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Detecting climate adaptation with mobile network data in Bangladesh: anomalies in communication, mobility and consumption patterns during cyclone Mahasen

机译:使用孟加拉国的移动网络数据检测气候适应:飓风马哈森期间的通信,流动性和消费方式异常

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Large-scale data from digital infrastructure, like mobile phone networks, provides rich information on the behavior of millions of people in areas affected by climate stress. Using anonymized data on mobility and calling behavior from 5.1 million Grameenphone users in Barisal Division and Chittagong District, Bangladesh, we investigate the effect of Cyclone Mahasen, which struck Barisal and Chittagong in May 2013. We characterize spatiotemporal patterns and anomalies in calling frequency, mobile recharges, and population movements before, during and after the cyclone. While it was originally anticipated that the analysis might detect mass evacuations and displacement from coastal areas in the weeks following the storm, no evidence was found to suggest any permanent changes in population distributions. We detect anomalous patterns of mobility both around the time of early warning messages and the storm's landfall, showing where and when mobility occurred as well as its characteristics. We find that anomalous patterns of mobility and calling frequency correlate with rainfall intensity (r = .75, p 0.05) and use calling frequency to construct a spatiotemporal distribution of cyclone impact as the storm moves across the affected region. Likewise, from mobile recharge purchases we show the spatiotemporal patterns in people's preparation for the storm in vulnerable areas. In addition to demonstrating how anomaly detection can be useful for modeling human adaptation to climate extremes, we also identify several promising avenues for future improvement of disaster planning and response activities.
机译:来自数字基础设施(如手机网络)的大规模数据可提供有关受气候压力影响的地区数百万人行为的丰富信息。使用来自孟加拉国Barisal Division和吉大港区的510万Grameenphone用户的匿名性的流动性和通话行为数据,我们调查了2013年5月袭击Barisal和吉大港的气旋Mahasen的影响。我们表征了时空模式和通话频率,移动性异常气旋之前,期间和之后的补给和人口迁移。尽管最初预计该分析可能会在暴风雨后的几周内检测到大规模撤离和从沿海地区撤离,但没有发现证据表明人口分布有任何永久性变化。我们在预警消息和风暴登陆前后都检测到异常的流动模式,显示了流动发生的时间和地点及其特征。我们发现,流动性和呼出频率的异常模式与降雨强度相关(r = .75,p <0.05),并使用呼出频率来构造风暴在受影响地区移动时的气旋影响的时空分布。同样,从移动充值购买中,我们展示了人们为脆弱地区的风暴做好准备时的时空格局。除了说明如何将异常检测用于模拟人类对气候极端的适应之外,我们还为未来改进灾难规划和响应活动确定了一些有希望的途径。

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