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An efficient Robust Random Vector Functional Link network for Solar Irradiance, Power and Wind speed prediction

机译:用于太阳辐照度,电力和风速预测的高效稳健的随机矢量功能链路网络

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This paper proposes an efficient technique for prediction of solar irradiance, solar power and wind speed at different time intervals (i.e. 5min, 10min and 60min). With the deliberation of historical solar irradiance, power and wind speed data, an ultra-short Prediction model has been established which is known as Robust Regularized Random Vector Functional link (RRVFL) network. This method utilizes a weighted factor in ridge regularized model, for training the samples to assess the weights in output layer. A Huber's cost function has been applied to gain the robustness here. To get the accuracy of the proposed methodology, the test has been carried out with solar and wind for various time intervals in different atmospheric condition. The result shows that the proposed RRVFL method is very superior as compared with other models (i.e. Random vector functional link (RVFL) and Robust Extreme learning machine(R-ELM), etc. Solar and wind data of California, USA has been taken here. The proposed model can be validated in real time scenario by using test bench application and in industries of solar and wind farm.
机译:本文提出了一种以不同时间间隔预测太阳辐照度,太阳能和风速的高效技术(即5分钟,10min和60min)。随着历史太阳辐照度,电力和风速数据的审议,已经建立了超短预测模型,该模型被称为鲁棒正则化随机向量功能链路(RRVFL)网络。该方法利用RIDGE正则化模型中的加权因子,用于训练样品以评估输出层中的权重。 Huber的成本函数已应用于在此处获得稳健性。为了获得所提出的方法的准确性,测试已经在不同的大气条件下使用太阳能和风力进行了各种时间间隔。结果表明,与其他模型相比,所提出的RRVFL方法非常优越(即随机向量功能链路(RVFL)和强大的极限学习机(R-ELM)等。美国的太阳能和风力数据。 。通过使用测试台应用和太阳能和风电场的行业,可以在实时验证所提出的模型。

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