The Impacts of Maintenance Weather and Aging on Solar Power Generation Forecasting and Prediction

S. Vyas, Sanskar Bhuwania, S. Mishra, Hardik Patel, Brijesh Tripathi
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引用次数: 1

Abstract

Solar energy forecasting has seen tremendous growth by using weather and photovoltaic (PV) parameters. This study presents new approach that predicts solar energy production by using the scheduled, unscheduled maintenance activities and weather data. The dataset is obtained from the 1MW solar power plant of PDEU (our university), which has 12 structured columns and 1 unstructured column with manual text entries about different scheduled and unscheduled maintenance activities, and weather conditions on the daily basis. The unstructured column is used to create new features by using Hash-Map, flag words and stop words. The solar power generation forecasting is formulated as a vector auto regression (VAR) optimization problem and total power generation forecasting is presented with the results of four different cases. The results have shown that the root mean square percentage error (RMSPE) in total power generation forecasting is less than 10% for different lag (p) values. The vector auto regression can forecast the unscheduled maintenance activities like Grid failure, Inverter Failure, scheduled maintenance activity like module cleaning, weather activity like cloudy along with total power generation forecasting for effective and efficient management of solar power plants. The power generation decay is different for all the PV sets which show the variations in the impacts of weather, aging and maintenance on the solar power plant. This research work has proven that the peaks of total power generation forecasting and prediction can be tracked in a better way by using daily unscheduled, scheduled maintenance activities and weather conditions.
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维护天气和老化对太阳能发电预报预报的影响
利用天气和光伏(PV)参数进行太阳能预报已经取得了巨大的发展。本研究提出了一种利用定期、非定期维护活动和天气数据预测太阳能产量的新方法。数据集来源于PDEU(我校)1MW太阳能电站,该数据集有12个结构化列和1个非结构化列,其中包含不同的计划维护和非计划维护活动以及每天的天气情况的手动文本条目。非结构化列通过使用Hash-Map、标志词和停止词来创建新特性。将太阳能发电预测表述为一个向量自回归优化问题,并给出了四种不同情况下的总发电量预测结果。结果表明,在不同滞后(p)值下,总发电量预测的均方根百分比误差(RMSPE)均小于10%。向量自回归可以预测电网故障、逆变器故障等计划外维护活动、模块清洗等计划外维护活动、多云等天气活动以及总发电量预测,实现对太阳能电站的有效管理。所有光伏发电机组的发电量衰减是不同的,这表明天气、老化和维护对太阳能发电厂的影响是不同的。本研究工作证明,利用日常计划外、计划维护活动和天气条件,可以更好地跟踪总发电量预测预测的峰值。
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