Is there a method to convert a Metpy output to numpy variable

I calculated the wind direction using Metpy. How can I extract the values and use the values as input in another part of my program?

In the sample code below, I would like to display the direction as a numpy variable, so I can use it in my program.

``````import metpy.calc as mpcalc
import numpy as np

# Make some fake data for us to work with
np.random.seed(19990503)  # So we all have the same data
u = np.random.randint(0, 15, 10) * units('m/s')
v = np.random.randint(0, 15, 10) * units('m/s')
direction = mpcalc.wind_direction(u, v)
print(direction)
``````
• Does `np.array(direction)` not work? Commented Jun 16, 2023 at 22:16

Another option, which I would recommend would be to use the `.magnitude` attribute (or `.m` for short), which gives you the underlying data as appropriate (numpy array or xarray `DataArray`):

``````import metpy.calc as mpcalc
import numpy as np

# Make some fake data for us to work with
np.random.seed(19990503)  # So we all have the same data
u = np.random.randint(0, 15, 10) * units('m/s')
v = np.random.randint(0, 15, 10) * units('m/s')
direction = mpcalc.wind_direction(u, v)
print(direction.magnitude)
``````

You can also use `.m_as()` to convert to desired units before printing:

``````print(direction.m_as('mph'))
``````

To convert a metpy result from a wind calculation to a numpy array, simply use the numpy `np.array` function.

``````import metpy.calc as mpcalc
from metpy.units import units
import numpy as np

np.random.seed(19990503)
u = np.random.randint(0, 15, 10)*units("m/s")
v = np.random.randint(0, 15, 10)*units("m/s")
direction = mpcalc.wind_direction(u, v)
direction_numpy = np.array(direction)
``````
• A heads up: I noticed very wrong values when I tried this solution in the presence of NaN values. For me, numpy sometimes puts numbers instead of a NaN seemingly randomly. Meaning some NaN remain, others are replaced by numbers but the values are not obvious to me. For example: `[-- -- 27.964148473457783 --]` converts to `[ nan, nan, 27.96414847, 81.71656571]`. In my case, the solution below works. Commented Dec 17, 2023 at 18:32
• The `--` are part of the outputs that I get from `metpy.calc`, i.e. it must be how `pint.Quantity` represents missing values. Ah, I see, then it might be specific to my application. Maybe this could be added to the answer then so that other people dont run into the same issue? Commented Dec 17, 2023 at 18:40
• I don't have metpy anymore to test it, but you might be able to preprocess the `--`s to ensure numpy converts them to nans. Commented Dec 17, 2023 at 18:43
• Add what to the answer? The `--` issue? Commented Dec 17, 2023 at 18:43
• Converting `--` beforehand would be an option. For my case, it makes more sense to use `magnitude` and keep NaNs though. I mean maybe add a note that this solution might not work well with NaNs. However, I am digging currently and for OPs question NaNs seem to not be a problem, however I was calculating `metpy.calc.apparent_temperature` and in this case, the conversion you propose doesn't work. So this might just be a corner case. Commented Dec 17, 2023 at 18:57