Machine learning for a sustainable energy future
Transitioning from fossil fuels to renewable energy sources is a critical global challenge; it
demands advances—at the materials, devices and systems levels—for the efficient …
demands advances—at the materials, devices and systems levels—for the efficient …
Knowledge-integrated machine learning for materials: lessons from gameplaying and robotics
As materials researchers increasingly embrace machine-learning (ML) methods, it is natural
to wonder what lessons can be learned from other fields undergoing similar developments …
to wonder what lessons can be learned from other fields undergoing similar developments …
Recent progress and future prospects of perovskite tandem solar cells
Organic–inorganic metal halide perovskite solar cells represent the fastest advancing solar
cell technology in terms of energy conversion efficiency improvement, as seen in the last …
cell technology in terms of energy conversion efficiency improvement, as seen in the last …
Representations of materials for machine learning
J Damewood, J Karaguesian, JR Lunger… - Annual Review of …, 2023 - annualreviews.org
High-throughput data generation methods and machine learning (ML) algorithms have
given rise to a new era of computational materials science by learning the relations between …
given rise to a new era of computational materials science by learning the relations between …
Interpretable discovery of semiconductors with machine learning
Abstract Machine learning models of material properties accelerate materials discovery,
reproducing density functional theory calculated results at a fraction of the cost,,,,–. To bridge …
reproducing density functional theory calculated results at a fraction of the cost,,,,–. To bridge …
Scalable diffusion for materials generation
Generative models trained on internet-scale data are capable of generating novel and
realistic texts, images, and videos. A natural next question is whether these models can …
realistic texts, images, and videos. A natural next question is whether these models can …
A data fusion approach to optimize compositional stability of halide perovskites
Search for resource-efficient materials in vast compositional spaces is an outstanding
challenge in creating environmentally stable perovskite semiconductors. We demonstrate a …
challenge in creating environmentally stable perovskite semiconductors. We demonstrate a …
Machine learning for high-throughput experimental exploration of metal halide perovskites
Metal halide perovskites (MHPs) have catapulted to the forefront of energy research due to
the unique combination of high device performance, low materials cost, and facile solution …
the unique combination of high device performance, low materials cost, and facile solution …
Chemical robotics enabled exploration of stability in multicomponent lead halide perovskites via machine learning
Metal halide perovskites have attracted immense interest as a promising material for a
variety of optoelectronic and sensing applications. However, issues regarding long-term …
variety of optoelectronic and sensing applications. However, issues regarding long-term …
Machine learning for halide perovskite materials
L Zhang, M He, S Shao - Nano Energy, 2020 - Elsevier
Halide perovskite materials serve as excellent candidates for solar cell and optoelectronic
devices. Recently, the design of the halide perovskite materials is greatly facilitated by …
devices. Recently, the design of the halide perovskite materials is greatly facilitated by …