Detecting Non-negligible New Influences in Environmental Data via a General Spatio-temporal Autoregressive Model

Yuehua Wu, Xiaoying Sun, E. Chan, Shanshan Qin
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引用次数: 1

Abstract

In some environmental problems, it is required to find out if new influences (e.g., new influences on the ozone concentration) occurred in one area of the region (named as a treatment area) have affected the measurements there substantially. For convenience, the area of the region that is free of influences is named as the control area. To tackle such problems, we propose a change-point detection approach. We first introduce a general spatio-temporal autoregressive (GSTAR) model for the environmental data, which takes into account effects of different spatial location surroundings, seasonal cyclicities, temporal correlations among observations at the same locations and spatial correlations among observations from different locations. An EM-type algorithm is provided for estimating the parameters in a GSTAR model. We then respectively model the data collected from the treatment and control areas of the region by the GSTAR models. If new influences occurred in the treatment area are not negligible, there should be detectable changes in the time-dependent regression coefficients in the GSTAR model for that area compared to those in the GSTAR model for the control area. A change-point detection method can be applied to the differences of regression coefficient estimates of these two models. We illustrate our method through one real data example of daily ozone concentration measurements and one simulated data example with two scenarios.
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利用一般时空自回归模型检测环境数据中不可忽略的新影响
在一些环境问题中,需要查明在某一区域(称为处理区域)发生的新影响(例如对臭氧浓度的新影响)是否对该区域的测量产生了实质性影响。为方便起见,将该区域中不受影响的区域命名为控制区。为了解决这些问题,我们提出了一种变更点检测方法。本文首先介绍了一种考虑不同空间位置环境、季节周期、同一地点观测值间时间相关性和不同地点观测值间空间相关性影响的环境数据通用时空自回归(GSTAR)模型。提出了一种em型的GSTAR模型参数估计算法。然后,我们分别用GSTAR模型对从该地区的治疗区和控制区收集的数据进行建模。如果在治疗区域发生的新影响不可忽略,则与对照区域的GSTAR模型相比,该区域的GSTAR模型中随时间变化的回归系数应可检测到变化。对于这两种模型的回归系数估计值的差异,可以采用变化点检测方法。我们通过一个日常臭氧浓度测量的真实数据实例和一个具有两个场景的模拟数据实例来说明我们的方法。
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