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Reliability Analysis of a Microgrid using Dynamic Bayesian Belief Networks

机译:基于动态贝叶斯信念网络的微电网可靠性分析

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Reliability analysis is made more difficult by the variability and intermittency of renewable energy sources that accompany the ageing of components. Most of the existing approaches predict the probability of generation as a single-point value or presume a predefined parametric model for it. Their drawback lies in that they rarely grasp low-probability events which are actually vital to reliability analysis. To overcome this shortcoming, this paper proposes a data-driven sequential unit commitment using the dynamic Bayesian belief networks and makes it the internal model of system operation inside the Monte Carlo simulation for reliability analysis. In each time step, the dynamic Bayesian belief network first generates the probability distributions of renewable energy generation. Then a realization of renewable energy generation is sampled as the boundary of the unit commitment of the present time step. The unit commitment is solved, and its impact of operating the generators on their ageing conditions is accumulated. The dynamic Bayesian belief network prediction and the unit commitment in sequence traverse step by step throughout the time horizon, and form one bid of the Monte Carlo simulation. The convergence of the Monte Carlo simulation is measured by a popular reliability indicator, loss of load probability. The proposed method has its effectiveness justified in its comparison with a point estimation method.
机译:伴随组件老化的可再生能源的可变性和间歇性,使可靠性分析变得更加困难。大多数现有方法都将生成的可能性预测为单点值,或者为它假定一个预定义的参数模型。他们的缺点在于,他们很少掌握对可靠性分析至关重要的低概率事件。为了克服这一缺点,本文提出了一种使用动态贝叶斯信念网络的数据驱动顺序单元承诺,并将其作为系统运行的内部模型,在蒙特卡洛模拟中进行了可靠性分析。在每个时间步长中,动态贝叶斯信念网络首先生成可再生能源发电的概率分布。然后,将实现可再生能源的实现作为当前时间步长的单位承诺的边界进行采样。解决了机组承诺,并且累积了发电机运行对其老化条件的影响。动态贝叶斯置信网络预测和顺序中的单位承诺在整个时间范围内逐步遍历,并构成了蒙特卡洛模拟的一个出价。蒙特卡洛模拟的收敛性是由一种流行的可靠性指标(负载损失的概率)来衡量的。所提出的方法与点估计方法相比,其有效性是合理的。

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