基于地理信息系统的情绪检测框架,用于城市住区的多重风险分析

Barbara Cardone, Ferdinando Di Martino, Vittorio Miraglia
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摘要

将情感分析方法应用于从与大流行病、气候和极端环境现象引发的特定关键时期相关的社交网络中提取的信息流,可使决策者发现公民的情绪状态,并确定哪些地区风险最大,需要采取特定的抗灾适应干预措施。如今,分析极端现象在城市住区产生的多重风险的必要性尤为重要,这样决策者才能确定哪些地区面临的风险最大,并针对所分析的所有现象制定弹性干预计划。近年来,COVID 19 大流行病紧急事件迫使公民接受特定限制以保护其健康;此外,极端气候或环境现象的发生也带来了一些关键问题。为了监测城市住区的大流行病和气候/环境多重风险,我们提出了一个基于地理信息系统的框架,其中应用了一种情绪检测方法,以确定在大流行病期间和出现极端气候现象时城市研究区域的普遍情绪类别。该框架在博洛尼亚市(意大利)六个区的一个研究区域进行了测试,目的是根据社交渠道上表达的情绪,检测在大流行病时期和极端热浪气候事件发生时,哪些是最关键的城市街区。研究结果表明,所提出的模型是一种有效的工具,可帮助决策者确定在大流行病和气候/环境多重风险下最关键的城市区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A GIS-Based Emotion Detection Framework for Multi-Risk Analysis in Urban Settlements
The application of sentiment analysis approaches to information flows extracted from the social networks connected to particular critical periods generated by pandemic, climatic and extreme environmental phenomena allow the decision maker to detect the emotional states of citizens and to determine which areas are most at risk and require specific resilient adaptation interventions. Of particular relevance today is the need to analyze the multiple risks generated by extreme phenomena in urban settlements in order for the decision maker to identify which areas are most at risk and prepare resilient intervention plans with respect to all the phenomena analyzed. In recent years, the COVID 19 pandemic emergency has forced citizens to undergo specific restrictions to protect their health; to these were added critical issues due to the occurrence of extreme climatic or environmental phenomena. In order to monitor pandemic and climate/environmental multi-risks in urban settlements, we propose a GIS-based framework in which an emotion detection method is applied to determine the prevailing emotional categories in urban study areas during pandemic periods and in the presence of extreme climatic phenomena. The framework was tested on a study area based in the six districts of the city of Bologna (Italy) in order to detect, based on the emotions expressed on social channels, which were the most critical city neighborhoods in pandemic periods and in the presence of extreme heat wave climatic events. The results show that the proposed model can represent a valid tool to support decision makers in identifying the most critical urban areas in the presence of pandemic and climate/environmental multi-risks.
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