Soiling is the accumulation of dirt in solar panels which leads to a decreasing trend in solar energy yield and may be the cause of vast revenue losses. The effect of soiling can be reduced by washing the panels, which is, however, a procedure of non-negligible cost. Moreover, soiling monitoring systems are often unreliable or very costly. We study the problem of estimating the soiling ratio in photo-voltaic (PV) modules, i.e., the ratio of the real power output to the power output that would be produced if solar panels were clean. A key advantage of our algorithms is that they estimate soiling, without needing to train on labelled data, i.e., periods of explicitly monitoring the soiling in each park, and without relying on generic analytical formulas which do not take into account the peculiarities of each installation. We consider as input a time series comprising a minimum set of measurements, that are available to most PV park operators. Our experimental evaluation shows that we significantly outperform current state-of-the-art methods for estimating soiling ratio.
翻译:土壤是太阳能电池板中土土土的积累,导致太阳能产量下降的趋势,并可能是造成巨大收入损失的原因。土壤肥化的效果可以通过洗洗板来减轻,然而,洗洗板是一种不可忽略的成本程序。此外,土壤监测系统往往不可靠或费用高昂。我们研究在光伏(光伏)模块中估计土壤比的问题,即实际功率产出与太阳能电池板清洁后产生的电力产出的比率。我们的算法的一个主要优点是,它们估计土壤肥化情况,而不需要用标记的数据来训练,即明确监测每个公园土壤的一段时间,也不依赖不考虑每个装置特点的通用分析公式。我们把由大多数光伏(光电)公园操作员可得到的最低限度测量数据构成的时间序列视为投入。我们的实验评估表明,我们大大超过目前评估土壤肥化状况的方法。