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Airport resource allocation using machine learning techniques

机译:使用机器学习技术进行机场资源分配

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The airport ground handling has a global trend to meet the Service Level Agreement (SLA) requirementsthat represents resource allocation with more restrictions according to flights. That can be achieved by predictingfuture resources demands. this research presents a comparison between the most used machine learning techniquesimplemented in many different fields for demand prediction and resource allocation. The prediction model nomi-nated and used in this research is the Support Vector Machine (SVM) to predict the required resources for eachflight, despite the restrictions imposed by airlines when contracting their services in the Service Level Agreement.The approach has been trained and tested using real data from Cairo International Airport. the proposed (SVM)technique implemented and explained with a varying accuracy of resource allocation prediction, showing thateven for variations accuracy in resource prediction in different scenarios; the Support Vector Machine techniquecan produce a good performance as resource allocation in the airport.
机译:机场地面处理具有全球趋势,以满足服务级别协议(SLA)要求代表资源分配,根据航班的限制。这可以通过预测文件资源需求来实现。本研究介绍了许多不同领域的最常用的机器学习技术与需求预测和资源分配的比较。在本研究中的预测模型和使用中使用的是支持向量机(SVM),以预测每种全斑所需的资源,尽管航空公司在服务水平协议中签订签订股票时施加的限制。该方法已培训和测试使用来自开罗国际机场的真实数据。所提出的(SVM)技术实现和解释了资源分配预测的不同准确性,显示了不同场景中资源预测中的变化精度的Thateveneven;支持向量机Techniquecan在机场的资源配置中产生了良好的性能。

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