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Canonical Correlation Analysis Based Hyper Basis Feedforward Neural Network Classification for Urban Sustainability

机译:基于Canonical相关分析的城市可持续性超基前馈神经网络分类

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摘要

People give more importance concerning the overall quality of the modernized ecosystem. The pollution of air is one of the significant problems to be resolved as it restricted the ecological transformation of the modernized ecosystem. Therefore, it is fundamental to evaluate the implication of these ecological issues to enhance the urban ecosystem. This vital purpose of this research is to propose a canonical correlation analysis based hyper basis feedforward neural network classification (CCA-HBFNNC) model for evaluating sustainable urban environmental quality. The CCA-HBFNNC model initially acquires a large size of U.S. air pollution dataset as input. Then, a canonical correlative analysis based feature selection algorithm is applied in the CCA-HBFNNC model to select the key pollutant features, which bear fundamental implications to the modernize air pollution to maintain the level of urban sustainability. After the feature selection process, the CCA-HBFNNC model applies the HYPER BASIS FEEDFORWARD NEURAL NETWORK CLASSIFICATION (HBFNNC) algorithm in order to classify input air data based on chosen pollutants features. During the classification process, the HBFNNC algorithm used three critical layers namely hidden, output and input layers for efficiently categorizing each input data as higher or lower pollution level with higher accuracy. If the level of air pollution on the urban environment is higher, finally CCA-HBFNNC model significantly reduces the pollution level. In this way, the CCA-HBFNNC model attains improved urban sustainability levels when compared to sophisticated operation. An experimental evaluation of the CCA-HBFNNC model is determined in terms of CCA-HBFNNC model, time complexity and false-positive rate in consideration of the diversified number of air data retrieved from the big data sets. An investigational result shows that the proposed CCA-HBFNNC model can increases the sustainability level and minimizes the time complexity of urban development when contrasted with contemporary works.
机译:人们对现代化生态系统的整体质量提供更多重要性。空气的污染是待解决的重要问题之一,因为它限制了现代化生态系统的生态转型。因此,评估这些生态问题的含义来提高城市生态系统是至关重要的。该研究的这种重要目的是提出基于广基前馈神经网络分类(CCA-HBFNNC)模型的规范相关分析,用于评估可持续的城市环境质量。 CCA-HBFNNC模型最初获得大尺寸的美国空气污染数据集作为输入。然后,在CCA-HBFNNC模型中应用基于规范相关分析的特征选择算法,以选择关键的污染物特征,这对现代化空气污染产生了根本影响,以维持城市可持续性水平。在特征选择过程之后,CCA-HBFNNC模型应用超基前馈神经网络分类(HBFNNC)算法,以基于所选的污染物特征对输入空气数据进行分类。在分类过程中,HBFNNC算法使用了三个关键层,即隐藏,输出和输入层,以便有效地将每个输入数据视为更高或更低的污染水平,更高的精度。如果对城市环境的空气污染程度较高,则最终CCA-HBFNNC模型明显减少了污染水平。通过这种方式,与复杂的操作相比,CCA-HBFNNC模型可以获得改善的城市可持续性水平。考虑到从大数据集检索的多样化空中数据,确定CCA-HBFNNC模型的实验评估。调查结果表明,拟议的CCA-HBFNNC模型可以增加可持续性水平,并在与当代作品形成鲜明对比时最小化城市发展的时间复杂性。

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