Emergent Mind

State-Space Inference for Non-Linear Latent Force Models with Application to Satellite Orbit Prediction

(1206.4670)
Published Jun 18, 2012 in cs.IT , astro-ph.EP , cs.LG , math.IT , and physics.data-an

Abstract

Latent force models (LFMs) are flexible models that combine mechanistic modelling principles (i.e., physical models) with non-parametric data-driven components. Several key applications of LFMs need non-linearities, which results in analytically intractable inference. In this work we show how non-linear LFMs can be represented as non-linear white noise driven state-space models and present an efficient non-linear Kalman filtering and smoothing based method for approximate state and parameter inference. We illustrate the performance of the proposed methodology via two simulated examples, and apply it to a real-world problem of long-term prediction of GPS satellite orbits.

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