在Python中生成切比雪夫多项式和x、y、z样本点的伪范德蒙德矩阵


要生成切比雪夫多项式和x、y、z样本点的伪范德蒙德矩阵,可以使用Python NumPy中的`chebyshev.chebvander()`。此方法返回度数为deg且样本点为(x, y, z)的伪范德蒙德矩阵。

参数x、y、z是点坐标数组,形状相同。数据类型将转换为float64或complex128,具体取决于是否有任何元素是复数。标量将转换为一维数组。参数deg是最大度数列表,格式为[x_deg, y_deg, z_deg]。

步骤

首先,导入所需的库:

import numpy as np
from numpy.polynomial import chebyshev as C

使用numpy.array()方法创建形状相同的点坐标数组:

x = np.array([1, 2])
y = np.array([3, 4])
z = np.array([5, 6])

显示数组:

print("Array1...\n",x)
print("\nArray2...\n",y)
print("\nArray3...\n",z)

显示数据类型:

print("\nArray1 datatype...\n",x.dtype)
print("\nArray2 datatype...\n",y.dtype)
print("\nArray3 datatype...\n",z.dtype)

检查两个数组的维度:

print("\nDimensions of Array1...\n",x.ndim)
print("\nDimensions of Array2...\n",y.ndim)
print("\nDimensions of Array3...\n",z.ndim)

检查两个数组的形状:

print("\nShape of Array1...\n",x.shape)
print("\nShape of Array2...\n",y.shape)
print("\nShape of Array3...\n",z.shape)

要生成切比雪夫多项式和x、y、z样本点的伪范德蒙德矩阵,请在Python中使用`chebyshev.chebvander()`:

x_deg, y_deg, z_deg = 2, 3, 4
print("\nResult...\n",C.chebvander3d(x,y, z, [x_deg, y_deg, z_deg]))

示例

import numpy as np
from numpy.polynomial import chebyshev as C

# Create arrays of point coordinates, all of the same shape using the numpy.array() method
x = np.array([1, 2])
y = np.array([3, 4])
z = np.array([5, 6])

# Display the arrays
print("Array1...\n",x)
print("\nArray2...\n",y)
print("\nArray3...\n",z)

# Display the datatype
print("\nArray1 datatype...\n",x.dtype)
print("\nArray2 datatype...\n",y.dtype)
print("\nArray3 datatype...\n",z.dtype)

# Check the Dimensions of both the arrays
print("\nDimensions of Array1...\n",x.ndim)
print("\nDimensions of Array2...\n",y.ndim)
print("\nDimensions of Array3...\n",z.ndim)

# Check the Shape of both the arrays
print("\nShape of Array1...\n",x.shape)
print("\nShape of Array2...\n",y.shape)
print("\nShape of Array3...\n",z.shape)

# To generate a pseudo Vandermonde matrix of the Chebyshev polynomial and x, y, z sample points, use the chebyshev.chebvander() in Python Numpy
# The method returns the pseudo-Vandermonde matrix of degrees deg and sample points (x, y, z).
x_deg, y_deg, z_deg = 2, 3, 4
print("\nResult...\n",C.chebvander3d(x,y, z, [x_deg, y_deg, z_deg]))

输出

Array1...
   [1 2]

Array2...
   [3 4]

Array3...
[5 6]

Array1 datatype...
int64

Array2 datatype...
int64

Array3 datatype...
int64

Dimensions of Array1...
1

Dimensions of Array2...
1

Dimensions of Array3...
1

Shape of Array1...
(2,)

Shape of Array2...
(2,)

Shape of Array3...
(2,)

Result...
   [[1.0000000e+00 5.0000000e+00 4.9000000e+01 4.8500000e+02 4.8010000e+03
     3.0000000e+00 1.5000000e+01 1.4700000e+02 1.4550000e+03 1.4403000e+04
     1.7000000e+01 8.5000000e+01 8.3300000e+02 8.2450000e+03 8.1617000e+04
     9.9000000e+01 4.9500000e+02 4.8510000e+03 4.8015000e+04 4.7529900e+05
     1.0000000e+00 5.0000000e+00 4.9000000e+01 4.8500000e+02 4.8010000e+03
     3.0000000e+00 1.5000000e+01 1.4700000e+02 1.4550000e+03 1.4403000e+04
     1.7000000e+01 8.5000000e+01 8.3300000e+02 8.2450000e+03 8.1617000e+04
     9.9000000e+01 4.9500000e+02 4.8510000e+03 4.8015000e+04 4.7529900e+05
     1.0000000e+00 5.0000000e+00 4.9000000e+01 4.8500000e+02 4.8010000e+03
     3.0000000e+00 1.5000000e+01 1.4700000e+02 1.4550000e+03 1.4403000e+04
     1.7000000e+01 8.5000000e+01 8.3300000e+02 8.2450000e+03 8.1617000e+04
     9.9000000e+01 4.9500000e+02 4.8510000e+03 4.8015000e+04 4.7529900e+05]
    [1.0000000e+00 6.0000000e+00 7.1000000e+01 8.4600000e+02 1.0081000e+04
     4.0000000e+00 2.4000000e+01 2.8400000e+02 3.3840000e+03 4.0324000e+04
     3.1000000e+01 1.8600000e+02 2.2010000e+03 2.6226000e+04 3.1251100e+05
     2.4400000e+02 1.4640000e+03 1.7324000e+04 2.0642400e+05 2.4597640e+06
     2.0000000e+00 1.2000000e+01 1.4200000e+02 1.6920000e+03 2.0162000e+04
     8.0000000e+00 4.8000000e+01 5.6800000e+02 6.7680000e+03 8.0648000e+04
     6.2000000e+01 3.7200000e+02 4.4020000e+03 5.2452000e+04 6.2502200e+05
     4.8800000e+02 2.9280000e+03 3.4648000e+04 4.1284800e+05 4.9195280e+06
     7.0000000e+00 4.2000000e+01 4.9700000e+02 5.9220000e+03 7.0567000e+04
     2.8000000e+01 1.6800000e+02 1.9880000e+03 2.3688000e+04 2.8226800e+05
     2.1700000e+02 1.3020000e+03 1.5407000e+04 1.8358200e+05 2.1875770e+06
     1.7080000e+03 1.0248000e+04 1.2126800e+05 1.4449680e+06 1.7218348e+07]]

更新于:2022年3月1日

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