2018
DOI: 10.1111/jace.15962
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Lead‐reduced Bi(Ni2/3Ta1/3)O3‐PbTiO3 perovskite ceramics with high Curie temperature and performance

Abstract: With increasing demand of high‐temperature piezoelectric devices and growing concern over environment protection, a feasible reduction in lead from lead‐based high Curie temperature piezoelectric materials are desperately needed. Herein, a new system of lead‐reduced Bi(Ni2/3Ta1/3)O3‐PbTiO3 (BNT‐PT) ferroelectric ceramics is fabricated by a conventional solid‐state sintering process. The phase transition behaviors as a function of composition and temperature, electrical properties, as well as the domain configu… Show more

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Cited by 9 publications
(1 citation statement)
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“…Most inorganic perovskites represented by ABO 3 structure have excellent ferroelectric properties and become one of the most promising materials for electronic and magnetic components such as multilayer capacitors and sensors 71,72 . Tc has a considerable influence on many applications of perovskite materials in the magnetic recording, sensor, actuators, and refrigeration 73,74 . Therefore, it is quite meaningful to predict Tc of perovskite materials quickly and effectively before experiments.…”
Section: Applications Of Machine Learning In Perovskite Materialsmentioning
confidence: 99%
“…Most inorganic perovskites represented by ABO 3 structure have excellent ferroelectric properties and become one of the most promising materials for electronic and magnetic components such as multilayer capacitors and sensors 71,72 . Tc has a considerable influence on many applications of perovskite materials in the magnetic recording, sensor, actuators, and refrigeration 73,74 . Therefore, it is quite meaningful to predict Tc of perovskite materials quickly and effectively before experiments.…”
Section: Applications Of Machine Learning In Perovskite Materialsmentioning
confidence: 99%