首页> 外文会议>IEEE International Conference on Smart Grid Communications >PV power predictors for condition monitoring
【24h】

PV power predictors for condition monitoring

机译:光伏电力预测器,用于状态监测

获取原文

摘要

In countries such as India with low grid prices, energy firms are offering competitive PPA tariffs by setting up large solar farms. Given lower margins in operating these farms, there is great sensitivity to panels underperforming. To detect under-performance, existing condition monitoring methods compare generated power with an ideal yield calculated based on local weather conditions. Applying such methods to a 1.2MW farm with 6 different PV technologies over 3 years, we observed prediction errors large enough to mask under-performance. To reduce these errors, this work proposes two approaches. Firstly, a piecewise regression approach is proposed which improves estimation accuracy by applying a set of regression models, each corresponding to a partition of the predictor space. This helps capture the inherent non-linearities in PV power output. Secondly, we explicitly model the Maximum Power Point Tracker (MPPT) in a two-step prediction method. In doing so, we combine a regression method on irradiance data with physical modeling of I-V characteristics of panels, resulting in an average reduction in error by about 16%. While the piecewise regression approach requires only power measurements, the I-V approach requires both voltage and ampere measurements. The proposed predictors may be used to monitor the performance of solar farms, leading to timely identification of operational problems and aging.
机译:在印度等电网价格较低的国家,能源公司通过建立大型太阳能发电场来提供具有竞争力的PPA关税。由于经营这些农场的利润较低,因此对面板表现不佳的情况非常敏感。为了检测性能不佳,现有的状态监测方法将发电量与根据当地天气情况计算出的理想发电量进行比较。在3年中将这种方法应用于具有6种不同光伏技术的1.2MW农场时,我们观察到了足以掩盖性能不佳的预测误差。为了减少这些错误,这项工作提出了两种方法。首先,提出了一种分段回归方法,该方法通过应用一组回归模型来提高估计准确性,每个回归模型都对应于预测变量空间的一个分区。这有助于捕获PV功率输出中固有的非线性。其次,我们通过两步预测方法对最大功率点跟踪器(MPPT)进行显式建模。为此,我们将辐照度数据的回归方法与面板的I-V特性的物理建模相结合,从而平均减少了约16%的误差。分段回归方法仅需要功率测量,而I-V方法则需要电压和安培测量。拟议的预测指标可用于监测太阳能发电场的性能,从而及时识别运营问题和老化。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号