The increasing penetration of embedded renewables makes forecasting net-load, consumption less embedded generation, a significant and growing challenge. Here a framework for producing probabilistic forecasts of net-load is proposed with particular attention given to the tails of predictive distributions, which are required for managing risk associated with low-probability events. Only small volumes of data are available in the tails, by definition, so estimation of predictive models and forecast evaluation requires special attention. We propose a solution based on a best-in-class load forecasting methodology adapted for net-load, and model the tails of predictive distributions with the Generalised Pareto Distribution, allowing its parameters to vary smoothly as functions of covariates. The resulting forecasts are shown to be calibrated and sharper than those produced with unconditional tail distributions. In a use-case inspired evaluation exercise based on reserve setting, the conditional tails are shown to reduce the overall volume of reserve required to manage a given risk. Furthermore, they identify periods of high risk not captured by other methods. The proposed method therefore enables user to both reduce costs and avoid excess risk.
翻译:嵌入式可再生能源的日益渗透使得预测净载荷、消耗量较少的生成成为一项重大且日益严峻的挑战。在这里,提出了一个对净载荷进行概率预测的框架,并特别关注预测性分布的尾部,这是管理低概率事件的风险所必需的。根据定义,尾部只有少量数据,因此预测性模型的估计和预测性评价需要特别注意。我们提出了一个基于适合净载荷的最佳级负荷预测方法的解决方案,并用通用的Pareto分布系统模拟预测性分布的尾部,以便其参数随着共变功能而顺利变化。由此得出的预测显示,比无条件尾部分布的尾部更加精确和精确。在基于储备设置的有启发的运用性评价活动中,有条件尾部显示可以减少管理特定风险所需的总储备量。此外,它们还确定了没有被其他方法捕捉到的高风险时期。因此,拟议方法使用户既能够降低成本,也避免过度风险。