We introduce in this survey the major concepts, models, and algorithms proposed so far to infer causal relations from observational time series, a task usually referred as discovery series. To do so, after description of underlying concepts modelling assumptions, we present different methods according family approaches they belong to: Granger causality, constraint-based approaches, noise-based ...