智能电网自适应随机能量流平衡

Hassan Shirzeh, F. Naghdy, P. Ciufo, M. Ros
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引用次数: 1

摘要

智能电网可以看作是由可再生能源、储能和负荷等分布式交互节点组成的非结构化网络。由于风速和太阳辐照等自然资源的间歇性,这些节点以随机的方式出现或消失。电能流的预测和随机建模是这种网络实现负载平衡和/或调峰的关键特征,以便最大限度地减少电力消费者在非峰值和峰值需求之间的波动。在向电网贡献能量之前,节点获取电网中其他节点的信息和电网的状态,以便调整自己向电网注入或从电网消耗的能量。利用从系统中收集的历史数据,通过调度策略控制和学习算法对智能电网中节点的不可预测行为进行建模和管理。随机模型预测未来的功耗/注入,以确定存储组件所需的功率。在提出的随机模型和部署的学习和适应过程中,基于时间序列不同子集的移动平均实现了两个指标,以满足两个目标。第一个目标是预测配电网络和节点之间电能流动的最有效状态。而第二个目标是利用蚁群搜索算法(ACSA)最小化从主电网获取电能的峰值需求和非峰值消耗。利用有限自回归综合移动平均(LARIMA)和二阶马尔可夫链模型验证了指标的性能。结果表明,该方法优于LARIMA模型和马尔可夫链模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive stochastic energy flow balancing in smart grid
A smart grid can be considered as an unstructured network of distributed interacting nodes represented by renewable energy sources, storage and loads. The nodes emerge or disappear in a stochastic manner due to the intermittent nature of natural sources such as wind speed and solar irradiation. Prediction and stochastic modelling of electrical energy flow is a critical characteristic in such a network to achieve load balancing and/or peak shaving in order to minimise the fluctuation between off peak and peak demand by power consumers. Before contributing energy to the network, a node acquires information about other nodes in the grid and the state of the grid in order to adjust its power injection to or consumption from the grid. The unpredictable behaviour of nodes in a smart grid is modelled and administered through a scheduling strategy control and learning algorithm using the historical data collected from the system. The stochastic model predicts future power consumption/injection to determine the power required for storage components. In the proposed stochastic model and the deployed learning and adaptation processes, two indicators, based on moving averages of different subsets of the time series are implemented to satisfy two objectives. The first objective is to predict the most efficient state of electrical energy flow between a distribution network and nodes. Whereas the second objective is to minimise the peak demand and off peak consumption of acquiring electrical energy from the main grid by using ant colony search algorithm (ACSA). The performance of the indicators is validated against limited autoregressive integrated moving average (LARIMA) and second order Markov Chain model. It is shown that proposed method outperforms both LARIMA and Markov Chain model.
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