Distributed rate control of smart solar arrays with batteries

Phuthipong Bovornkeeratiroj, Stephen Lee, Srinivasan Iyengar, David E. Irwin, P. Shenoy
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Abstract

Continued advances in technology have led to falling costs and a dramatic increase in the aggregate amount of solar capacity installed across the world. A drawback of increased solar penetration is the potential for supply-demand mismatches in the grid due to the intermittent nature of solar generation. While energy storage can be used to mask such problems, we argue that there is also a need to explicitly control the rate of solar generation of each solar array in order to achieve high penetration while also handling supply-demand mismatches. To address this issue, we present the notion of smart solar arrays that can actively modulate their solar output based on the notion of proportional fairness. We present a decentralized algorithm based on Lagrangian optimization that enables each smart solar array to make local decisions on its fair share of solar power it can inject into the grid and then present a sense-broadcast-respond protocol to implement our decentralized algorithm into smart solar arrays. We also study the benefits of using energy storage when we rate control solar. To do so, we present a decentralized algorithm to charge and discharge batteries for each smart solar. Our evaluation on a city-scale dataset shows that our approach enables 2.6× more solar penetration while causing smart arrays to reduce their output by as little as 12.4%. By employing an adaptive gradient approach, our decentralized algorithm has 3 to 30× faster convergence. Finally, we demonstrate energy storage can help netmeter more solar energy while ensuring fairness and grid constraints are met.
带电池的智能太阳能电池阵列的分布式速率控制
技术的持续进步导致了成本的下降和全球太阳能装机容量总量的急剧增加。增加太阳能渗透的一个缺点是,由于太阳能发电的间歇性,电网中可能出现供需不匹配。虽然储能可以用来掩盖这些问题,但我们认为还需要明确控制每个太阳能电池阵列的太阳能发电速率,以便在处理供需不匹配的同时实现高渗透率。为了解决这个问题,我们提出了智能太阳能电池阵列的概念,它可以根据比例公平的概念主动调节其太阳能输出。我们提出了一种基于拉格朗日优化的去中心化算法,该算法使每个智能太阳能电池阵列能够根据其可注入电网的公平太阳能份额做出本地决策,然后提出一种感知广播响应协议,将我们的去中心化算法实现到智能太阳能电池阵列中。我们还研究了在控制太阳能时使用储能的好处。为此,我们提出了一种分散的算法来为每个智能太阳能电池充电和放电。我们对城市规模数据集的评估表明,我们的方法可以使太阳能渗透率提高2.6倍,同时使智能阵列的输出减少12.4%。通过采用自适应梯度方法,我们的分散算法收敛速度提高了3到30倍。最后,我们证明了储能可以在确保公平性和满足电网约束的同时帮助计量更多的太阳能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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