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首页> 外文期刊>Environmental Progress & Sustainable Energy >Vector-time-series-based back propagation neural network modeling of air quality inside a public transportation bus using available software
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Vector-time-series-based back propagation neural network modeling of air quality inside a public transportation bus using available software

机译:Vector-time-series-based反向传播神经空气质量在一个公众的网络建模运输巴士使用可用的软件

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摘要

This software review article describes the development of hybrid indoor air quality (IAQ) models by integrating the use of vector time series (VTS) and back propagation neural network (BPNN) modeling approaches. BPNNs are the most widely adopted artificial neural networks that serve as universal approximators and provide a flexible computational platform to integrate conventional modeling approaches like time series in developing hybrid environmental prediction (or forecasting) models. The hybrid VTS-based BPNN IAQ prediction models developed and validated in this study using available software are based on the monitoried in-bus contaminants of carbon dioxide and carbon monoxide. (c) 2015 American Institute of Chemical Engineers Environ Prog, 35: 7-13, 2016
机译:这个软件评论文章描述了开发混合室内空气质量(IAQ)模型通过整合利用向量的时间系列(VTS)和反向传播神经网络(摘要)的建模方法。广泛采用人工神经网络作为普遍接近者和提供灵活的计算平台集成传统的时间序列建模方法在发展中混合(或环境预测预测)模型。室内空气品质预测模型开发和验证本研究是基于使用可用的软件碳的训戒的巴士污染物二氧化碳和一氧化碳。化学工程师学会环境掠夺,35:7-13, 2016

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