I am trying to run an optimization using lp.transport from the package lpSolve in R, using the generic form
lp.transport (cost, "min", row.signs, row.rhs, col.signs, col.rhs)
The cost matrix is large, 6791 x 15594. The rows correspond to food producers and the columns to consumers, and obviously the sum of all values of row.rhs is equal to that of col.rhs.
The optimization has been running about 12 hours now (using about 30 Mb of memory, in a 64-bits R). Is there any way to estimate the time it will take? Any advice on how to modify the inputs to eventually reduce computational time?