论文标题

使用多任务深神经网络的生物塑料设计

Bioplastic Design using Multitask Deep Neural Networks

论文作者

Kuenneth, Christopher, Lalonde, Jessica, Marrone, Babetta L., Iverson, Carl N., Ramprasad, Rampi, Pilania, Ghanshyam

论文摘要

不可降解的塑料废物数十年在陆地和水中停留,危害我们的环境;然而,如果没有塑料,我们的现代生活方式和当前技术就无法维持。生物合成和可生物降解的替代方法,例如聚合物的聚合物家族(PHAS)有可能用摇篮材料代替世界塑料供应的大部分,但它们的化学复杂性和多样性限制了传统资源密集型实验。在这项工作中,我们使用可用的实验数据开发多任务深神经网络属性预测因素,用于近23000种同性恋和共聚物化学。使用预测因素,我们从近140万候选人的搜索空间中鉴定出14个基于PHA的生物塑料,这些搜索空间可以作为七种基于石油的商品塑料的潜在替代品,这些塑料占全球年度塑料生产的75%。我们讨论了这些已确定的有前途材料的可能的合成途径。在https://polymergenome.org上提供了开发的多任务聚合物性能预测因子作为聚合物基因组项目的一部分。

Non-degradable plastic waste stays for decades on land and in water, jeopardizing our environment; yet our modern lifestyle and current technologies are impossible to sustain without plastics. Bio-synthesized and biodegradable alternatives such as the polymer family of polyhydroxyalkanoates (PHAs) have the potential to replace large portions of the world's plastic supply with cradle-to-cradle materials, but their chemical complexity and diversity limit traditional resource-intensive experimentation. In this work, we develop multitask deep neural network property predictors using available experimental data for a diverse set of nearly 23000 homo- and copolymer chemistries. Using the predictors, we identify 14 PHA-based bioplastics from a search space of almost 1.4 million candidates which could serve as potential replacements for seven petroleum-based commodity plastics that account for 75% of the world's yearly plastic production. We discuss possible synthesis routes for these identified promising materials. The developed multitask polymer property predictors are made available as a part of the Polymer Genome project at https://PolymerGenome.org.

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