FORECASTING THE NUMBER OF PASSENGER AT JENDERAL AHMAD YANI SEMARANG INTERNATIONAL AIRPORT USING HYBRID SINGULAR SPECTRUM ANALYSIS-NEURAL NETWORK (SSA-NN) METHOD

Tresiani Yunitasari, M. A. Haris, Prizka Rismawati Arum
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Abstract

Transportation was an important sector of supporting the economic growth of a country. The impact of the Covid-19 2020 pandemic at Achmad Yani International Airport in Semarang resulted in the movement of the number of passengers decreasing quite drastically, but in mid-2020 the movement of the number of passengers had slowly increased. Forecasting was done to determine the flow of movement of the number of passengers in the future using the Hybrid Singular Spectrum Analysis (SSA)-Neural Network (NN) method. The SSA method was expected to be able to decompose various patterns in the data into trend, seasonality and noise. Furthermore, the NN method was used to analyze nonlinear patterns in the data. The results showed that the best method was a combination of the SSA method with a window length of 40 and the NN method with a 6-8-1 network architecture (6 input neurons, 8 hidden neurons and 1 output neuron) for the trend component, 11-15-1 (11 neurons input, 15 hidden neurons and 1 output neuron) for the seasonal component, and 10-15-1 (10 input neurons, 15 hidden neurons and 1 output neuron) for the noise component. The model produces a prediction error based on a MAPE value of 0.54% or an accuracy rate of 99.46%.
利用奇异频谱分析-神经网络(ssa-nn)混合方法预测三宝垄国际机场客运量
交通运输是支撑一个国家经济增长的重要部门。2019冠状病毒病大流行对三宝朗艾哈迈德·亚尼国际机场的影响导致乘客人数急剧减少,但在2020年中期,乘客人数的流动缓慢增加。采用混合奇异谱分析(SSA)-神经网络(NN)方法对未来的客流量进行预测。期望SSA方法能够将数据中的各种模式分解为趋势、季节性和噪声。此外,采用神经网络方法对数据中的非线性模式进行分析。结果表明:窗长为40的SSA方法与6-8-1(6个输入神经元、8个隐藏神经元和1个输出神经元)网络结构的NN方法相结合,11-15-1(11个输入神经元、15个隐藏神经元和1个输出神经元)网络结构用于趋势分量,11-15-1(11个输入神经元、15个隐藏神经元和1个输出神经元)网络结构用于季节分量,10-15-1(10个输入神经元、15个隐藏神经元和1个输出神经元)网络结构用于噪声分量。该模型基于MAPE值的预测误差为0.54%,准确率为99.46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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