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首页> 外文期刊>The Annals of applied statistics >STATIC AND ROVING SENSOR DATA FUSION FOR SPATIO-TEMPORAL HAZARD MAPPING WITH APPLICATION TO OCCUPATIONAL EXPOSURE ASSESSMENT
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STATIC AND ROVING SENSOR DATA FUSION FOR SPATIO-TEMPORAL HAZARD MAPPING WITH APPLICATION TO OCCUPATIONAL EXPOSURE ASSESSMENT

机译:用于职业暴露评估的时空危险映射的静态和粗纱传感器数据融合

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摘要

Rapid technological advances have drastically improved the data collection capacity in occupational exposure assessment. However, advanced statistical methods for analyzing such data and drawing proper inference remain limited. The objectives of this paper are (1) to provide new spatio-temporal methodology that combines data from both roving and static sensors for data processing and hazard mapping across space and over time in an indoor environment, and (2) to compare the new method with the current industry practice, demonstrating the distinct advantages of the new method and the impact on occupational hazard assessment and future policy making in environmental health as well as occupational health. A novel spatio-temporal model with a continuous index in both space and time is proposed, and a profile likelihood-based model fitting procedure is developed that allows fusion of the two types of data. To account for potential differences between the static and roving sensors, we extend the model to have nonhomogenous measurement error variances. Our methodology is applied to a case study conducted in an engine test facility, and dynamic hazard maps are drawn to show features in the data that would have been missed by existing approaches, but are captured by the new method.
机译:快速技术进步大大提高了职业暴露评估中的数据收集能力。然而,用于分析此类数据和绘制适当推断的高级统计方法保持有限。本文的目标是(1)提供新的时空方法,该方法将来自粗纱和静态传感器的数据组合,以便在室内环境中跨空间和随着时间的推移进行数据处理和危险映射,以及(2)来比较新方法凭借目前的行业实践,展示了新方法的独特优势以及对环境卫生以及职业健康的职业危害评估和未来政策的影响。提出了一种新的时空模型,具有两个空间和时间的连续指标,并且开发了一种简档似然的模型拟合程序,允许融合这两种类型的数据。要考虑静态和粗纱传感器之间的潜在差异,我们将模型扩展到具有非源性测量误差方差。我们的方法应用于在发动机测试设施中进行的案例研究,并且绘制了动态危险地图,以显示现有方法所遗漏的数据中的功能,而是由新方法捕获。

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