基于前馈神经网络的微电网建模与仿真

Ahmad Alzahrani, P. Shamsi, M. Ferdowsi, C. Dagli
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引用次数: 10

摘要

电网与复杂的计算机系统在运行行为和结构上有许多相似的特性。微电网可以看作是一个小型电网,它包含了许多住宅负荷、储能单元和分布式能源。实施微电网的目标是即使在电网中断的情况下也能为家庭供电。即存储在存储单元和分布式发电中的能量将向负荷供电,直到主电网恢复正常运行,从而向负荷供电并将能量存储回存储单元。这种方法允许电网在控制和能源供应方面的分散化。为了处理分散的系统,需要将电网视为系统的系统(so),并使用能够捕捉微电网动态的模型。提出了一种基于前馈神经网络的微电网模型。该模型可用于复杂的系统建模技术,如基于智能体的方法和系统动力学,或各种方法的组合来表示不同的电气元件。通过对实际微电网的建模,说明了互联系统的突发性特征。讨论了仿真结果和波形。
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Modeling and simulation of a microgrid using feedforward neural networks
Electric power grids and complex computer systems have many similar properties of the operation behavior and the structure. A microgrid can be treated as a small electric grid that contains consisted of numerous residential loads, energy storage units, and distributed energy. The goal of implementing microgrids is to supply power to homes even in the event of an electric grid outage. That is, the stored energy in the storage unit and distributed generation will supply energy to the load until the main grid return to the normal operation, and therefore, supply power to the load and store energy back to the storage unit. This method allows decentralization of the electric grid regarding control and energy supply. To deal with decentralized systems, one needs to construe the electric grid as a system of systems (SoS), and use models that can capture the dynamics of the microgrid. This paper presents a model of microgrid using feedforward neural networks. This model can be utilized in complex system modeling techniques such as agent-based approaches and system dynamics, or a combination of various methods to represent different electric elements. An example of modeling real microgrid is presented to demonstrate the emergent characteristics of the interconnected system. Simulation results and waveforms are discussed.
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