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Using Deep Recurrent Neural Network for direct beam solar irradiance cloud screening

机译:使用深度递归神经网络进行直接束太阳辐照度云筛查

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摘要

Cloud screening is an essential procedure for in-situ calibration and atmospheric properties retrieval on (UV-)Multi-Filter Rotating Shadowband Radiometer [(UV-)MFRSR]. Previous study has explored a cloud screening algorithm for direct-beam (UV-)MFRSR voltage measurements based on the stability assumption on a long time period (typically a half day or a whole day). To design such an algorithm requires in-depth understanding of radiative transfer and delicate data manipulation. Recent rapid developments on deep neural network and computation hardware have opened a window for modeling complicated End-to-End systems with a standardized strategy. In this study, a multi-layer dynamic bidirectional recurrent neural network is built for determining the cloudiness on each time point with a 17-year training dataset and tested with another 1-year dataset. The dataset is the daily 3-minute cosine corrected voltages, airmasses, and the corresponding cloud/clear-sky labels at two stations of the USDA UV-B Monitoring and Research Program. The results show that the optimized neural network model (3-layer, 250 hidden units, and 80 epochs of training) has an overall test accuracy of 97.87% (97.56% for the Oklahoma site and 98.16% for the Hawaii site). Generally, the neural network model grasps the key concept of the original model to use data in the entire day rather than short nearby measurements to perform cloud screening. A scrutiny of the logits layer suggests that the neural network model automatically learns a way to calculate a quantity similar to total optical depth and finds an appropriate threshold for cloud screening.
机译:云筛查是在(UV-)多滤光片旋转阴影带辐射计[(UV-)MFRSR]上进行原位校准和大气特性检索的基本程序。先前的研究基于长时间(通常为半天或一整天)的稳定性假设,探索了一种用于直接光束(UV-)MFRSR电压测量的云屏蔽算法。要设计这样的算法,需要深入了解辐射传递和精细的数据处理。深度神经网络和计算硬件的最新快速发展为使用标准化策略对复杂的端到端系统建模提供了一个窗口。在这项研究中,建立了多层动态双向递归神经网络,以使用17年的训练数据集确定每个时间点的浑浊度,并使用另一个1年的数据集进行测试。数据集是USDA UV-B监测和研究计划的两个站点每天3分钟的余弦校正电压,气团和相应的云/晴空标签。结果表明,优化的神经网络模型(3层,250个隐藏单元和80个训练时期)的总体测试准确性为97.87%(俄克拉荷马州为97.56%,夏威夷州为98.16%)。通常,神经网络模型掌握了原始模型的关键概念,可以在一整天内使用数据,而不是在附近进行短暂的测量以进行云筛查。对logits层的仔细检查表明,神经网络模型会自动学习一种计算类似于总光学深度的量的方法,并找到适合进行云筛查的阈值。

著录项

  • 来源
  • 会议地点 San Diego(US)
  • 作者单位

    United States Department of Agriculture UV-B Monitoring and Research Program, Natural Resource Ecology Laboratory, Colorado State University, Fort Collins, CO 80521, USA;

    United States Department of Agriculture UV-B Monitoring and Research Program, Natural Resource Ecology Laboratory, Colorado State University, Fort Collins, CO 80521, USA;

    Key Laboratory of Geographic Information Science, Ministry of Education, East China Normal University, Shanghai, 200241, China;

    United States Department of Agriculture UV-B Monitoring and Research Program, Natural Resource Ecology Laboratory, Colorado State University, Fort Collins, CO 80521, USA;

    United States Department of Agriculture UV-B Monitoring and Research Program, Natural Resource Ecology Laboratory, Colorado State University, Fort Collins, CO 80521, USA;

    United States Department of Agriculture UV-B Monitoring and Research Program, Natural Resource Ecology Laboratory, Colorado State University, Fort Collins, CO 80521, USA,Department of Ecosystem Science and Sustainability,Colorado State University, Fort Collins, CO 80523, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cloud Screening; direct normal cosine corrected voltage; (UV-)MFRSR; Long Short-Term Memory (LSTM); stacked dynamic bidirectional LSTM; TensorFlow; interpretation of LSTM outputs; Total Optical Depth (TOD);

    机译:云筛查;直接正常余弦校正电压; (UV-)MFRSR;长短期记忆(LSTM);堆叠动态双向LSTM; TensorFlow; LSTM输出的解释;总光深(TOD);
  • 入库时间 2022-08-26 13:45:16

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