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Thermal Energy Collection Forecasting Based on Soft Computing Techniques for Solar Heat Energy Utilization System

机译:基于软计算技术的太阳能热利用系统热能收集预测

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摘要

In recent years, introduction of alternative energy sources such as solar energy is expected. Solar heat energy utilization systems are rapidly gaining acceptance as one of the best solutions to be an alternative energy source. However, thermal energy collection is influenced by solar radiation and weather conditions. In order to control a solar heat energy utilization system as accurate as possible, it requires method of solar radiation estimation. This paper proposes the forecast technique of a thermal energy collection of solar heat energy utilization system based on solar radiation forecasting at one-day-ahead 24-hour thermal energy collection by using three different NN models. The proposed technique with application of NN is trained by weather data based on tree-based model, and tested according to forecast day. Since tree-based-model classifies a meteorological data exactly, NN will train a solar radiation with smoothly. The validity of the proposed technique is confirmed by computer simulations by use of actual meteorological data.
机译:近年来,期望引入替代能源,例如太阳能。太阳能热利用系统正迅速成为公认的替代能源最佳解决方案之一。但是,热能收集受太阳辐射和天气条件的影响。为了尽可能精确地控制太阳热能利用系统,需要太阳辐射估计方法。提出了利用三种不同的神经网络模型,在提前一天24小时收集热能的基础上,基于太阳辐射预测的太阳能热利用系统的热能收集技术。所提出的应用神经网络的技术通过基于树模型的天气数据训练,并根据天气预报进行测试。由于基于树的模型对气象数据进行了精确分类,因此NN将平滑地训练太阳辐射。通过使用实际气象数据进行计算机模拟,证实了所提出技术的有效性。

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