Predictive Analytics Platform for Airline Industry

P. H. K Tissera, A.N.M.R.S.P. llwana, K.T. Waduge, M.A.l. Perera, D. Nawinna, D. Kasthurirathna
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引用次数: 2

Abstract

The research is to develop accurate demand forecasting model to control the availability in Airline industry. The primary outcome of the model is that the Airline organization can maximize the revenue by controlling the availability. The product in airline industry is the seat, which is an expensive, unstock able product. The demand for the seats is almost uncertain, the capacity is constraint and difficult to increase and the variable costs are very high. Hence the priority of the expected demand forecast is very high for airline industry. An accurate mechanism to predict the revenue for future months of ODs (Origin destinations) is done using fare and passenger data. The revenue is derived by the number of passengers and the fares they pay which vary for each flight. Airline travel is very susceptible to the social, political and economic changes. Therefore, passenger buying patterns change quite dynamically. Hence, it is challenging to develop an accurate method to project the revenue for each route. To overcome this, we are going to use semi-supervised learning mechanism. We have the current ticketed revenue plus we have the current booked passengers. We also have the ticketed passenger details of previous flights. Hence most of the information is available, however changing market conditions is an unknown variable which can have a significant impact on passenger travel patterns. Through this research We are going to design and develop the best fit model to forecast flight OD level passenger demand based on the historical data.
航空行业预测分析平台
本研究旨在建立准确的需求预测模型,以控制航空业的可用性。该模型的主要结果是,航空公司可以通过控制可用性来最大化收入。航空业的产品是座位,这是一种昂贵的、缺货的产品。对座位的需求几乎不确定,容量受限且难以增加,变动成本非常高。因此,预期需求预测的优先级对航空业来说是非常高的。通过票价和乘客数据,可以准确预测ODs(出发地)未来几个月的收入。收入来源于乘客数量和他们支付的票价,票价因航班而异。航空旅行很容易受到社会、政治和经济变化的影响。因此,乘客的购买模式是动态变化的。因此,开发一种准确的方法来预测每条路线的收益是具有挑战性的。为了克服这个问题,我们将使用半监督学习机制。我们有当前的票务收入加上当前预订的乘客。我们也有以前航班的购票乘客的详细信息。因此,大多数信息是可用的,但不断变化的市场条件是一个未知变量,可能对乘客的旅行模式产生重大影响。通过本研究,我们将根据历史数据设计和开发最适合的模型来预测航班OD级乘客需求。
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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