Materials Informatics for Thermistor Properties of Mn-Co-Ni Oxides

被引:9
作者
Hashimura, Shogo [1 ]
Yamaguchi, Yudai [1 ]
Takeda, Hayami [1 ]
Tanibata, Naoto [1 ]
Nakayama, Masanobu [1 ]
Niizeki, Naohiro [2 ]
Nakaya, Takayuki [2 ]
机构
[1] Nagoya Inst Technol, Dept Adv Ceram, Nagoya, Aichi 4668555, Japan
[2] Fukushima Shibaura Elect Co Ltd, 66-5 Higashisasada, Motomiya, Fukushima 9691204, Japan
关键词
ELECTRICAL-PROPERTIES; SPINEL; NTC; SUBSTITUTION;
D O I
10.1021/acs.jpcc.3c03114
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Because the electrical properties, sensitivity (B constant), and resistance of thermistors must be fine-tuned according to the environment in which they are used, complex multicomponent transition metal oxides are often used to ensure the degree of freedom of the B constants and resistance parameters. However, the precise control of electrical properties is generally difficult, owing to the complex changes in crystalline phases with composition. In this study, we focused on quaternary Mn-Co-Ni oxides, performed exhaustive sintered body preparation by dividing the entire composition space into 50 parts, and evaluated the crystal phase, bulk density, and thermistor properties (B constant and resistance) of the sintered bodies. Furthermore, machine learning regression analysis was performed on the composition and electrical property data were obtained. However, even for the model with the lowest root-mean-square error, the prediction error of the B constants averaged similar to 300 K and that of the common logarithm of resistance (LogR) averaged 0.3 log k Omega mm, indicating the difficulty in controlling the desired electrical properties from the composition at a practical level. In contrast, compositions with arbitrary B constants and LogR could be efficiently determined by Bayesian optimization using the composition ratio as a descriptor.
引用
收藏
页码:21665 / 21674
页数:10
相关论文
共 39 条
[1]   Formation region of monophase with cubic spinel-type oxides in Mn-Co-Ni ternary system [J].
Abe, Y ;
Meguro, T ;
Oyamatsu, S ;
Yokoyama, T ;
Komeya, K .
JOURNAL OF MATERIALS SCIENCE, 1999, 34 (19) :4639-4644
[2]   THE INORGANIC CRYSTAL-STRUCTURE DATA-BASE [J].
BERGERHOFF, G ;
HUNDT, R ;
SIEVERS, R ;
BROWN, ID .
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 1983, 23 (02) :66-69
[3]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[4]  
Brochu E., 2010, A tutorial on bayesian optimization of expensive cost functions, with application to active user modeling and hierarchical reinforcement learning
[5]   Negative Temperature Coefficient Resistance (NTCR) Ceramic Thermistors: An Industrial Perspective [J].
Feteira, Antonio .
JOURNAL OF THE AMERICAN CERAMIC SOCIETY, 2009, 92 (05) :967-983
[6]   Bayesian-optimization-guided experimental search of NASICON-type solid electrolytes for all-solid-state Li-ion batteries [J].
Harada, Maho ;
Takeda, Hayami ;
Suzuki, Shinya ;
Nakano, Koki ;
Tanibata, Naoto ;
Nakayama, Masanobu ;
Karasuyama, Masayuki ;
Takeuchi, Ichiro .
JOURNAL OF MATERIALS CHEMISTRY A, 2020, 8 (30) :15103-15109
[7]  
Ho CH, 2012, J MACH LEARN RES, V13, P3323
[8]  
Hoskuldsson A., 1988, J. Chemom., V2, P211, DOI [10.1002/cem.1180020306, DOI 10.1002/CEM.1180020306]
[9]   Reduction of computational error by optimizing SVR kernel coefficients to simulate concrete compressive strength through the use of a human learning optimization algorithm [J].
Huang, Jiandong ;
Sun, Yuantian ;
Zhang, Junfei .
ENGINEERING WITH COMPUTERS, 2022, 38 (04) :3151-3168
[10]  
Hubbard C., 1988, Powder Diffr., V3, P74, DOI DOI 10.1017/S0885715600013257