Hydrogen is poised to play a major role in decarbonizing the economy. The need to discover, develop, and understand low-cost, high-performance, durable materials that can help maximize the cost of electrolysis as well as the need for an intelligent tool to make evidence-based Hydrogen research funding decisions relatively easier warranted this study.In this work, we developed H2 Golden Retriever (H2GR) system for Hydrogen knowledge discovery and representation using Natural Language Processing (NLP), Knowledge Graph and Decision Intelligence. This system represents a novel methodology encapsulating state-of-the-art technique for evidence-based research grantmanship. Relevant Hydrogen papers were scraped and indexed from the web and preprocessing was done using noise and stop-words removal, language and spell check, stemming and lemmatization. The NLP tasks included Named Entity Recognition using Stanford and Spacy NER, topic modeling using Latent Dirichlet Allocation and TF-IDF. The Knowledge Graph module was used for the generation of meaningful entities and their relationships, trends and patterns in relevant H2 papers, thanks to an ontology of the hydrogen production domain. The Decision Intelligence component provides stakeholders with a simulation environment for cost and quantity dependencies. PageRank algorithm was used to rank papers of interest. Random searches were made on the proposed H2GR and the results included a list of papers ranked by relevancy score, entities, graphs of relationships between the entities, ontology of H2 production and Causal Decision Diagrams showing component interactivity. Qualitative assessment was done by the experts and H2GR is deemed to function to a satisfactory level.
翻译:需要发现、开发和理解低成本、高性能和耐久材料,帮助最大限度地提高电解成本,还需要使用智能工具,使基于证据的氢研究供资决定相对容易一些,因此,这项研究是值得的。 在这项工作中,我们开发了氢知识发现和代表性的H2黄金检索系统,使用自然语言处理、知识图和决定智能进行氢知识发现和展示。该系统代表了一种包含基于证据的研究授与技术最新技术的新型方法。有关的氢文件被从网络和预处理中剪除并索引化了电解成本,以及需要使用智能工具使基于证据的研究供资决定相对容易得多。 在这项工作中,我们开发了H2相关氢文件的高级技术, 并且根据关于氢生产、语言和拼写检查、阻断和精化等的断语法, 使用“H2”智能检索系统, 我们开发了“H2”系统, 数据图表模块用于生成有意义的实体及其在相关H2文件中的关系、趋势和模式。 在H2的纸质平面图上,通过“Orlialalalalalalalal ”中, 使用了“Serviewal real 和“HLialalalalal ” 的计算, 。