Low-salinity polymer flooding (LSPF) is a promising technique for enhancing oil recovery in heterogeneous
heavy oil reservoirs. This study presents a novel upscaling methodology that combines particle swarm optimization
with a flow simulator to address challenges related to reservoir heterogeneity and wettability effects. The
methodology was validated using a pilot-scale analytical model that integrates the Buckley-Leverett and Koval
theories. Employing a particle swarm optimization algorithm (population size: 30), convergence was achieved in
33 iterations. History matching yielded estimates of 60 (μg/g rock) for maximum polymer adsorption and 360 for
the Langmuir constant. The pseudo relative permeability curves needed to be more favorable than the rock
curves due to decreased heterogeneity. Three dimensional LSPF exhibited a heightened sensitivity to injectivity
loss compared to conventional polymer flooding, primarily due to the increased viscosity associated with lower
salinity, which contributes to elevated injection pressures. Tracking oil saturation and polymer concentration
over time revealed a slower change in polymer concentration compared to oil saturation in pilot area. LSPF
(4000 ppm salinity and 1500 ppm polymer) provided an incremental oil recovery as much as 12 % on top of
polymer injection under the condition of this study. The proposed upscaling methodology could provide broad
applications for predicting and optimizing water-based oil recovery processes at pilot scale.