Machine Learning Algorithm for Intelligent Prediction for Military Logistics and Planning

S. Ajakwe, C. I. Nwakanma, Jae-Min Lee, Dong-Seong Kim
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引用次数: 2

Abstract

This paper compares various machine learning algorithms for predicting availability and possible reorder level of military logistics. As a case scenario, dataset of price of petroleum product was used to test the accuracy of the proposed algorithm. In most Military, facilities, machines and equipment relied heavily on the availability of petroleum products. Military logistics must be intelligent, based on informed deductions. Machine learning is now pervasive and is readily applied to various areas of life including the military. Result of the evaluation shows that artificial neural network (ANN)- 85.57% and logistic regression- 78.44% performed better than k-nearest neighbour (KNN)-74.98%, random forest(RF)-72.81% and Naive Bayes(NB)-74.85%. If used in Military logistics, there could be attendant benefit such as: accurate price policy formulation; proper budgeting estimation; meeting production and demand targets; proactive supply chain and value chain derivations; informed and intelligent decision making process; competitive advantage and continuous availability of supply critical to military; trigger of further research on innovative emergent technologies in this area, amongst other intangible benefits.
军事后勤与规划智能预测的机器学习算法
本文比较了用于预测军事后勤可用性和可能的再订货水平的各种机器学习算法。以石油产品价格数据集为例,验证了该算法的准确性。在大多数军事中,设施、机器和设备严重依赖石油产品的供应。军事后勤必须是智能的,基于知情的扣除。机器学习现在已经普及,并且很容易应用于生活的各个领域,包括军事领域。评价结果表明,人工神经网络(ANN) 85.57%和逻辑回归(78.44%)优于k近邻(KNN) 74.98%、随机森林(RF) 72.81%和朴素贝叶斯(NB) 74.85%。如果在军事后勤中使用,可以带来诸如:准确的价格政策制定;正确的预算估算;完成生产和需求目标;主动供应链和价值链衍生;知情和明智的决策过程;竞争优势和持续供应对军事至关重要;激发对该领域创新新兴技术的进一步研究,以及其他无形利益。
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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