基于和谐搜索的极限学习机的太阳能发电短期预测

A. Pani, N. Nayak
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引用次数: 0

摘要

太阳能发电并网会产生非线性、不稳定性和不适当的能源管理,这仍然是安装大型太阳能发电厂时面临的一个挑战。因此,在不同的时间范围内预测太阳能发电对于维持适当的功率调整技术和管理是非常必要的。本文在一个实时光伏电站上实现了智能胜任预测模型。极限学习机(ELM)是一种新的预测技术。一般情况下,ELM的权值是随机选取的。预测模型的性能还取决于正确的权重选择。因此,采用了一种新的优化技术,即和谐搜索优化来选择优化的权重。该预测模型是在一个实时太阳能电站历史数据集上实现的,该历史数据集的地理位置在第二节的最后一部分给出。激活ELM模型,迭代地调动前馈神经网络,使每一步的预测误差更好。对ELM模型和Harmony Search优化的ELM模型进行了仿真误差计算,比较了不同测量指标下的结果和预测误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short Term Forecasting of Solar Power Using Harmony Search based Extreme Learning Machine
The grid incorporation of solar power production creates nonlinearity, instability and entails improper energy management, which is still a challenging situation while installing a large solar power plant. Thus prediction of solar power generation is highly essential in different time horizons for maintaining proper power adjustment techniques and management. In this work a smart and competent prediction model has been implemented on a real time photovoltaic power plant. The Extreme learning machine (ELM) which is a new prediction technique is applied in this work. The weights of ELM are selected randomly in general. The performance of the forecasting model also depends on proper weight selection. Thus a new optimization technique such as harmony search optimization is applied to select the optimized weights. The forecasting model is implemented on an historical data set of real time solar power plant whose geographical location is given in the last part of section-II. The ELM model is activated to mobilize the feed forward neural network, iteratively, to achieve better forecasting error in each step. ELM model and the Harmony Search optimized ELM model are simulated for error calculation and their results are compared in terms of different measuring indices and their forecasting errors are compared.
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