Reputation system for ensuring data trustworthiness of crowdsourced weather stations: poster abstract

Alexander B. Chen, Madhur Behl, J. Goodall
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引用次数: 1

Abstract

Decision making in utilities, municipal, and energy companies depends on accurate and trustworthy weather information and predictions. Recently, crowdsourced personal weather stations (PWS) are being widely used to provide a higher spatial and temporal resolution of weather measurements. For instance, increasing attention is being paid to the potential of PWS data to improve flash-flood assessment and prediction. However, tools and methods to ensure the trustworthiness of the crowd-sourced data in real-time are largely missing. In this paper, we present a Reputation System for Crowdsourced Rainfall Networks (RSCRN) to assign trust scores to personal weather stations in a region. Using real PWS data from the Weather Underground service in the high flood risk region of Norfolk, Virginia, we validate the performance and robustness of the proposed RSCRN. The proposed method is able to converge to a confident trust score for a PWS within 10-20 observations of installation and can robustly respond to any discrepancies in the data due to failure or malicious intent. We benchmark the performance of the proposed method with high-fidelity and trusted hydrological sensor data, which are usually expensive to install. Collectively, the results indicate that the trust score derived from the RSCRN can reflect the collective measure of trustworthiness to the PWS, ensuring both useful and trustworthy data for modeling and decision-making in the future.
确保众包气象站数据可信度的信誉体系:海报摘要
公用事业、市政和能源公司的决策依赖于准确可靠的天气信息和预测。最近,众包个人气象站(PWS)被广泛用于提供更高的空间和时间分辨率的天气测量。例如,人们越来越重视PWS数据在改进山洪评估和预测方面的潜力。然而,确保实时众包数据可信度的工具和方法在很大程度上是缺失的。在本文中,我们提出了一个众包降雨网络信誉系统(RSCRN),为一个地区的个人气象站分配信任分数。利用维吉尼亚州诺福克高洪涝风险地区Weather Underground服务的真实PWS数据,验证了RSCRN的性能和鲁棒性。所提出的方法能够在安装的10-20个观察值内收敛到PWS的自信信任分数,并且可以健壮地响应由于故障或恶意意图而导致的数据差异。我们用高保真度和可信的水文传感器数据对所提出方法的性能进行了基准测试,这些数据通常安装成本很高。总体而言,研究结果表明,基于RSCRN的信任得分可以反映对PWS的可信度的集体度量,为未来的建模和决策提供有用和可信的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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