SOC-PHLGOct 8, 2020

Stochastically forced ensemble dynamic mode decomposition for forecasting and analysis of near-periodic systems

arXiv:2010.04248v218 citations
AI Analysis

This addresses load forecasting for power systems engineering, which is essential for control and decision-making, but it is an incremental improvement as it builds on existing DMD and GPR techniques.

The paper tackled load forecasting for electrical grids by modeling grid load as a forced linear system using Dynamic Mode Decomposition with stochastic forcing, achieving superior performance compared to state-of-the-art methods without additional variables.

Time series forecasting remains a central challenge problem in almost all scientific disciplines. We introduce a novel load forecasting method in which observed dynamics are modeled as a forced linear system using Dynamic Mode Decomposition (DMD) in time delay coordinates. Central to this approach is the insight that grid load, like many observables on complex real-world systems, has an "almost-periodic" character, i.e., a continuous Fourier spectrum punctuated by dominant peaks, which capture regular (e.g., daily or weekly) recurrences in the dynamics. The forecasting method presented takes advantage of this property by (i) regressing to a deterministic linear model whose eigenspectrum maps onto those peaks, and (ii) simultaneously learning a stochastic Gaussian process regression (GPR) process to actuate this system. Our forecasting algorithm is compared against state-of-the-art forecasting techniques not using additional explanatory variables and is shown to produce superior performance. Moreover, its use of linear intrinsic dynamics offers a number of desirable properties in terms of interpretability and parsimony. Results are presented for a test case using load data from an electrical grid. Load forecasting is an essential challenge in power systems engineering, with major implications for real-time control, pricing, maintenance, and security decisions.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes