大多数Pythonic方式绘制矢量函数

时间:2015-01-20 06:01:07

标签: python numpy matplotlib

我有一个函数calcField,当给定一个带有两个表示位置的元素的numpy数组时,它返回一个表示该位置电场的数组。请求matplotlib为此函数绘制矢量场的最pythonic方法是什么?目前我有这个代码工作,但它感觉与numpy的精神相反,并且相对难以理解。

Y, X = np.mgrid[-3:3:100j, -3:3:100j]

vectors = np.array([[field.calcField(r) for r in row] 
                  for row in [zip(a, b) for a, b in zip(X, Y)]])
U = np.array([[vector[0] for vector in row] for row in vectors])
V = np.array([[vector[1] for vector in row] for row in vectors])

plt.streamplot(X, Y, U, V, color=U, linewidth=2, cmap=plt.cm.autumn)

编辑:根据要求,使用calcField的代码:

import constants
import numpy as np
import numpy.linalg as l
class Field:
    def __init__(self, charges = []):
       self.charges = charges
    def addCharge(self, charge):
        self.charges = self.charges + [charge]
    def calcField(self, point):
        point = np.array(point)
        return sum([charge.calcField(point) for charge in self.charges])

class PointCharge:
    def __init__(self, q, position):
        self.q = q
        self.position = np.array(position)
    def calcField(self, point):
        return constants.k * self.q * (point - self.position) / l.norm (point - self.position)**3

1 个答案:

答案 0 :(得分:1)

使用流线绘制一组点电荷的电场的代码的矢量化形式可能如下所示:

num_charges = 4
charges = np.random.random_integers(-5,5,num_charges)
charges[charges==0] = 5
charges_positions = np.random.random((num_charges, 2))

y,x = np.mgrid[0:1:40j, 0:1:40j]
xdist = x - charges_positions[:,0].reshape(-1,1,1)
ydist = y - charges_positions[:,1].reshape(-1,1,1)

denom = ((xdist**2 + ydist**2)**1.5)
# Ignoring Coulomb's constant here...
Ex = (charges.reshape(-1,1,1) * xdist / denom).sum(axis=0)
Ey = (charges.reshape(-1,1,1) * ydist / denom).sum(axis=0)

我觉得比这个替代方案更容易理解,你可能会发现它更具可读性(这是你的问题):

num_charges = 4
charges = np.random.random_integers(-5,5,(num_charges,1,1))
charges[charges==0] = 5  # only for clarity
positions = np.random.random((2, num_charges,1,1))

y,x = np.mgrid[0:1:40j, 0:1:40j]
M,N = y.shape
xy = np.array([x,y]).reshape(2,1, M,N)
rad_dist = xy - positions
denom = np.linalg.norm(rad_dist, axis=(0))**3

elec_fields = charges * rad_dist / denom
Ex, Ey = elec_fields.sum(axis=1)

你可以很容易地绘图。我将继续使用上一个代码块中的格式(如果您使用的是第一个表单,则需要交换一些索引):

pos_charges = charges > 0
neg_charges = charges < 0
f,(ax,ax1) = plt.subplots(1,2)
ax.plot(positions[0, pos_charges], positions[1, pos_charges], 'ro ')
ax.plot(positions[0, neg_charges], positions[1, neg_charges], 'bo ')
ax.streamplot(x,y, Ex, Ey, color='k')
ax.set_aspect('equal', adjustable='box')
ax.set_title('Electric field')
ax.set_xticks([])
ax.set_yticks([])

但是,此时我不再使用课程了。有时,享受更容易访问矢量化是值得的。在代码的第二种形式中,您基本上在PointCharge.calcField()的第二轴中具有每个elec_fields的结果,第一个仅仅是这些字段的x和y分量。

electric field distribution

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