使用TensorFlow分析空气质量人工智能预测PM2.5

U. Rahardja, Q. Aini, Po Abas Sunarya, D. Manongga, Dwi Julianingsih
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引用次数: 6

摘要

基于社区多尺度空气质量(PM2.5)操作模型的人工智能预测技术可以使用TensorFlow。本研究中使用TensorFlow来评估循环神经网络(RNN)输入变量在2022年7月至10月6小时预测中的得分。1天和2天预测的相关性分数由目标预测时间框架2-5和4-7个先前时间步骤的相关性分数的总和表示。输入变量的初始选择是基于它们与PM2.5浓度的相关系数。然而,TensorFlow测量的输入变量的贡献顺序与其相关系数的顺序不同,这表明该方法的线性变量与非线性变量之间存在不一致。研究发现,使用具有高相关性评分的变量子集对RNN模型进行再训练,产生了类似于初始输入变量集的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of TensorFlow in Analyzing Air Quality Artificial Intelligence Predictions PM2.5
 Artificial intelligence techniques to forecasts based on the Community Multiscale Air Quality (PM2.5) operational model can be known using TensorFlow. TensorFlow was used in this study to assess the scores of the Recurrent Neural Networks (RNN) input variables on the 6-hour forecast for July-October 2022. The relevance scores for the one- and two-day forecasts are represented by the sum of the relevance scores across the target prediction timeframe 2–5 and 4–7 previous time steps. The initial selection of input variables was based on their correlation coefficient with the measured PM2.5 concentration. Still, the order of contribution of the input variables measured by TensorFlow was different from the order of their correlation coefficients, which indicated an inconsistency between the linear and nonlinear variables of the method. It was found that the retraining of the RNN model using a subset of variables with a high relevance score resulted in a predictive ability similar to the initial set of input variables. 
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