A comprehensive understanding of the behaviours of the various geophysical processes and an effective evaluation of time series (else referred to as "stochastic") simulation models require, among others, detailed investigations across temporal scales. In this work, we propose a novel and detailed methodological framework for advancing and enriching such investigations in a hydroclimatic context. This specific framework is primarily based on a new feature compilation for multi-scale hydroclimatic analyses, and can facilitate largely interpretable feature investigations and comparisons in terms of temporal dependence, temporal variation, "forecastability", lumpiness, stability, nonlinearity (and linearity), trends, spikiness, curvature and seasonality. Multifaceted characterizations are herein obtained by computing the values of the proposed feature compilation across nine temporal resolutions (i.e., the 1-day, 2-day, 3-day, 7-day, 0.5-month, 1-month, 2-month, 3-month and 6-month ones) and three hydroclimatic time series types (i.e., temperature, precipitation and streamflow) for 34-year-long time series records originating from 511 geographical locations across the contiguous United States. Based on the acquired information and knowledge, similarities and differences between the examined time series types with respect to the evolution patterns characterizing their feature values with increasing (or decreasing) temporal resolution are identified. Moreover, the computed features are used as inputs to unsupervised random forests for detecting any meaningful clusters between the examined hydroclimatic time series. This clustering plays an illustrative role within this research, as it facilitates the identification of spatial patterns (with them consisting an important scientific target in hydroclimatic research) and their cross-scale comparison...
翻译:全面了解各种地球物理过程的行为和有效评估时间序列(称为“随机”)模拟模型(称为“随机”)模型的行为,除其他外,需要在各个时间尺度进行详细调查。在这项工作中,我们提出一个新的详细的方法框架,以便在水文气候背景下推进和丰富这类调查。这个具体框架主要基于一个用于多尺度水文气候分析的新特征汇编,并可以促进在时间依赖、时间变异、“可预见性”、一流性、稳定性、非线性(和线性)、趋势、风气、曲线和季节性等方面进行可解释的特征调查和比较。通过计算九个时间分辨率(即1天、2天、7天、0.5个月、1个月、2个月、3个月和6个月1个月)的拟议特征汇编的拟议特征汇编的价值,以及34年不长的时间序列(即温度、降水流和流流性(和线性)、趋势、浮质、缩略性、多面特征的特征,通过计算,从511个地理特征特征汇编的特征汇编值值值值值,从一个连续的、2天天、3天、7天、2个月、3个月、3个月、3个月、3个月、3个月、3个月、3个月和6个月、3个时间序列的流、3个时间序列的周期内(温度、温度、温度、温度、降和流、时间序列)的周期内研究记录记录,从一个不断变。</s>