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A new methodology to support group decision-making for IoT-based emergency response systems

机译:支持基于物联网的应急系统的团队决策的新方法

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An emergency response system (ERS) can assist a municipality or government in improving its capabilities to respond urgent and severe events. The responsiveness and effectiveness of an ERS relies greatly on its data acquisition and processing system, which has been evolved with information technology (IT). With the rapid development of sensor networks and cloud computing, the emerging Internet of things (IoT) tends to play an increasing role in ERSs; the networks of sensors, public services, and experts are able to interact with each other and make scientific decisions to the emergencies based on real-time data. When group decision making is required in an ERS, one critical challenge is to obtain the good understanding of massive and diversified data and make consensus group decisions under a high-level stress and strict time constraint. Due to the nature of unorganized data and system complexity, an ERS depends on the perceptions and judgments of experts from different domains; it is challenging to assess the consensus of understanding on the collected data and response plans before appropriate decisions can be reached for emergencies. In this paper, the group decision-making to emergency situations is formulated as a multiple attribute group decision making (MAGDM) problem, the consensus among experts is modeled, and a new methodology is proposed to reach the understanding of emergency response plans with the maximized consensus in course of decision-making. In the implementation, the proposed methodology in integrated with computer programs and encapsulated as a service on the server. The objectives of the new methodology are (ⅰ) to enhance the comprehensive group cognizance on emergent scenarios and response plans and (ⅱ) to accelerate the consensus for decision making with an intelligent clustering algorithm, (ⅲ) to adjust the experts' opinions without affecting the reliability of the decision when the consensus cannot be reached from the preliminary decision-making steps. Partitioning Around Medoids (PAM) has been applied as the clustering algorithm, Particle Swarm Optimization (PSO) is deployed to adjust evaluation values automatically. The methodology is applied in a case study to illustrate its effectiveness in converging group opinions and promoting the consensus of understanding on emergencies.
机译:紧急响应系统(ERS)可以协助市政当局或政府提高其应对紧急事件和严重事件的能力。 ERS的响应能力和有效性在很大程度上取决于其数据采集和处理系统,该系统已随信息技术(IT)演变而来。随着传感器网络和云计算的飞速发展,新兴的物联网(IoT)在ERS中的作用越来越大。传感器,公共服务和专家网络之间可以进行交互,并基于实时数据对紧急情况做出科学决策。在ERS中需要进行群体决策时,一项关键挑战是要获得对大量海量数据的良好理解,并在高水平的压力和严格的时间限制下做出共识的群体决策。由于无序数据的性质和系统的复杂性,ERS取决于不同领域专家的看法和判断;在对紧急情况做出适当决定之前,评估对收集的数据和应对计划的理解共识是具有挑战性的。本文将紧急情况下的群体决策制定为多属性群体决策(MAGDM)问题,建立专家之间的共识模型,并提出一种新的方法,以最大程度地了解应急计划在决策过程中达成共识。在实施中,所提出的方法与计算机程序集成在一起并封装为服务器上的服务。新方法的目标是(ⅰ)增强对紧急情况和响应计划的全面团队认知;(ⅱ)通过智能聚类算法加快决策制定的共识;(ⅲ)调整专家的意见而不会影响在初步决策步骤中无法达成共识时的决策可靠性。已将围绕类固醇分区(PAM)作为聚类算法,并部署了粒子群优化(PSO)来自动调整评估值。该方法在案例研究中得到了应用,以说明其在聚集群体意见和促进对紧急情况达成共识方面的有效性。

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