User-friendly Enhanced Machine Learning-based Railway Management System for Sri Lanka

G.L.V. Mihiranga, W. Weerasooriya, T.L.P. Palliyaguruge, P. Gunasekera, M. Gamage, Shantha Selva Kumari
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Abstract

The railway service is a convenient and low-cost transport method in Sri Lanka, widely employed by both local and foreign passengers. Major railway lines in Sri Lanka cover unique and very different areas in the country. For example, the Northern province's weather and geography conditions significantly differ from Southern or Central provinces. Majority of the tourists lack understanding in identifying appropriate or attractive places that best suits them, close by to the Railway Stations. Therefore, a passenger needs to spend more time identifying their railway tour destinations. When passengers are booking tickets, even though they are able to reserve seats beforehand, they are unable to reserve a specific seat. Also, there is no process to identify the most suitable seat for them amidst many other travelers, especially if they are travelling alone. Considering the aforementioned, authors propose a more innovative and user-friendly system for the Railway Department of Sri Lanka. Depending on various passenger attributes the system is capable of suggesting a travel plan with railway lines which cover most suitable destination suggestions; identifying the best seats with a relaxing atmosphere; providing an interactive chatbot to satisfy user queries on specific location information; and facility for 24×7 user interaction. A travel plan can save passengers time and allows them to identify the desired railway line and relevant attractions without much hassle. And they are saved of an unpleasant experience through the suggestion of the best seating location. Machine Learning and Deep Learning technologies are used in developing the proposed system.
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斯里兰卡用户友好型基于机器学习的铁路管理系统
在斯里兰卡,铁路服务是一种方便和低成本的交通方式,被当地和外国乘客广泛使用。斯里兰卡的主要铁路线覆盖了该国独特且非常不同的地区。例如,北部省份的天气和地理条件与南部或中部省份有很大不同。大多数游客不了解在火车站附近确定最适合他们的合适或有吸引力的地方。因此,乘客需要花更多的时间来确定他们的铁路旅游目的地。乘客在订票时,即使事先可以预定座位,也无法预定特定的座位。此外,在众多旅客中,没有办法确定最适合他们的座位,尤其是当他们独自旅行时。考虑到上述情况,作者为斯里兰卡铁路部门提出了一个更具创新性和用户友好的系统。根据乘客的不同属性,系统能够建议一个旅行计划,其中包括最合适的目的地建议的铁路线;确定有轻松氛围的最佳座位;提供交互式聊天机器人,以满足用户对特定位置信息的查询;以及24×7用户交互设施。旅行计划可以节省乘客的时间,让他们确定想要的铁路线和相关景点,而不会有太多的麻烦。通过最佳座位位置的建议,他们可以避免不愉快的经历。机器学习和深度学习技术用于开发所提出的系统。
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