Abstract:
Datagaps are ubiquitous in real-world observational data. Quantifying nonlinearity in data having gaps can be challenging. Reported research points out that interpolation can affect nonlinear quantifiers adversely, artificially introducing signatures of nonlinearity where none exist. In this paper we attempt to quantify the effect that datagaps have on the multifractal spectrum (f(α)) in the absence of interpolation. We identify tolerable gap ranges, where the measures defining the f(α) curve do not show considerable deviation from the evenly sampled case. We apply this to the multifractal spectra of multiple datasets with missing data from the SMEAR database. The datasets we consider include ecological datasets from SMEAR I, namely CO2 exchange variation, photosynthetically active radiation levels and soil moisture variation time series, and meteorological datasets from SMEAR II, namely dew point variation and air temperature variation. We could establish multifractality due to deterministic nonlinearity in two of these datasets, where the gaps were within tolerable limits.