FlightForecast:用于飞行预测的 Stack LSTM 和 Vanilla LSTM 模型的比较分析

Rohail Qamar, Raheela Asif, Laviza Falak Naz, Adeel Mannan, Afzal Hussain
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引用次数: 0

摘要

2019 年 12 月,中国武汉市首次报告了冠状病毒,几个月后,该病毒在全球广泛传播。整个世界陷入了封锁状态。这种危害性极大的疾病影响了每个人的正常日常生活,旅游业尤其是航空业更是损失惨重。考虑到航空业务,本研究包含 2019 年至 2020 年的商业航班数据。所进行的研究分析了封锁期间不同航班的升降情况。研究基于长短期记忆(LSTM)的变体,如标准递归神经网络(RNN)和堆栈 LSTM。比较研究表明,堆栈 LSTM 模型的预测效果优于标准 RNN,但需要花费大量时间进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FlightForecast: A Comparative Analysis of Stack LSTM and Vanilla LSTM Models for Flight Prediction
The Coronavirus was first reported in China in the city of Wuhan in December 2019, after a couple of months, it was widespread around the world. The whole world was in a state of lockdown. This hazardous disease affects the normal daily life of every individual and the tourism industry, especially the airline business was at a greater loss. Considering the airline business, this study contains data on commercial flights from 2019 to 2020. The conducted research analyzed the rise and fall of different flights in the lockdown period. The research is based on the variants of Long Short-Term Memory (LSTM) such as standard Recurrent Neural Network (RNN) and stack LSTM. The comparative research shows that the prediction of the stack LSTM model is better than the standard RNN keeping view of taking a considerable amount of time to train.
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