The rapid adoption of residential solar photovoltaics (PV) has resulted in regular overvoltage events, due to correlated reverse power flows. Currently, PV inverters prevent damage to electronics by curtailing energy production in response to overvoltage. However, this disproportionately affects households at the far end of the feeder, leading to an unfair allocation of the potential value of energy produced. Globally optimizing for fair curtailment requires accurate feeder parameters, which are often unknown. This paper investigates reinforcement learning, which gradually optimizes a fair PV curtailment strategy by interacting with the system. We evaluate six fairness metrics on how well they can be learned compared to an optimal solution oracle. We show that all definitions permit efficient learning, suggesting that reinforcement learning is a promising approach to achieving both safe and fair PV coordination.
翻译:迅速采用住宅太阳能光伏发电(PV)导致经常发生高压事件,其原因是相关的反向电流。目前,光电转换器通过减少能源生产来防止对电子产品的破坏,因为高压发电导致的能源生产减少。然而,这不成比例地影响到供应器远端的家庭,导致产生的潜在能源价值分配不公。全球为公平削减而优化需要准确的支线参数,而这些参数往往不为人知。本文调查了强化学习,通过与系统互动,逐渐优化公平的光电削减战略。我们评估了六种公平衡量标准,说明与最佳解决方案相比,它们能够学到多少东西。我们显示,所有定义都允许有效学习,表明强化学习是实现安全和公平光电协调的一个很有希望的方法。