Marnie I. Low, Adrian W. Bowman, Wayne Jones, Matthijs Bonte
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引用次数: 0
Abstract
This paper develops methods to optimise the sampling strategy for monitoring networks which have fixed locations with regular sampling but with only a proportion of these locations to be used on each sampling occasion. This creates the need for a dynamic spatiotemporal sampling design which makes optimal choices of the locations to be sampled on each occasion. This is a commonly occurring scenario in many environmental settings where there is an existing network of monitoring stations and sampling can be expensive. The particular context of optimisation of an existing groundwater monitoring network is discussed in the paper. The standard design criteria of integrated variance (IV) and variance of the integral (VI) are adapted to the spatiotemporal setting. p-spline models are shown to allow exact computation of IV and VI, in the case of the additive errors, and a very good approximation of IV in the case of multiplicative errors. The speed of these exact computations allows the globally optimal sampling design to be identified efficiently. In the standard case of additive errors, the design criteria are able to exploit information across time. The only information needed is the location of sampling points, not the values sampled. This contrasts with the case of multiplicative errors where the design criteria are also influenced by the observed response data. Simulated and real examples are used to illustrate the results throughout.
本文提出了优化监测网络取样策略的方法,这些监测网络有固定的定期取样地点,但每次取样时只使用其中的一部分地点。这就需要一种动态时空采样设计,对每次采样的地点进行优化选择。在许多环境中,这种情况经常出现,因为现有的监测站网络和采样成本都很高。本文讨论了现有地下水监测网络优化的特殊情况。p 样条模型可以精确计算加法误差情况下的 IV 和 VI,以及乘法误差情况下 IV 的近似值。这些精确计算的速度使得全局最优抽样设计得以有效确定。在加法误差的标准情况下,设计标准能够利用跨时间的信息。唯一需要的信息是采样点的位置,而不是采样值。这与乘法误差的情况不同,在乘法误差的情况下,设计标准也会受到观察到的响应数据的影响。模拟和实际例子将用于说明整个结果。
期刊介绍:
Environmetrics, the official journal of The International Environmetrics Society (TIES), an Association of the International Statistical Institute, is devoted to the dissemination of high-quality quantitative research in the environmental sciences.
The journal welcomes pertinent and innovative submissions from quantitative disciplines developing new statistical and mathematical techniques, methods, and theories that solve modern environmental problems. Articles must proffer substantive, new statistical or mathematical advances to answer important scientific questions in the environmental sciences, or must develop novel or enhanced statistical methodology with clear applications to environmental science. New methods should be illustrated with recent environmental data.