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首页> 外文期刊>IEEE journal on electromagnetic compatibility practice and applications >Machine Learning for the Uncertainty Quantification of Power Networks
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Machine Learning for the Uncertainty Quantification of Power Networks

机译:机器学习的不确定性量化的电网

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摘要

This letter addresses the uncertainty quantification of a power network and is based on surrogate models built via Machine Learning techniques. Specifically, the least-square support vector machine regression is combined with the principal component analysis to generate a compressed surrogate model capable of predicting all the nodal voltages of the network as a function of the uncertain electrical parameters of the transmission lines. The surrogate model is built from a limited number of system responses provided by the computational model. The power flow analysis of the benchmark IEEE-118 bus system with 250 parameters is considered as a test case. The performance of the proposed modeling strategy in terms of accuracy, efficiency and convergence, are assessed and compared with those of an alternative surrogate model based on a sparse implementation of the polynomial chaos expansion. The results of a Monte Carlo simulation are used as reference in the above comparison.
机译:这封信地址的不确定性电力网络和基于量化代理通过机器学习模型的建立技术。支持向量机回归相结合主成分分析来生成一个压缩的代理模型的能力预测网络的节点电压作为一个函数的不确定的电力输电线路的参数。代理模型是由有限数量的所提供的系统响应计算模型。与250年ieee - 118总线系统参数视为一个测试用例。提出建模策略的准确性,效率和收敛性,评估和相比另一个代理基于稀疏的实现模型多项式混沌扩张。蒙特卡罗模拟是用作参考上面的比较。

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