基于相似日的光伏组件积灰损失预测Prediction of dust accumulation loss in photovoltaic modules based on similar days
曾侨飞,李斌,李新福,陈佳豪,杨雨昂
摘要(Abstract):
为研究灰尘对光伏发电性能的影响,通过搭建的实验台采集清洁与污染光伏组串每天的发电数据,同时监测气象数据,分析积灰及天气对光伏组件发电性能的影响。结果表明,冬季PM2.5质量浓度的上升和春季沙尘暴天气的频发使得光伏组件表面灰尘积累较多,累计发电量损失增长较快,而夏季由于降水增加,灰尘难以积聚在光伏组件上,累计发电量损失增长缓慢。此外,利用DTW(dynamic time warping)算法来寻找相似日。首先通过熵值法计算出各气象参数的权重,然后按日期逆序逐个计算出每个历史日各个气象参数对应的DTW值,再乘以其权重并相加得到历史日的综合DTW值。通过比较各历史日的综合DTW值,选出与当前日最接近的气象相似日。在避开极端天气的情况下,选择数据集中的一部分作为验证集,并对寻找相似日的判据进行优化,选取每天09:00—15:00的数据分为3个时间段进行分析,并设定平均太阳辐照度不小于600 W/m~2的条件。优化后,预测模型的评价指标决定系数为0.83,均方根误差为0.22,预测效果显著提升。最后利用该算法为光伏电站制定清洗策略,经过累计发电量损失与清洗成本的对比,确定在长期不降雨情况下,电站应每28天进行一次清洗。
关键词(KeyWords): 光伏组件;积尘;气象因素;相似日;DTW算法
基金项目(Foundation):
作者(Author): 曾侨飞,李斌,李新福,陈佳豪,杨雨昂
DOI: 10.19666/j.rlfd.202403031
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