# Calling/selecting variables (float valued) with user input in Python

I've been working on a computational physics project (plotting related rates of chemical reactants with respect to eachother to show oscillatory behavior) with a fair amount of success. However, one of my simulations involves more than two active oscillating agents (five, in fact) which would obviously be unsuitable for any single visual plot...

My scheme was hence to have the user select which two reactants they wanted plotted on the x-axis and y-axis respectively. I tried (foolishly) to convert string input values into the respective variable names, but I guess I need a radically different approach if any exist?

If it helps clarify any, here is part of my code:

``````def coupledBrusselator(A, B, t_trial,display_x,display_y):
t = 0
t_step = .01
X = 0
Y = 0
E = 0
U = 0
V = 0
dX = (A) - (B+1)*(X) + (X**2)*(Y)
dY = (B)*(X) - (X**2)*(Y)
dE = -(E)*(U) - (X)
dU = (U**2)*(V) -(E+1)*(U) - (B)*(X)
dV = (E)*(U) - (U**2)*(V)
array_t = [0]
array_X = [0]
array_Y = [0]
array_U = [0]
array_V = [0]

while t <= t_trial:
X_1 = X + (dX)*(t_step/2)
Y_1 = Y + (dY)*(t_step/2)
E_1 = E + (dE)*(t_step/2)
U_1 = U + (dU)*(t_step/2)
V_1 = V + (dV)*(t_step/2)
dX_1 = (A) - (B+1)*(X_1) + (X_1**2)*(Y_1)
dY_1 = (B)*(X_1) - (X_1**2)*(Y_1)
dE_1 = -(E_1)*(U_1) - (X_1)
dU_1 = (U_1**2)*(V_1) -(E_1+1)*(U_1) - (B)*(X_1)
dV_1 = (E_1)*(U_1) - (U_1**2)*(V_1)
X_2 = X + (dX_1)*(t_step/2)
Y_2 = Y + (dY_1)*(t_step/2)
E_2 = E + (dE_1)*(t_step/2)
U_2 = U + (dU_1)*(t_step/2)
V_2 = V + (dV_1)*(t_step/2)
dX_2 = (A) - (B+1)*(X_2) + (X_2**2)*(Y_2)
dY_2 = (B)*(X_2) - (X_2**2)*(Y_2)
dE_2 = -(E_2)*(U_2) - (X_2)
dU_2 = (U_2**2)*(V_2) -(E_2+1)*(U_2) - (B)*(X_2)
dV_2 = (E_2)*(U_2) - (U_2**2)*(V_2)
X_3 = X + (dX_2)*(t_step)
Y_3 = Y + (dY_2)*(t_step)
E_3 = E + (dE_2)*(t_step)
U_3 = U + (dU_2)*(t_step)
V_3 = V + (dV_2)*(t_step)
dX_3 = (A) - (B+1)*(X_3) + (X_3**2)*(Y_3)
dY_3 = (B)*(X_3) - (X_3**2)*(Y_3)
dE_3 = -(E_3)*(U_3) - (X_3)
dU_3 = (U_3**2)*(V_3) -(E_3+1)*(U_3) - (B)*(X_3)
dV_3 = (E_3)*(U_3) - (U_3**2)*(V_3)
X = X + ((dX + 2*dX_1 + 2*dX_2 + dX_3)/6) * t_step
Y = Y + ((dX + 2*dY_1 + 2*dY_2 + dY_3)/6) * t_step
E = E + ((dE + 2*dE_1 + 2*dE_2 + dE_3)/6) * t_step
U = U + ((dU + 2*dU_1 + 2*dY_2 + dE_3)/6) * t_step
V = V + ((dV + 2*dV_1 + 2*dV_2 + dE_3)/6) * t_step
dX = (A) - (B+1)*(X) + (X**2)*(Y)
dY = (B)*(X) - (X**2)*(Y)
t_step = .01 / (1 + dX**2 + dY**2) ** .5
t = t + t_step
array_X.append(X)
array_Y.append(Y)
array_E.append(E)
array_U.append(U)
array_V.append(V)
array_t.append(t)
``````

where previously

``````display_x = raw_input("Choose catalyst you wish to analyze in the phase/field diagrams (X, Y, E, U, or V) ")
display_y = raw_input("Choose one other catalyst from list you wish to include in phase/field diagrams ")

coupledBrusselator(A, B, t_trial, display_x, display_y)
``````

Thanks!

-

Once you have calculated the different arrays, you could add them to a `dict` that maps names to arrays. This can then be used to look up the correct arrays for `display_x` and `display_y`:

``````named_arrays = {
"X": array_X,
"Y": array_Y,
"E": array_E,
...
}

return (named_arrays[display_x], named_arrays[display_y])
``````
-
Thanks, that hit the spot! :) – Jonathan Straus May 31 '10 at 19:54
@Jonathan, in this case you should accept @sth's answer (click on the checkbox-shaped outline icon left of the answer) -- that will give you extra rep which should also enable you to upvote it (click on the up-arrow on the very upper left of the answer). By SO's etiquette, thanks are nice, but upvotes and accepts matter!-) – Alex Martelli May 31 '10 at 20:22