结合时间序列预测技术预测物流公司的人员需求和订单量

Ahmad Alqatawna, Bilal Abu-Salih, Nadim Obeid, Muder Almiani
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引用次数: 0

摘要

时间序列分析是一种广泛使用的研究过去数据以预测未来的方法。本文的重点是利用时间序列分析技术来预测物流配送公司的资源需求,使他们能够满足他们的目标,并确保持续增长。本研究旨在建立一个模型,优化预测特定时间段的订单量,并确定公司的人员需求。物流公司的订单量预测包括分析数据中的趋势和季节性成分。自回归(AR)、自回归综合移动平均(ARIMA)和带有外生变量的季节性自回归综合移动平均(SARIMAX)在捕捉这些模式方面已经建立并有效,并提供了可解释的结果。深度学习算法需要更多的数据进行训练,这在某些物流场景中可能会受到限制。在这种情况下,像SARIMAX、ARIMA和AR这样的传统模型仍然可以用更少的数据点提供可靠的预测。像LSTM这样的深度学习模型可以捕获复杂的模式,但缺乏可解释性,这在物流行业至关重要。为了平衡性能和实用性,我们的研究结合了SARIMAX、ARIMA、AR和长短期记忆(LSTM)模型,为物流公司的订单量预测提供了全面的分析和见解。使用来自某国际航运公司的真实数据集,由特定时间段的订单数量组成,生成综合的时间序列数据集。此外,节假日、休息日和销售季节等新特征被纳入数据集,以评估它们对订单预测和劳动力需求的影响。本文比较了四种不同的时间序列分析方法在预测阿拉伯联合酋长国(UAE)、沙特阿拉伯王国(KSA)和科威特(KWT)三个国家以及所有国家的订单趋势方面的表现。通过分析数据,应用SARIMAX、ARIMA、LSTM和AR模型预测未来订单量和趋势,发现SARIMAX模型优于其他方法。SARIMAX模型在预测阿联酋(MAPE: 0.097, RMSE: 0.134), KSA (MAPE: 0.158, RMSE: 0.199)和KWT (MAPE: 0.137, RMSE: 0.215)的订单量和趋势方面表现出卓越的准确性。
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Incorporating Time-Series Forecasting Techniques to Predict Logistics Companies' Staffing Needs and Order Volume
Time-series analysis is a widely used method for studying past data to make future predictions. This paper focuses on utilizing time-series analysis techniques to forecast the resource needs of logistics delivery companies, enabling them to meet their objectives and ensure sustained growth. The study aims to build a model that optimizes the prediction of order volume during specific time periods and determines the staffing requirements for the company. The prediction of order volume in logistics companies involves analyzing trend and seasonality components in the data. Autoregressive (AR), Autoregressive Integrated Moving Average (ARIMA), and Seasonal Autoregressive Integrated Moving Average with Exogenous Variables (SARIMAX) are well-established and effective in capturing these patterns, providing interpretable results. Deep-learning algorithms require more data for training, which may be limited in certain logistics scenarios. In such cases, traditional models like SARIMAX, ARIMA, and AR can still deliver reliable predictions with fewer data points. Deep-learning models like LSTM can capture complex patterns but lack interpretability, which is crucial in the logistics industry. Balancing performance and practicality, our study combined SARIMAX, ARIMA, AR, and Long Short-Term Memory (LSTM) models to provide a comprehensive analysis and insights into predicting order volume in logistics companies. A real dataset from an international shipping company, consisting of the number of orders during specific time periods, was used to generate a comprehensive time-series dataset. Additionally, new features such as holidays, off days, and sales seasons were incorporated into the dataset to assess their impact on order forecasting and workforce demands. The paper compares the performance of the four different time-series analysis methods in predicting order trends for three countries: United Arab Emirates (UAE), Kingdom of Saudi Arabia (KSA), and Kuwait (KWT), as well as across all countries. By analyzing the data and applying the SARIMAX, ARIMA, LSTM, and AR models to predict future order volume and trends, it was found that the SARIMAX model outperformed the other methods. The SARIMAX model demonstrated superior accuracy in predicting order volumes and trends in the UAE (MAPE: 0.097, RMSE: 0.134), KSA (MAPE: 0.158, RMSE: 0.199), and KWT (MAPE: 0.137, RMSE: 0.215).
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