭县| 朝阳县| 土默特右旗| 菏泽市| 永昌县| 大丰市| 舟山市| 嘉定区| 桦甸市| 永修县| 阿拉善盟| 寿阳县| 榆林市| 当雄县| 湄潭县| 方城县| 新绛县| 曲靖市| 上饶县| 广德县| 保定市| 邻水| 延吉市| 霍林郭勒市| 美姑县| 萝北县| 吉隆县| 南靖县| 九龙城区| 县级市| 肃南| 金寨县| 名山县| 白沙|