# Change axes ticks of quiver - Python

I'm plotting a vector field with the quiver method of Matplotlib.

My array to store this vector has a dimension x * y but I'm working with a space that varies from -2 to 2.

So far, to plot the vector field I have this method:

``````import matplotlib.pyplot as plt

def plot_quiver(vector_field_x, vector_field_y, file_path):
plt.figure()
plt.subplots()
plt.quiver(vector_field_x, vector_field_y)
plt.savefig(file_path + '.png')
plt.close()
``````

Which gives me this output, as an example, for a 10 x 10 array:

But to generate this vector field I centered my data in the x = 0, y = 0, x and y ranging from -2 to 2. Then, I would like to plot the axis of the image following this pattern.

As an standard approach, I tried to do the following:

``````def plot_quiver(vector_field_x, vector_field_y, file_path):
plt.figure()
fig, ax = plt.subplots()
ax.quiver(vector_field_x, vector_field_y)
ax.set_xticks([-2, 0, 2])
ax.set_yticks([-2, 0, 2])
plt.savefig(file_path + '.png')
plt.close()
``````

Which usually works with Matplotlib methods, as imshow and streamplot, for example.

But this what I've got with this code:

Which is not what I want.

So, I'm wondering how can I perform what I explained here to change the axes ticks.

-

Funny thing, I just learnt about `quiver` yesterday... :)

According to the quiver documentation, the function can accept from 2 to 5 arguments...

The simplest way to use the function is to pass it two arrays with equal number of elements `U` and `V`. Then, matplotlib will plot an arrow for each element in the arrays. Specifically, for each element `i,j` you will get an arrow placed at `i,j` and with components defined by `U[i,j]` and `V[i,j]`. This is what is happening to you

A more complete syntax is to pass our arrays with equal number of elements `X`, `Y`, `U` and `V`. Again, you will get an arrow for each `i,j` element with components defined by `U[i,j]` and `V[i,j]`, but this time they will be placed at coordinates `X[i,j]`, `Y[i,j]`.

### In conclusion:

you need to call `quiver` like

``````quiver(values_x, values_y, vector_field_x, vector_field_y)
``````

Probably you already did it, but you can get `values_x` and `values_y` using the `numpy.meshgrid` function.

The matplotlib example for the `quiver` function might be useful, also.

I hope it helps!

-
As we do with the streamplot... Thank you. (: – pceccon May 31 '14 at 0:06