Abstract

Abstract. To recover the actual responsivity for the Ultraviolet Multi-Filter Rotating Shadowband Radiometer (UV-MFRSR), the complex (e.g., unstable, noisy, and with gaps) time series of its in situ calibration factors (V0) need to be smoothed. Many smoothing techniques require accurate input uncertainty of the time series. A new method is proposed to estimate the dynamic input uncertainty by examining overall variation and subgroup means within a moving time window. Using this calculated dynamic input uncertainty within Gaussian process (GP) regression provides the mean and uncertainty functions of the time series. This proposed GP solution was first applied to a synthetic signal and showed significantly smaller RMSEs than a Gaussian process regression performed with constant values of input uncertainty and the mean function. GP was then applied to three UV-MFRSR V0 time series at three ground sites. The method appropriately accounted for variation in slopes, noises, and gaps at all sites. The validation results at the three test sites (i.e., HI02 at Mauna Loa, Hawaii; IL02 at Bondville, Illinois; and OK02 at Billings, Oklahoma) demonstrated that the agreement among aerosol optical depths (AODs) at the 368 nm channel calculated using V0 determined by the GP mean function and the equivalent AERONET AODs were consistently better than those calculated using V0 from standard techniques (e.g., moving average). For example, the average AOD biases of the GP method (0.0036 and 0.0032) are much lower than those of the moving average method (0.0119 and 0.0119) at IL02 and OK02, respectively. The GP method's absolute differences between UV-MFRSR and AERONET AOD values are approximately 4.5 %, 21.6 %, and 16.0 % lower than those of the moving average method at HI02, IL02, and OK02, respectively. The improved accuracy of in situ UVMRP V0 values suggests the GP solution is a robust technique for accurate analysis of complex time series and may be applicable to other fields.

Highlights

  • While many instruments generate relatively stable data time series over short time windows, dynamic uncertainty levels, variable sampling densities, and/or different lengths of gaps with missing data can complicate the analysis of long-term datasets

  • Combining this method with Gaussian process regression, we provide a solution to estimate the underlying mean and uncertainty functions of www.atmos-meas-tech.net/12/935/2019/

  • For the synthetic case with linear, quadratic, and cubic base functions; a noise level varying from 2 to 15; and noticeable gaps, the proposed solution returns a mean function with the RMSE of 1.1785, which is at least 12.0 % lower than RMSEs associated with the three constant input uncertainties

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Summary

Introduction

While many instruments generate relatively stable data time series over short time windows, dynamic uncertainty levels, variable sampling densities, and/or different lengths of gaps with missing data can complicate the analysis of long-term datasets. The time series of the geopotential scale factor, a function of the geoidal potential, is relatively stable on shorter timescales but demonstrates a slowly increasing long-term pattern (Burša et al, 1997). The time series of a ratio (F factor) for calibrating a satellite radiometer suite (i.e., VIIRS) shows band-specific gap distributions and variable trends (Cardema et al, 2012). As a result, these time series may not be described as a simple deterministic function of time due to possible noise and gaps

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