基于大数据分析的太阳能风能评估

V. Khare, A. Bunglowala
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引用次数: 2

摘要

大数据是指从各种数据源收集的海量数据集,以满足业务需求,揭示优化决策的新见解。太阳能和风能系统由于其无污染的特性以及光伏和风力发电系统技术的不断进步,是现代化的发电系统。在太阳能、风能环境下,基于大数据分析的决策控制应用主要集中在数据流侧管理、存储侧管理和负荷侧管理三个方面。本研究的目的是提出一个技术框架,通过Hadoop等大数据工具管理大量、种类和速度的太阳能系统相关信息,以支持太阳能和风能系统的评估。该框架包括基于大量全球和漫射太阳辐射和风能系统的系统建模、存储、管理、监测和预测。本章还包括市场篮子模型、太阳能和风能存储的概念以及Map Reduce算法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solar-Wind Energy Assessment by Big Data Analysis
Big data refer to the massive datasets that are collected from a variety of data sources for business needs to reveal new insights for optimized decision-making. The solar and wind energy system is the modernization of electrical energy generation systems due to the pollution free nature and the continuous advancement of photo-voltaic and wind turbine system technologies. In the solar and wind energy surroundings, the application of big data analysis based decision-making and control are mainly in the following three aspects: data stream side management, storage side management and load side management. The objective of this research is to present a technological framework for the management of large volumes, variety, and velocity of solar system related information through big data tools such as Hadoop to support the assessment of solar and wind energy system. The framework includes a modeling of system, storage, management, monitoring and forecast based on large amounts of global and diffuse solar radiation and wind energy system. This chapter also includes market basket model, the concept of solar and wind depository and application of the Map Reduce algorithm.
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