基于机器学习的光伏系统电压调节协同控制

C. N. Bhende, G. Mohan, Yash Raghuwanshi
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引用次数: 1

摘要

光伏(PV)电源在配电网(DN)中的渗透率不断增加,由于DN的R/X比较高,引起了电压上升的担忧。为了解决这个问题,连接到DN的PVinverters应该参与辅助服务。这项工作的目的是利用无功功率控制来补偿电压上升。由于众多光伏逆变器需要参与无功控制,因此需要建立协同控制机制。为了实现有效、可靠的协同控制,需要各光伏机组之间的通信,这增加了成本和控制复杂性。因此,本文建立了基于机器学习即基于神经网络(NN)的光伏逆变器无功调节电压协同控制策略。该方法不需要昂贵的通信基础设施,只需要局部信息,并且仍然准确。此外,这种方法不需要有严重缺陷的下垂控制。仿真结果表明,该方法对DN中各母线的电压调节是非常有效的。
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Machine Learning based Cooperative Control of Photovoltaic Systems for Voltage Regulation
Penetration of photovoltaic (PV) sources is increasing in the distribution network (DN) which poses a concern of voltage rise due to a higher R/X ratio of DN. To tackle this, PVinverters connected to DN should take part in ancillary services. The objective of this work is to compensate the voltage rise using reactive power control. As many PV inverters need to contribute in reactive power control, the cooperative control mechanism is required. For the effective and reliable cooperative control, the communication among the various PV units is required which lead to increased cost and increased control complexity. Therefore, in this work, machine learning based i.e., neural network (NN)- based cooperative control strategy is established for the voltage regulation through reactive power control of PV inverters. The proposed method does not need costly communication infrastructure, needs only local information and it is still accurate. Moreover, this approach does not need droop control which has serious drawbacks. Through the simulations results, it is established that proposed method is highly effective for voltage regulation at various buses in DN.
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