首页> 外文期刊>The Electrochemical Society interface >Transformative Opportunities from Data Science and Big Data Analytics: Applied to Photovoltaics' name='citation_title
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Transformative Opportunities from Data Science and Big Data Analytics: Applied to Photovoltaics' name='citation_title

机译:数据科学和大数据分析的变革性机遇:应用于光伏技术” name =“ citation_title

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Distributed computing, data science, and machine learning are producing transformative changes across diverse research areas. Our research focuses on increasing the lifetime performance of photovoltaic (PV) module, and is essential to increasing PV energy generation on the electrical grid. Traditional analysis of PV modules is insufficient to determine accurate lifetimes of modules with different architectures deployed in diverse climatic zones. To solve this complex problem, a data science approach is needed to handle the large scale data on materials, modules, commercial power plants, and the grid. This approach involves data ingestion with a non-relational data warehouse and data driven modeling based on the underlying physics and chemistry. It is critical to assemble data, develop and share codes and tools, and report research results to the whole PV value chain, as opposed to just the PV research community.
机译:分布式计算,数据科学和机器学习正在跨不同的研究领域产生变革性的变化。我们的研究重点是提高光伏(PV)模块的使用寿命,并且对于增加电网上的PV能量产生至关重要。传统的光伏组件分析不足以确定部署在不同气候区的具有不同架构的组件的准确寿命。为了解决这个复杂的问题,需要一种数据科学方法来处理有关材料,模块,商业电厂和电网的大规模数据。这种方法涉及使用非关系数据仓库进行数据提取以及基于基础物理和化学的数据驱动建模。至关重要的是收集数据,开发和共享代码和工具,并将研究结果报告给整个PV价值链,而不仅仅是PV研究社区。

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