基于模型的智慧城市决策支持系统

Mostafa Zaman
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引用次数: 0

摘要

不断升级的人口增长和城市化导致对智慧城市的需求激增。然而,处理和评估物联网(IoT)传感器产生的大量数据需要付出巨大的努力。因此,在处理不确定事件的同时,实施智能决策支持系统对于分析实时数据和优化城市运营至关重要。本研究讨论了智慧城市决策支持系统的架构流程图,该系统采用强化学习技术,在不断变化和不可预测的环境中加强交通管理,最大限度地减少能源消耗,提高公共安全,降低风险。该系统由各种组件组成,这些组件协同工作,为特定情况提供定制的实时建议。该系统在考虑到各种结果的可能性的情况下实时提出建议的能力有可能提高业绩,并促进在复杂环境中更有效的决策。总的来说,该系统将在相当程度上显示出在智慧城市中提高应急响应和公共安全的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model Based Decision Support System for Smart Cities
The escalating population growth and urbanization have led to a surge in the demand for smart cities. Nonetheless, handling and evaluating the vast data produced by Internet of Things (IoT) sensors requires significant effort. Therefore, implementing intelligent decision support systems is crucial for analyzing real-time data and optimizing city operations while tackling uncertain events. This study discusses the architectural flow diagram of a smart city decision support system that employs reinforcement learning techniques to enhance traffic management, minimize energy consumption, elevate public safety, and reduce risks in a constantly changing and unpredictable environment. This system comprises various components that work in tandem to provide customized real-time recommendations for a given situation. The capacity of the system to produce recommendations in real-time while taking into account the likelihood of various outcomes has the potential to enhance performance and facilitate more efficient decision-making in intricate settings. In general, this system will exhibit the capability to improve emergency response and public safety to a considerable extent in smart cities.
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