用于预测运输需求的深度学习和统计模型:多配送中心案例研究

Logistics Pub Date : 2023-11-22 DOI:10.3390/logistics7040086
Fábio Polola Mamede, R. F. da Silva, Irineu de Brito Junior, H. Yoshizaki, C. M. Hino, C. Cugnasca
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引用次数: 0

摘要

背景:运输需求预测是物流运营商和承运商的一项基本活动。它有助于业务运营决策、基础设施、管理和资源规划活动。自 2015 年以来,深度学习模型在这一领域的应用越来越多。然而,在运输需求预测方面,比较传统统计模型和深度学习模型的工作还存在差距。这项工作旨在对巴西一家运输公司 54 个配送中心的运输需求预测进行案例研究。研究方法应用了计算模拟和案例研究方法,通过自回归综合移动平均值(ARIMA)及其变化,以及被称为 LSTM 的深度神经网络(长短期记忆)来探索数据集的特征。在考虑不同数据预处理方法的同时,还探讨了八种情况,并评估了异常值、交叉验证期间训练和测试数据集的分割以及每个模型的相关超参数如何影响需求预测。结果在所评估的情况下,在 94% 的调度单位中,长短期记忆网络的表现优于统计方法,而自回归综合移动平均法则对其余 5% 的调度单位进行了建模。结论:这项研究发现,运输需求预测可以解决供应链中的实际问题,特别是资源规划管理问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning and Statistical Models for Forecasting Transportation Demand: A Case Study of Multiple Distribution Centers
Background: Transportation demand forecasting is an essential activity for logistics operators and carriers. It leverages business operation decisions, infrastructure, management, and resource planning activities. Since 2015, there has been an increase in the use of deep learning models in this domain. However, there is a gap in works comparing traditional statistics and deep learning models for transportation demand forecasts. This work aimed to perform a case study of aggregated transportation demand forecasts in 54 distribution centers of a Brazilian carrier. Methods: A computational simulation and case study methods were applied, exploring the characteristics of the datasets through autoregressive integrated moving average (ARIMA) and its variations, in addition to a deep neural network, long short-term memory, known as LSTM. Eight scenarios were explored while considering different data preprocessing methods and evaluating how outliers, training and testing dataset splits during cross-validation, and the relevant hyperparameters of each model can affect the demand forecast. Results: The long short-term memory networks were observed to outperform the statistical methods in ninety-four percent of the dispatching units over the evaluated scenarios, while the autoregressive integrated moving average modeled the remaining five percent. Conclusions: This work found that forecasting transportation demands can address practical issues in supply chains, specially resource planning management.
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