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Showing 1–3 of 3 results
Advanced filters: Author: Zhichu Ren Clear advanced filters
  • Direct methanol fuel cells offer high energy densities but face challenges including catalyst degradation and surface fouling, which reduce performance over time. Here the authors introduce a control system inspired by reinforcement learning to optimize the power output and mitigate degradation of direct methanol fuel cells by dynamically adjusting the voltage.

    • Hongbin Xu
    • Yang Jeong Park
    • Ju Li
    Research
    Nature Energy
    Volume: 10, P: 951-961
  • Active learning and automation will not easily liberate humans from laboratory workflows. Before they can really impact materials research, artificial intelligence systems will need to be carefully set up to ensure their robust operation and their ability to deal with both epistemic and stochastic errors. As autonomous experiments become more widely available, it is essential to think about how to embed reproducibility, reconfigurability and interoperability in the design of autonomous labs.

    • Zhichu Ren
    • Zekun Ren
    • Ju Li
    Comments & Opinion
    Nature Reviews Materials
    Volume: 8, P: 563-564