Shallow seismic sources excite Rayleigh wave ground motion with azimuthally dependent radiation patterns. We place binary hypothesis tests on theoretical models of such radiation patterns to screen cylindrically symmetric sources (like explosions) from non-symmetric sources (like non-vertical dip-slip, or non-VDS faults). These models for data include sources with several unknown parameters, contaminated by Gaussian noise and embedded in a layered half-space. The generalized maximum likelihood ratio tests that we derive from these data models produce screening statistics and decision rules that depend on measured, noisy ground motion at discrete sensor locations. We explicitly quantify how the screening power of these statistics increase with the size of any dip-slip and strike-slip components of the source, relative to noise (faulting signal strength), and how they vary with network geometry. As applications of our theory, we apply these tests to (1) find optimal sensor locations that maximize the probability of screening non-circular radiation patterns, and (2) invert for the largest non-VDS faulting signal that could be mistakenly attributed to an explosion with damage, at a particular attribution probability. Lastly, we quantify how certain errors that are sourced by opening cracks increase screening rate errors. While such theoretical solutions are ideal and require future validation, they remain important in underground explosion monitoring scenarios because they provide fundamental physical limits on the discrimination power of tests that screen explosive from non-VDS faulting sources.
翻译:浅浅地震源会激起雷利利的地面运动,并产生以对称辐射模式为依存的辐射模式。我们对这种辐射模式的理论模型进行二进制假设测试,以筛选来自非对称来源(如非垂直倾斜滑动或非VDS断层)的圆柱性对称源(如非垂直倾斜滑动或非VDS断层)。这些数据模型包括若干参数不明的源,受高山噪音污染,并嵌入一个层半空。我们从这些数据模型中得出的普遍最大概率比测试产生筛选统计数据和决定规则,这些统计数据和规则取决于在离散传感器地点测量的、吵闹的地面运动。我们明确量化这些统计数据的筛选能力如何随着来源的任何滑动和冲击滑动组成部分(如爆炸性断裂动)的大小而增加,以及它们与网络的几异。作为我们的理论应用,我们应用这些测试:(1) 找到最佳的传感器位置,以尽可能扩大它们筛选非脉冲辐射模式的概率,以及(2) 相对于最大的非VDS断断断信号的信号,这些信号可以被错误误归因于归因于分辨判断源的地面辐射,这些数据源是如何增加的,因为爆炸性测定的精确判断断断断裂,而导致了爆炸性试验的精确度的概率率率率率率率的精确度的精确度是如何推算。