首页> 外文会议>2013 International Conference on QiR >New approach on renewable energy solar power prediction in Indonesia based on Artificial Neural Network technique: Southern region of Sulawesi island study case
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New approach on renewable energy solar power prediction in Indonesia based on Artificial Neural Network technique: Southern region of Sulawesi island study case

机译:基于人工神经网络技术的印度尼西亚可再生能源太阳能发电预测的新方法:苏拉威西岛南部地区研究案例

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Indonesia located at 94°–141°E and 6°N–11°S is the largest archipelago in the equator on earth. As a tropical country, Indonesia is endowed with abundant solar energy potential. This study is focused on modeling the Global Solar Radiation using Artificial Neural Network to predict GSR in a location which is available with meteorological data but lack with radiation measurement data. A case study on 5 locations in South Western region of Sulawesi was used to develop the model. The ANN model used 4 location with 5 years monthly meteorological and radiation data for training, and one location for testing. The simulation shows that an ANN with 4 layers and 5 neurons is the most appropriate model with an MSE of 0.003 and r of 0.99937. The model provides an excellent performance of prediction of with an MPE of 0.1427% and r2 of 0.999967. The predicted radiation data is in reasonable agreement with the actual data at the testing location; this shows the ability of ANN technique in generalization of data unavailability and produces an accurate prediction
机译:印度尼西亚位于东经94°–141°E和南北6°N–11°,是地球上赤道最大的群岛。作为一个热带国家,印度尼西亚拥有丰富的太阳能潜力。这项研究的重点是使用人工神经网络对全球太阳辐射进行建模,以预测某个位置的GSR,该位置具有气象数据,但缺乏辐射测量数据。该模型以苏拉威西岛西南部5个地点的案例研究为基础。人工神经网络模型使用4个地点,每月5年的气象和辐射数据进行训练,并使用1个地点进行测试。仿真显示,具有4层和5个神经元的ANN是最合适的模型,MSE为0.003,r为0.99937。该模型的MPE为0.1427%,r2为0.999967,具有出色的预测性能。预测的辐射数据与测试地点的实际数据合理一致;这显示了ANN技术在数据不可用性泛化中的能力,并产生了准确的预测

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