{"title":"数字退火装置在优化化学反应条件以提高产量中的应用","authors":"Shih-Cheng Li, Pei-Hwa Wang, Jheng-Wei Su, Wei-Yin Chiang, Shih-Hsien Huang, Yen-Chu Lin, Chia-Ho Ou, Chih-Yu Chen","doi":"arxiv-2407.17485","DOIUrl":null,"url":null,"abstract":"Finding appropriate reaction conditions that yield high product rates in\nchemical synthesis is crucial for the chemical and pharmaceutical industries.\nHowever, due to the vast chemical space, conducting experiments for each\npossible reaction condition is impractical. Consequently, models such as QSAR\n(Quantitative Structure-Activity Relationship) or ML (Machine Learning) have\nbeen developed to predict the outcomes of reactions and illustrate how reaction\nconditions affect product yield. Despite these advancements, inferring all\npossible combinations remains computationally prohibitive when using a\nconventional CPU. In this work, we explore using a Digital Annealing Unit (DAU)\nto tackle these large-scale optimization problems more efficiently by solving\nQuadratic Unconstrained Binary Optimization (QUBO). Two types of QUBO models\nare constructed in this work: one using quantum annealing and the other using\nML. Both models are built and tested on four high-throughput experimentation\n(HTE) datasets and selected Reaxys datasets. Our results suggest that the\nperformance of models is comparable to classical ML methods (i.e., Random\nForest and Multilayer Perceptron (MLP)), while the inference time of our models\nrequires only seconds with a DAU. Additionally, in campaigns involving active\nlearning and autonomous design of reaction conditions to achieve higher\nreaction yield, our model demonstrates significant improvements by adding new\ndata, showing promise of adopting our method in the iterative nature of such\nproblem settings. Our method can also accelerate the screening of billions of\nreaction conditions, achieving speeds millions of times faster than traditional\ncomputing units in identifying superior conditions. Therefore, leveraging the\nDAU with our developed QUBO models has the potential to be a valuable tool for\ninnovative chemical synthesis.","PeriodicalId":501065,"journal":{"name":"arXiv - PHYS - Data Analysis, Statistics and Probability","volume":"140 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Application of the Digital Annealer Unit in Optimizing Chemical Reaction Conditions for Enhanced Production Yields\",\"authors\":\"Shih-Cheng Li, Pei-Hwa Wang, Jheng-Wei Su, Wei-Yin Chiang, Shih-Hsien Huang, Yen-Chu Lin, Chia-Ho Ou, Chih-Yu Chen\",\"doi\":\"arxiv-2407.17485\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Finding appropriate reaction conditions that yield high product rates in\\nchemical synthesis is crucial for the chemical and pharmaceutical industries.\\nHowever, due to the vast chemical space, conducting experiments for each\\npossible reaction condition is impractical. Consequently, models such as QSAR\\n(Quantitative Structure-Activity Relationship) or ML (Machine Learning) have\\nbeen developed to predict the outcomes of reactions and illustrate how reaction\\nconditions affect product yield. Despite these advancements, inferring all\\npossible combinations remains computationally prohibitive when using a\\nconventional CPU. In this work, we explore using a Digital Annealing Unit (DAU)\\nto tackle these large-scale optimization problems more efficiently by solving\\nQuadratic Unconstrained Binary Optimization (QUBO). Two types of QUBO models\\nare constructed in this work: one using quantum annealing and the other using\\nML. Both models are built and tested on four high-throughput experimentation\\n(HTE) datasets and selected Reaxys datasets. 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引用次数: 0
摘要
寻找合适的反应条件,在化学合成中获得高产率,对于化学和制药行业至关重要。然而,由于化学空间巨大,对每种可能的反应条件进行实验是不切实际的。因此,人们开发了 QSAR(定量结构-活性关系)或 ML(机器学习)等模型来预测反应结果,并说明反应条件如何影响产物产量。尽管取得了这些进步,但在使用传统 CPU 时,推断所有可能的组合仍然耗费大量计算资源。在这项工作中,我们探索使用数字退火单元(DAU),通过求解二次无约束二元优化(QUBO),更高效地解决这些大规模优化问题。本文构建了两种 QUBO 模型:一种使用量子退火,另一种使用ML。我们在四个高通量实验(HTE)数据集和选定的 Reaxys 数据集上构建并测试了这两种模型。我们的结果表明,模型的性能可与经典的 ML 方法(即随机森林和多层感知器 (MLP))相媲美,而我们模型的推理时间只需要 DAU 的几秒钟。此外,在涉及主动学习和自主设计反应条件以获得更高的反应产率的活动中,我们的模型通过添加新数据实现了显著的改进,这表明在此类问题设置的迭代性质中采用我们的方法大有可为。我们的方法还能加速筛选数十亿个反应条件,在识别优越条件方面的速度比传统计算单元快数百万倍。因此,利用 DAU 和我们开发的 QUBO 模型有可能成为创新化学合成的重要工具。
Application of the Digital Annealer Unit in Optimizing Chemical Reaction Conditions for Enhanced Production Yields
Finding appropriate reaction conditions that yield high product rates in
chemical synthesis is crucial for the chemical and pharmaceutical industries.
However, due to the vast chemical space, conducting experiments for each
possible reaction condition is impractical. Consequently, models such as QSAR
(Quantitative Structure-Activity Relationship) or ML (Machine Learning) have
been developed to predict the outcomes of reactions and illustrate how reaction
conditions affect product yield. Despite these advancements, inferring all
possible combinations remains computationally prohibitive when using a
conventional CPU. In this work, we explore using a Digital Annealing Unit (DAU)
to tackle these large-scale optimization problems more efficiently by solving
Quadratic Unconstrained Binary Optimization (QUBO). Two types of QUBO models
are constructed in this work: one using quantum annealing and the other using
ML. Both models are built and tested on four high-throughput experimentation
(HTE) datasets and selected Reaxys datasets. Our results suggest that the
performance of models is comparable to classical ML methods (i.e., Random
Forest and Multilayer Perceptron (MLP)), while the inference time of our models
requires only seconds with a DAU. Additionally, in campaigns involving active
learning and autonomous design of reaction conditions to achieve higher
reaction yield, our model demonstrates significant improvements by adding new
data, showing promise of adopting our method in the iterative nature of such
problem settings. Our method can also accelerate the screening of billions of
reaction conditions, achieving speeds millions of times faster than traditional
computing units in identifying superior conditions. Therefore, leveraging the
DAU with our developed QUBO models has the potential to be a valuable tool for
innovative chemical synthesis.