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Integration of Gaussian Processes and Particle Swarm Optimization for Very-Short Term Wind Speed Forecasting in Smart Power

机译:高斯工艺与粒子群优化的整合,对智能电力的大短期风速预测

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摘要

This article describes how the integration of renewable energy in the power grid is a critical issue in order to realize a smart grid infrastructure. To that end, intelligent methods that monitor and currently predict the values of critical variables of renewable energy are essential. With respect to wind power, such variable is the wind speed given that it is of great interest to efficient schedule operation of a wind farm. In this article, a new methodology for predicting wind speed is presented for very short-term prediction horizons. The methodology integrates multiple Gaussian process regressors (GPR) via the adoption of an optimization problem whose solution is given by the particle swarm optimization algorithm. The optimized framework is utilized for the average hourly wind speed prediction for a prediction horizon of six hours ahead. Results demonstrate the ability of the methodology in accurately forecasting the wind speed. Furthermore, obtained forecasts are compared with those taken from single Gaussian process regressors as well from the integration of the same multiple GPR using a genetic algorithm.
机译:本文介绍了可再生能源在电网中的集成方式是一个关键问题,以实现智能电网基础架构。为此,监控和目前预测可再生能源的临界变量的值至关重要的智能方法是必不可少的。关于风力力,这种变量是风速,因为它对风电场的有效时间表运作有益。在本文中,为非常短期预测视野提出了一种预测风速的新方法。该方法通过采用通过粒子群优化算法给出的优化问题来集成多个高斯过程回归(GPR)。优化的框架用于预测六个小时的预测地平线的平均每小时风速预测。结果证明了方法论准确预测风速的能力。此外,与使用遗传算法的相同多GPR的集成以及从单个高斯过程回归量取得的那些相比,获得了预测。

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