Extremes of $L^p$-norm of Vector-valued Gaussian processes with Trend (1706.08360v2)
Abstract: Let $\boldsymbol{X}(t)=(X_1(t),\ldots,X_d(t))$ be a Gaussian vector process and $g(t)$ be a continuous function. The asymptotics of distribution of $\left|\boldsymbol{X}(t)\right|p$, the $Lp$ norm for Gaussian finite-dimensional vector, have been investigated in numerous literatures. In this contribution we are concerned with the exact tail asymptotics of $\left|\boldsymbol{X}(t)\right|c_p,\ c>0, $ with trend $g(t)$ over $[0,T]$. Both scenarios that $\boldsymbol{X}(t)$ is locally stationary and non-stationary are considered. Important examples include $\sum{i=1}d \left|X_i(t)\right|+g(t)$ and chi-square processes with trend, i.e., $\sum_{i=1}d X_i2(t)+g(t)$. These results are of interest in applications in engineering, insurance and statistics, etc.