We study aggregations for ordinary differential equations induced by fluid
semantics for Markovian process algebra which can capture the dynamics of
performance models and chemical reaction networks. Whilst previous work has
required perfect symmetry for exact aggregation, we present approximate fluid
lumpability, which makes nearby processes perfectly symmetric after a
perturbation of their parameters. We prove that small perturbations yield
nearby differential trajectories. Numerically, we show that many heterogeneous
processes can be aggregated with negligible errors.Comment: In Proceedings QAPL 2014, arXiv:1406.156