Abstract Layered IV-V-VI semiconductors have immense potential for thermoelectric (TE) applications due to their intrinsically ultralow lattice thermal conductivity. However, it is extremely difficult to assess their TE performance via experimental trial-and-error methods. Here, we present a machine-learning-based approach to accelerate the discovery of promising thermoelectric candidates in this chalcogenide family. Based on a dataset generated from high-throughput ab initio calculations, we develop two highly accurate-and-efficient neural network models to predict the maximum ZT (ZT max) and corresponding doping type, respectively. The top candidate, n-type Pb2Sb2S5, is successfully identified, with the ZT max over 1.0 at 650 K, owing to ...
Electronic fitness function (EFF, achieved by the electrical transport properties) as a new quantity...
Pseudobinary alloys (GeTe)m(Sb2Te3)n (GST), known as the most popular phase change materials for dat...
Thermoelectric materials efficiency is characterized by Figure of Merit. Figure of Merit depends on ...
Doping and alloying are fundamental strategies to improve the thermoelectric performance of bare mat...
The coupling nature of thermoelectric properties determines that optimizing the Fermi level is the p...
The coupling nature of thermoelectric properties determines that optimizing the Fermi level is the p...
Chalcopyrite-structured semiconductors have promising potential as low-cost thermoelectric materials...
The experimental search for new thermoelectric materials remains largely confined to a limited set o...
Thermoelectric materials can be used to construct devices which recycle waste heat into electricity....
The thermoelectric figures of merit of bulk materials up to date have not overcome zT = 3, and only ...
High-throughput (HTP) material design is an emerging field and has been proved to be powerful in the...
Thermoelectric power generation represents a promising approach to utilize waste heat. The most effe...
We present an overview and preliminary analysis of computed thermoelectric properties for more than ...
We present an overview and preliminary analysis of computed thermoelectric properties for more than ...
Recent advances in high-throughput (HTP) computational power and machine learning have led to great ...
Electronic fitness function (EFF, achieved by the electrical transport properties) as a new quantity...
Pseudobinary alloys (GeTe)m(Sb2Te3)n (GST), known as the most popular phase change materials for dat...
Thermoelectric materials efficiency is characterized by Figure of Merit. Figure of Merit depends on ...
Doping and alloying are fundamental strategies to improve the thermoelectric performance of bare mat...
The coupling nature of thermoelectric properties determines that optimizing the Fermi level is the p...
The coupling nature of thermoelectric properties determines that optimizing the Fermi level is the p...
Chalcopyrite-structured semiconductors have promising potential as low-cost thermoelectric materials...
The experimental search for new thermoelectric materials remains largely confined to a limited set o...
Thermoelectric materials can be used to construct devices which recycle waste heat into electricity....
The thermoelectric figures of merit of bulk materials up to date have not overcome zT = 3, and only ...
High-throughput (HTP) material design is an emerging field and has been proved to be powerful in the...
Thermoelectric power generation represents a promising approach to utilize waste heat. The most effe...
We present an overview and preliminary analysis of computed thermoelectric properties for more than ...
We present an overview and preliminary analysis of computed thermoelectric properties for more than ...
Recent advances in high-throughput (HTP) computational power and machine learning have led to great ...
Electronic fitness function (EFF, achieved by the electrical transport properties) as a new quantity...
Pseudobinary alloys (GeTe)m(Sb2Te3)n (GST), known as the most popular phase change materials for dat...
Thermoelectric materials efficiency is characterized by Figure of Merit. Figure of Merit depends on ...