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control_approx_linearization.py
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"""
Example control_approx_linearization.py
Author: Joshua A. Marshall <[email protected]>
GitHub: https://github.com/botprof/agv-examples
"""
# %%
# SIMULATION SETUP
import numpy as np
import matplotlib.pyplot as plt
from mobotpy.models import DiffDrive
from mobotpy.integration import rk_four
from scipy import signal
# Set the simulation time [s] and the sample period [s]
SIM_TIME = 15.0
T = 0.04
# Create an array of time values [s]
t = np.arange(0.0, SIM_TIME, T)
N = np.size(t)
# %%
# COMPUTE THE REFERENCE TRAJECTORY
# Radius of the circle [m]
R = 10
# Angular rate [rad/s] at which to traverse the circle
OMEGA = 0.1
# Pre-compute the desired trajectory
x_d = np.zeros((3, N))
u_d = np.zeros((2, N))
for k in range(0, N):
x_d[0, k] = R * np.sin(OMEGA * t[k])
x_d[1, k] = R * (1 - np.cos(OMEGA * t[k]))
x_d[2, k] = OMEGA * t[k]
u_d[0, k] = R * OMEGA
u_d[1, k] = OMEGA
# %%
# VEHICLE SETUP
# Set the track length of the vehicle [m]
ELL = 1.0
# Create a vehicle object of type DiffDrive
vehicle = DiffDrive(ELL)
# %%
# SIMULATE THE CLOSED-LOOP SYSTEM
# Initial conditions
x_init = np.zeros(3)
x_init[0] = 0.0
x_init[1] = 5.0
x_init[2] = 0.0
# Setup some arrays
x = np.zeros((3, N))
u = np.zeros((2, N))
x[:, 0] = x_init
for k in range(1, N):
# Simulate the differential drive vehicle motion
x[:, k] = rk_four(vehicle.f, x[:, k - 1], u[:, k - 1], T)
# Compute the approximate linearization
A = np.array(
[
[0, 0, -u_d[0, k - 1] * np.sin(x_d[2, k - 1])],
[0, 0, u_d[0, k - 1] * np.cos(x_d[2, k - 1])],
[0, 0, 0],
]
)
B = np.array([[np.cos(x_d[2, k - 1]), 0], [np.sin(x_d[2, k - 1]), 0], [0, 1]])
# Compute the gain matrix to place poles of (A-BK) at p
p = np.array([-1.0, -2.0, -0.5])
K = signal.place_poles(A, B, p)
# Compute the controls (v, omega) and convert to wheel speeds (v_L, v_R)
u_unicycle = -K.gain_matrix @ (x[:, k - 1] - x_d[:, k - 1]) + u_d[:, k - 1]
u[:, k] = vehicle.uni2diff(u_unicycle)
# %%
# MAKE PLOTS
# Change some plot settings (optional)
plt.rc("text", usetex=True)
plt.rc("text.latex", preamble=r"\usepackage{cmbright,amsmath,bm}")
plt.rc("savefig", format="pdf")
plt.rc("savefig", bbox="tight")
# Plot the states as a function of time
fig1 = plt.figure(1)
fig1.set_figheight(6.4)
ax1a = plt.subplot(411)
plt.plot(t, x_d[0, :], "C1--")
plt.plot(t, x[0, :], "C0")
plt.grid(color="0.95")
plt.ylabel(r"$x$ [m]")
plt.setp(ax1a, xticklabels=[])
plt.legend(["Desired", "Actual"])
ax1b = plt.subplot(412)
plt.plot(t, x_d[1, :], "C1--")
plt.plot(t, x[1, :], "C0")
plt.grid(color="0.95")
plt.ylabel(r"$y$ [m]")
plt.setp(ax1b, xticklabels=[])
ax1c = plt.subplot(413)
plt.plot(t, x_d[2, :] * 180.0 / np.pi, "C1--")
plt.plot(t, x[2, :] * 180.0 / np.pi, "C0")
plt.grid(color="0.95")
plt.ylabel(r"$\theta$ [deg]")
plt.setp(ax1c, xticklabels=[])
ax1d = plt.subplot(414)
plt.step(t, u[0, :], "C2", where="post", label="$v_L$")
plt.step(t, u[1, :], "C3", where="post", label="$v_R$")
plt.grid(color="0.95")
plt.ylabel(r"$\bm{u}$ [m/s]")
plt.xlabel(r"$t$ [s]")
plt.legend()
# Save the plot
plt.savefig("../agv-book/figs/ch4/control_approx_linearization_fig1.pdf")
# Plot the position of the vehicle in the plane
fig2 = plt.figure(2)
plt.plot(x_d[0, :], x_d[1, :], "C1--", label="Desired")
plt.plot(x[0, :], x[1, :], "C0", label="Actual")
plt.axis("equal")
X_L, Y_L, X_R, Y_R, X_B, Y_B, X_C, Y_C = vehicle.draw(x[0, 0], x[1, 0], x[2, 0])
plt.fill(X_L, Y_L, "k")
plt.fill(X_R, Y_R, "k")
plt.fill(X_C, Y_C, "k")
plt.fill(X_B, Y_B, "C2", alpha=0.5, label="Start")
X_L, Y_L, X_R, Y_R, X_B, Y_B, X_C, Y_C = vehicle.draw(
x[0, N - 1], x[1, N - 1], x[2, N - 1]
)
plt.fill(X_L, Y_L, "k")
plt.fill(X_R, Y_R, "k")
plt.fill(X_C, Y_C, "k")
plt.fill(X_B, Y_B, "C3", alpha=0.5, label="End")
plt.xlabel(r"$x$ [m]")
plt.ylabel(r"$y$ [m]")
plt.legend()
# Save the plot
plt.savefig("../agv-book/figs/ch4/control_approx_linearization_fig2.pdf")
# Show all the plots to the screen
plt.show()
# %%
# MAKE AN ANIMATION
# Create and save the animation
ani = vehicle.animate_trajectory(
x, x_d, T, True, "../agv-book/gifs/ch4/control_approx_linearization.gif"
)
# Show the movie to the screen
plt.show()
# # Show animation in HTML output if you are using IPython or Jupyter notebooks
# plt.rc('animation', html='jshtml')
# display(ani)
# plt.close()