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Machine learning-accelerated discovery of heat-resistant polysulfates for electrostatic energy storage

📅 Date:

✍️ Authors: He Li, Hongbo Zheng, Tianle Yue

🔖 Topics: Neural Network, Materials Science, Energy Storage System

🏢 Organizations: Lawrence Berkeley National Laboratory, The Scripps Research Institute, University of Wisconsin


The development of heat-resistant dielectric polymers that withstand intense electric fields at high temperatures is critical for electrification. Balancing thermal stability and electrical insulation, however, is exceptionally challenging as these properties are often inversely correlated. A traditional intuition-driven polymer design approach results in a slow discovery loop that limits breakthroughs. Here we present a machine learning-driven strategy to rapidly identify high-performance, heat-resistant polymers. A trustworthy feed-forward neural network is trained to predict key proxy parameters and down select polymer candidates from a library of nearly 50,000 polysulfates. The highly efficient and modular sulfur fluoride exchange click chemistry enables successful synthesis and validation of selected candidates. A polysulfate featuring a 9,9-di(naphthalene)-fluorene repeat unit exhibits excellent thermal resilience and achieves ultrahigh discharged energy density with over 90% efficiency at 200 °C. Its exceptional cycling stability underscores its promise for applications in demanding electrified environments.

Read more at Nature Energy