首页> 外文会议>ECS conference on electrochemical energy conversion storage >A High-Speed Screening Method by Combining a High-Throughput Method and a Machine-Learning Algorithm for Developing Novel Organic Electrolytes in Rechargeable Batteries
【24h】

A High-Speed Screening Method by Combining a High-Throughput Method and a Machine-Learning Algorithm for Developing Novel Organic Electrolytes in Rechargeable Batteries

机译:通过结合高通量方法和机器学习算法在可充电电池中开发新型有机电解质的高通量方法和机器学习算法的高速筛选方法

获取原文

摘要

A high-speed screening method was established by combining a high-throughput quantum simulation (HT) with a machine learning algorithm (ML), which is named as MAssive Molecular Map BUilder (MAMMBU). For the applications to high-voltage rechargeable batteries, the MAMMBU was applied to screen organic electrolytes based on redox potential calculations. The HT-method consists of the automatic input generator from existing organic compound database, error correction, and job scheduler. In the ML-method, the computational results of redox potentials for organic compounds obtained from HT were used as training and test data for an artificial neural network. This MAMMBU was targeted for building redox potentials map based on whole organic compounds database, such as PubChem, and finding novel organic electrolytes with the new types of cores, substituents, and functional groups. This will be possible by remarkable reducing time to predict redox potentials from several hours for quantum calculations to several seconds for the ML-method in MAMMBU.
机译:通过将高通量量子仿真(HT)与机器学习算法(ML)组合来建立高速筛选方法,该方法被命名为大量分子映射构建器(MammBu)。对于高压可充电电池的应用,MammBu基于氧化还原电位计算应用于屏幕有机电解质。 HT-Method由现有有机复合数据库,纠错和作业调度程序的自动输入生成器组成。在M1-方法中,从HT获得的有机化合物的氧化还原电位的计算结果用作人工神经网络的训练和测试数据。此Mammbu针对基于整个有机化合物数据库(例如Pubchem)的氧化还原电位地图,以及用新型芯,取代基和官能团发现新型有机电解质。这将通过显着的还原时间来预测氧化还原电位,以便量子计算到MAMMBU中的ML方法几秒钟。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号