A Brief Review on Queue Management Systems for different Applications

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Abstract

Queue management technology helps to reduce actual and predicted customer wait times, improve customer satisfaction, and provide the data to your managers needed to further optimize service, Queue Management System (QMS)presents a viable solution for different applications. It is employed to manage lines in a queue area in a variety of circumstances and locales. The article discusses the concepts of Queue Management Systems for Hospitals, Satellite Networks Based on Traffic Prediction, using Deep Neural Networks (DNN). Managing high patient loads in tertiary care hospitals represents a significant challenge in streamlining health service delivery. At several hospital service locations, including the registration, lab, and bill payment counters, patients must frequently wait in line. In these circumstances, Queue Management Systems (QMS) offer a practical patient management option. Satellite Internet the Adaptive Random Early Detection (ARED) queue management algorithm is proposed to be improved by traffic prediction based on a dynamic triple exponential smoothing model, smoothing coefficient optimization of the model using a differential evolutionary algorithm, and a cubic function based on traffic prediction. Customers and the administrative staff of the company can use a queue management system that uses the Open-CV platform and CNN algorithm for image processing, together with real-time person detection and people count recording. This essay also discusses several techniques in relation to their applications. With services that have medium to lengthy waiting periods, the proposed method seeks to reduce customer discontent. Keyword : Adaptive random early detection, CNN image processing, cubic function, differential evolution algorithm, dynamic triple exponential smoothing model, System for Managing Hospitals.
不同应用的队列管理系统综述
队列管理技术有助于减少实际和预测的客户等待时间,提高客户满意度,并为您的经理提供进一步优化服务所需的数据,队列管理系统(QMS)为不同的应用程序提供了可行的解决方案。它用于管理在各种环境和地点的队列区域中的线路。本文讨论了医院队列管理系统的概念,基于流量预测的卫星网络,使用深度神经网络(DNN)。管理三级保健医院的高病人负荷是精简保健服务提供的一项重大挑战。在一些医院服务地点,包括挂号、实验室和账单支付柜台,病人必须经常排队等候。在这种情况下,队列管理系统(QMS)提供了一种实用的患者管理选择。提出了基于动态三指数平滑模型的流量预测、基于差分进化算法的平滑系数优化以及基于流量预测的三次函数对卫星互联网自适应随机早期检测(ARED)队列管理算法进行改进的方法。客户和公司管理人员可以使用队列管理系统,该系统采用Open-CV平台和CNN算法进行图像处理,并进行实时人员检测和人数记录。本文还讨论了几种与其应用相关的技术。对于有中等到较长的等待时间的服务,建议的方法旨在减少客户的不满。关键词:自适应随机早期检测,CNN图像处理,三次函数,差分进化算法,动态三指数平滑模型,医院管理系统
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