基于物联网的智能能源管理系统中可再生能源发电的需求响应

C. K. Rao, S. Sahoo, F. F. Yanine
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引用次数: 1

摘要

本文介绍了一种确定光伏板状态和评估其发电量的方法。每块太阳能板额定功率的气象数据被发送到云端,利用物联网在云端创建和存储,数据传输能力、关联和推断可以进一步分析,替代如此大量的数据,从而对每块太阳能板的状态做出有意义的预测,同时做出快速可靠的选择。从云存储的大数据中识别任何必要的知识的能力将是可访问的。这些数据可以用于光伏发电优化或电网层面的能量平衡,这取决于通过交易能源的影响施加的负荷。通过监测收集到的大数据可以用来检查和提高生产力和效率。最后,使用Arduino和IOT,使用thingspeak实现需求侧管理。
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Demand Response for Renewable Generation in an IoT based Intelligent Smart Energy Management System
This paper describes a method to determine a photovoltaic panels state and evaluating its power production. Meteorological data on the rated power of each solar panel was sent to the Cloud, where they were created and stored using Internet of Things, data transmission capabilities, associations and inferences could be further analyzed with alternative to such a large amount of data to create meaningful predictions about the state of each Solar panel as well as to make quick and trustworthy choices Simultaneously, The ability to identify only any necessary knowledge from big data of cloud storage will be accessible. The data can be utilized for PV power generation optimization or energy balancing at the grid level, depending on the load imposed through implications for the trading energy. The big data collected through monitoring could be examined and used to improve productivity and efficiency. Finally, using Arduino and IOT, demand-side management is implemented using thingspeak.
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