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Application of Evaluation Algorithm for Port Logistics Park Based on Pca-Svm Model

机译:基于Pca-Svm模型的港口物流园区评估算法的应用

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To predict the logistics needs of the port, an evaluation algorithm for the port logistics park based on the PCASVM model was proposed. First, a quantitative indicator set for port logistics demand analysis was established. Then, based on the grey correlation analysis method, the specific indicator set of port logistics demand analysis was selected. The advantages of both principal component analysis and support vector machine algorithms were combined. The PCA-SVM model was constructed as a predictive model of the port logistics demand scale. The empirical analysis was conducted. Finally, from the perspective of the structure, demand, flow pattern and scale of port logistics demand, the future logistics demand of Shenzhen port was analysed. Through sensitivity analysis, the main influencing factors were found out, and the future development proposals of Shenzhen port were put forward. The results showed that the port throughput of Shenzhen City in 2016 was 21,328,200 tons. Compared with the previous year, it decreased by about 1.74 %. In summary, the PCA-SVM model accurately predicts the logistics needs of the port.
机译:为了预测港口的物流需求,提出了基于PCASVM模型的港口物流园区评价算法。首先,建立了一套用于港口物流需求分析的定量指标。然后,基于灰色关联分析方法,选择了港口物流需求分析的具体指标集。结合了主成分分析和支持向量机算法的优点。 PCA-SVM模型被构建为港口物流需求规模的预测模型。进行了实证分析。最后,从港口物流需求的结构,需求,流向和规模的角度,对深圳港口未来的物流需求进行了分析。通过敏感性分析,找出了主要影响因素,并提出了深圳港未来的发展建议。结果显示,2016年深圳市港口吞吐量为2132.82万吨。与上年相比,下降了约1.74%。综上所述,PCA-SVM模型可以准确地预测港口的物流需求。

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