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Visual Analysis on Machine Learning Assisted Prediction of Ionic Conductivity for Solid-State Electrolytes

机译:机器学习辅助预测固态电解质离子电导率的辅助预测

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Lithium ion batteries (LIBs) are widely used as the important energy sources in our daily life such as mobile phones, electric vehicles, and drones etc. Due to the potential safety risks caused by liquid electrolytes, the experts have tried to replace liquid electrolytes with solid ones. However, it is very difficult to find suitable alternatives materials in traditional ways for its incredible high cost in searching. Machine learning (ML) based methods are currently introduced and used for material prediction. But there is rarely an assisting learning tools designed for domain experts for institutive performance comparison and analysis of ML model. In this case, we propose an interactive visualization system for experts to select suitable ML models, understand and explore the predication results comprehensively. Our system employs a multi-faceted visualization scheme designed to support analysis from the perspective of feature composition, data similarity, model performance, and results presentation. A case study with real experiments in lab has been taken by the expert and the results of confirmed the effectiveness and helpfulness of our system.
机译:锂离子电池(LIBS)被广泛应用于我们日常生活中的重要能源,如手机,电动车辆和无人机等。由于液体电解质引起的潜在安全风险,专家试图用液体电解质取代液体电解质坚实的。然而,很难以传统方式找到合适的替代材料,以便在搜索中令人难以置信的高成本。目前介绍了基于机器学习(ML)的方法并用于材料预测。但很少有助于辅助学习工具,专为域专家而设计,用于立即性能比较和ML模型分析。在这种情况下,我们提出了一个专家的交互式可视化系统,以选择合适的ML模型,了解并探索预测结果。我们的系统采用多面可视化方案,旨在从特征组成,数据相似性,模型性能和结果呈现的角度来支持分析。专家采取了实验实验的案例研究,并确认了我们系统的有效性和助人的结果。

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