@article{10902/24056, year = {2022}, url = {http://hdl.handle.net/10902/24056}, abstract = {ABSTRACT: Climate variability, as an element of uncertainty in water management, affects community, sectoral, and individual decision-making. Long-range prediction models are tools that offer the potential for integration and joint analysis with the hydrological, hydrodynamic, and management response of the socio-ecological systems to which they are linked. The main objective of this article is to present a seasonal climate prediction model, the open-source algorithm SIE-Climate, whose application consists of three phases (exploration, development, and evaluation), and to describe its application to the Lake Sochagota socio-ecological system (Paipa, Boyacá, Colombia). The K-nearest neighbours method is used when defining a target matrix that represents and integrates macro- and micro-climatic phenomena (Oceanic Niño Index, local temperature, and local rainfall) to identify periods of similar climatic behaviour. Considering a 1-year horizon and management purposes the tool is calibrated and validated in periods with and without climatic anomalies (2000?2018), giving reliable adjustment results (RSME:4.86; R2: 0.95; PBIAS: -8.89%; EFF: 0.85). SIE-Climate can be adapted to various contexts, variables of interest, and temporal and spatial scales, with an appropriate technological and computational cost for regional water management.}, publisher = {John Wiley and Sons Ltd}, publisher = {International Journal of Climatology 2022, 42, 2. 868-888}, title = {SIE-Climate: A methodological and technological tool for predicting local climate variability in managing socio-ecological systems}, author = {Sierra-C ardenas, Erika and Usaquén-Perilla, Olga and Fonseca-Molano, Mauricio and Ochoa-Echeverría, Mauricio and Díaz-G omez, Jaime and Jesús Peñil, Manuel del}, }