The microstructure determines the photovoltaic performance of a thin film organic semiconductor film. The relationship between microstructure and performance is usually highly non-linear and expensive to evaluate, thus making microstructure optimization challenging. Here, we show a data-driven approach for mapping the microstructure to photovoltaic performance using deep convolutional neural networks. We characterize this approach in terms of two critical metrics, its generalizability (has it learnt a reasonable map?), and its intepretability (can it produce meaningful microstructure characteristics that influence its prediction?). A surrogate model that exhibits these two features of generalizability and intepretability is particularly use...
The discovery of new photovoltaic materials can facilitate technological progress in clean energy an...
The interplay between structure and property is a fundamental research topic in materials science an...
Deep Learning strategies recently emerged as powerful tools for the characterization of heterogeneo...
The performance of an organic photovoltaic device is intricately connected to its active layer morph...
Material microstructure prediction based on processing conditions is very useful in advanced manufac...
In the process of finding high-performance materials for organic photovoltaics (OPVs), it is meaning...
Most discoveries in materials science have been made empirically, typically through one-variable-at-...
Designing efficient organic photovoltaic (OPV) materials purposefully is still challenging and time-...
The processing conditions during solvent-based fabrication of thin film organic electronics signific...
We present a translation of the chemical intuition in materials discovery, in terms of chemical simi...
Machine learning for materials science envisions the acceleration of basic science research through ...
There is currently a worldwide effort to develop novel materials for solar energy harvesting which a...
The design and discovery of novel materials are difficult not only due to expensive and time- consum...
Most discoveries in materials science have been made empirically, typically through one-variable-at-...
There is currently a worldwide effort to develop materials for solar energy harvesting which are eff...
The discovery of new photovoltaic materials can facilitate technological progress in clean energy an...
The interplay between structure and property is a fundamental research topic in materials science an...
Deep Learning strategies recently emerged as powerful tools for the characterization of heterogeneo...
The performance of an organic photovoltaic device is intricately connected to its active layer morph...
Material microstructure prediction based on processing conditions is very useful in advanced manufac...
In the process of finding high-performance materials for organic photovoltaics (OPVs), it is meaning...
Most discoveries in materials science have been made empirically, typically through one-variable-at-...
Designing efficient organic photovoltaic (OPV) materials purposefully is still challenging and time-...
The processing conditions during solvent-based fabrication of thin film organic electronics signific...
We present a translation of the chemical intuition in materials discovery, in terms of chemical simi...
Machine learning for materials science envisions the acceleration of basic science research through ...
There is currently a worldwide effort to develop novel materials for solar energy harvesting which a...
The design and discovery of novel materials are difficult not only due to expensive and time- consum...
Most discoveries in materials science have been made empirically, typically through one-variable-at-...
There is currently a worldwide effort to develop materials for solar energy harvesting which are eff...
The discovery of new photovoltaic materials can facilitate technological progress in clean energy an...
The interplay between structure and property is a fundamental research topic in materials science an...
Deep Learning strategies recently emerged as powerful tools for the characterization of heterogeneo...