Пример #1
0
def load_benchmark_canon(riders):
    """Returns the benchmark canonical matrices for each rider.

    Parameters
    ----------
    riders : list
        A list of riders from ['Charlie', 'Jason', 'Luke'].

    Returns
    -------
    canon : dictionary
        The M, C1, K0, and K2 matrices for each rider on the instrumented
        bicycle.

    """
    path = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data'
    canon = {}
    for rider in riders:
        if rider == 'Jason':
            bName = 'Rigid'
        else:
            bName= 'Rigidcl'
        bike = bp.Bicycle(bName, path)
        bike.add_rider(rider)
        canon[rider] = bike.canonical(nominal=True)

    return canon
Пример #2
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def draw_plot():
    bike = bp.Bicycle('Benchmark',
                      pathToData=os.getcwd() + '\\data')  # Alter Bicycle name
    #bike.add_rider('Jason', reCalc=True)
    plot = bike.plot_eigenvalues_vs_speed(speeds)
    plot.savefig(
        os.getcwd() +
        '\\assets\\eigen-plots\\defaults\\Benchmark.png')  # Alter png name
Пример #3
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def create_tables(bikeNames, groupName):
    bikes = []
    for bike in bikeNames:
        bikes.append(bp.Bicycle(bike, pathToData=pathToData,
                                forceRawCalc=True))

    for typ in ['Measured', 'Benchmark']:
        tab = Table(typ, True, bikes)
        pathToTableFile = os.path.join(pathToTables, groupName + typ + '.rst')
        tab.create_rst_table(fileName=pathToTableFile)
    print('Tables created for', bikeNames)
Пример #4
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def test_benchmark_eigenvalues():

    expected = dtkbicycle.benchmark_matrices()
    path_to_package = os.path.split(bicycleparameters.__file__)[0]
    path_to_data = os.path.join(path_to_package, '..', 'data')

    benchmark = bicycleparameters.Bicycle('Benchmark', path_to_data, True,
                                          True)
    M, C1, K0, K2 = benchmark.canonical(nominal=True)

    nptest.assert_allclose(M, expected[0])
    nptest.assert_allclose(C1, expected[1])
    nptest.assert_allclose(K0, expected[2])
    nptest.assert_allclose(K2, expected[3])
Пример #5
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def whipple_state_space(rider, speed):
    """ x' = Ax + Bu + Fv

    x = [phi,
         delta,
         phiDot,
         deltaDot]
    u = [Tphi,
         Tdel]
    v = [Fcl]

    """

    bicycleModel = LinearLateralForce()

    pathToData='/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data/'
    if rider == 'Jason':
        bicycleName = 'Rigid'
    elif rider == 'Charlie' or rider == 'Luke':
        bicycleName = 'Rigidcl'
    bike = bp.Bicycle(bicycleName, pathToData)
    bike.add_rider(rider)

    # set the model parameters
    benchmarkPar = bp.io.remove_uncertainties(bike.parameters['Benchmark'])
    benchmarkPar['xcl'] = bike.parameters['Measured']['xcl']
    benchmarkPar['zcl'] = bike.parameters['Measured']['zcl']
    moorePar = bicycle.benchmark_to_moore(benchmarkPar)
    bicycleModel.set_parameters(moorePar)

    # set the default equilibrium point
    pitchAngle = bicycle.pitch_from_roll_and_steer(0., 0., moorePar['rf'],
            moorePar['rr'], moorePar['d1'], moorePar['d2'], moorePar['d3'])
    wheelAngSpeed = -speed / moorePar['rr']
    equilibrium = np.zeros(len(bicycleModel.stateNames))
    equilibrium[bicycleModel.stateNames.index('q5')] = pitchAngle
    equilibrium[bicycleModel.stateNames.index('u6')] = wheelAngSpeed
    bicycleModel.linear(equilibrium)

    states = ['q4', 'q7', 'u4', 'u7']
    inputs = ['Fcl', 'T4', 'T7']
    outputs = ['q4', 'q7', 'u4', 'u7']

    A, B, C, D = bicycleModel.reduce_system(states, inputs, outputs)

    F = B[:, 0]
    B = B[:, 1:]

    return A, B, F
Пример #6
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    f = open('Whipple.py', 'r')
except IOError:
    from altk import alparse
    alparse.alparse('Whipple', 'Whipple', code='Python')
else:
    f.close()
    del f

from Whipple import LinearWhipple

# create the Whipple model (with my parameters)
whip = LinearWhipple()

# load the benchmark parameters
pathToData = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data/'
benchmark = bp.Bicycle('Benchmark', pathToData)
benchmarkPar = bp.io.remove_uncertainties(benchmark.parameters['Benchmark'])
# convert to my parameter set
moorePar = bicycle.benchmark_to_moore(benchmarkPar, oldMassCenter=False)
whip.set_parameters(moorePar)

# set the initial conditions to match Meijaard2007
speedNaught = 4.6
u6Naught = -speedNaught / moorePar['rr']
rollRateNaught = 0.5
pitchAngle = bicycle.pitch_from_roll_and_steer(0., 0., moorePar['rf'],
                                               moorePar['rr'], moorePar['d1'],
                                               moorePar['d2'], moorePar['d3'])

# linearize about the nominal configuration
equilibrium = np.zeros(len(whip.stateNames))
Пример #7
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from scipy import io
import bicycleparameters as bp
from dtk import bicycle

pathToParameters = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data'

rider = 'Luke'

if rider == 'Jason':
    bikeName = 'Rigid'
elif rider == 'Charlie' or rider == 'Luke':
    bikeName = 'Rigidcl'

# load the rigid bicycle and seat Luke
rigidWithRider = bp.Bicycle(bikeName,
                            forceRawCalc=True,
                            pathToData=pathToParameters)
rigidWithRider.add_rider(rider, reCalc=True)
h = rigidWithRider.human

# find the inertia of the humans without arms, this is with respect to the
# benchmark coordinate system and about the CoM of the subset of parts
humanMass, humanCoM, humanInertia = h.combine_inertia(
    ('P', 'T', 'C', 'K1', 'K2', 'J1', 'J2'))
riderPar = {
    'IBxx': humanInertia[0, 0],
    'IByy': humanInertia[1, 1],
    'IBzz': humanInertia[2, 2],
    'IBxz': humanInertia[2, 0],
    'mB': humanMass,
    'xB': humanCoM[0][0],
    f = open('GyroBike.py', 'r')
except IOError:
    from altk import alparse
    alparse.alparse('GyroBike', 'GyroBike', code='Python')
else:
    f.close()
    del f

from GyroBike import LinearGyroBike

# create the linear gyrobike model
gyrobike = LinearGyroBike()

# create the gyro bike
pathToData = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data/'
gyro = bp.Bicycle('Gyro', pathToData, forceRawCalc=True)

# set the model parameters
benchmarkPar = bp.io.remove_uncertainties(gyro.parameters['Benchmark'])
moorePar = bicycle.benchmark_to_moore(benchmarkPar)
moorePar['mg'] = benchmarkPar['mD']
moorePar['ig11'] = benchmarkPar['IDxx']
moorePar['ig22'] = benchmarkPar['IDyy']
gyrobike.set_parameters(moorePar)

# set the default equilibrium point
speedNaught = 0.5  # just over 1 mph, really slow walking
pitchAngle = bicycle.pitch_from_roll_and_steer(0., 0., moorePar['rf'],
                                               moorePar['rr'], moorePar['d1'],
                                               moorePar['d2'], moorePar['d3'])
wheelAngSpeed = -speedNaught / moorePar['rr']
Пример #9
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#!/usr/bin/env python

import matplotlib.pyplot as plt
import bicycleparameters as bp

# compare the benchmark parameters to some of the bicycles I measured
pathToData = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data'

browser = bp.Bicycle('Browser', pathToData=pathToData, forceRawCalc=True)
browser.add_rider('Jason')

goldenRatio = (5**0.5 - 1.0) / 2.0
fig_width = 5.0
fig_height = fig_width * goldenRatio
fig_size = [fig_width, fig_height]
params = {
    'axes.labelsize': 10,
    'text.fontsize': 10,
    'legend.fontsize': 10,
    'xtick.labelsize': 8,
    'ytick.labelsize': 8,
    'text.usetex': True,
    'figure.figsize': fig_size
}
plt.rcParams.update(params)

speedFig = plt.figure()

browser.compare_bode_speeds([0.5, 2.0, 6.0, 10.0], 1, 0, fig=speedFig)
#sixLine = speedFig.ax2.lines[2]
#sixLine.set_ydata(sixLine.get_ydata() + 360.)
Пример #10
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def new_geo_plot():
    bike = bp.Bicycle('Benchmark', pathToData=os.getcwd() + '\\data')
    plot = bike.plot_bicycle_geometry()
    plot.savefig(os.getcwd() + '\\assets\\geo-plots\\user-bikes\\dummy.png')
Пример #11
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N = C * (s * eye(4) - A).adjugate() * B
# These are the roll and steer numerator polynomials, respectively.
phiTphi = N[0, 0]
deltaTphi = N[1, 0]
phiTdelta = N[0, 1]
deltaTdelta = N[1, 1]

# Find the zeros
phiTphiZeros = roots(phiTphi, s, multiple=True)
deltaTphiZeros = roots(deltaTphi, s, multiple=True)
phiTdeltaZeros = roots(phiTdelta, s, multiple=True)
deltaTdeltaZeros = roots(deltaTdelta, s, multiple=True)

# Load a bicycle with some parameters and calculate the canonical matrices.
pathToData = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data'
bicycle = bp.Bicycle('Rigidcl', pathToData=pathToData, forceRawCalc=True)
bicycle.add_rider('Charlie')
#bicycle = bp.Bicycle('Benchmark', pathToData=pathToData)
Mn, C1n, K0n, K2n = bicycle.canonical()
Mn = un.unumpy.nominal_values(Mn)
C1n = un.unumpy.nominal_values(C1n)
K0n = un.unumpy.nominal_values(K0n)
K2n = un.unumpy.nominal_values(K2n)

# Create a dictionary to substitute numerical values.

# These are the benchmark bicycle parameters.
#num = {M[0, 0] : 80.81722,
#M[0, 1] : 2.31941332208709,
#M[1, 0] : 2.31941332208709,
#M[1, 1] : 0.29784188199686,
Пример #12
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    f = open('RiderLean.py', 'r')
except IOError:
    from altk import alparse
    alparse.alparse('RiderLean', 'RiderLean', code='Python')
else:
    f.close()
    del f

from RiderLean import LinearRiderLean

# create the linear bike model
bike = LinearRiderLean()

# load the benchmark parameters
pathToData='/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data/'
bikeWithLegs = bp.Bicycle('Browserlegs', pathToData)
#bikeWithLegs = bp.Bicycle('Lukelegs', pathToData)
benchmarkPar = bp.io.remove_uncertainties(bikeWithLegs.parameters['Benchmark'])

# convert to my parameter set
moorePar = bicycle.benchmark_to_moore(benchmarkPar, oldMassCenter=False)
pitchAngle = bicycle.pitch_from_roll_and_steer(0., 0., moorePar['rf'], moorePar['rr'],
        moorePar['d1'], moorePar['d2'], moorePar['d3'])

# from my inertia model
moorePar['d4'] = -1.011421527346159 + moorePar['rr']
moorePar['l5'] = 0.231223496809401
moorePar['l6'] = -1.283035074598082 + moorePar['rr'] - moorePar['d4']
moorePar['lam'] = pitchAngle
moorePar['mg'] = 48.816
moorePar['ig11'] = 2.038073562525466
import bicycleparameters as bp
import numpy as np

bikeNames = ['Browserins', 'Browser', 'Pista',
             'Fisher', 'Yellow', 'Yellowrev']

colors = ['k'] * 3 + ['gray'] * 3

linestyles = ['-', '-.', '--'] * 2

bikes = []

for name in bikeNames:
    bikes.append(bp.Bicycle(name, pathToData='../data'))

speeds = np.linspace(0., 10., num=100)

bp.plot_eigenvalues(bikes, speeds, colors=colors,
                    linestyles=linestyles), largest=True)

bp.plt.vlines([2.5, 5., 7.], -0.5, 4.)

#bp.plt.savefig('../plots/largest.png')

bp.plt.show()
#!/usr/bin/env python

import numpy as np
import bicycleparameters as bp
from dtk import bicycle

pathToData = '/media/Data/Documents/School/UC Davis/Bicycle Mechanics/BicycleParameters/data'
speeds = np.linspace(0., 10., num=100)

# compare a bike with rider and bike without rider
stratos = bp.Bicycle('Stratos', pathToData=pathToData, forceRawCalc=True)
stratosRider = bp.Bicycle('Stratos', pathToData=pathToData, forceRawCalc=True)
stratosRider.add_rider('Jason')
compareRider = bp.plot_eigenvalues([stratos, stratosRider], speeds)
ax = compareRider.axes[0]
ax.set_ylim(-10, 10)
ax.legend_.get_texts()[1].set_text('Stratos + Jason')
compareRider.savefig('../../figures/parameterstudy/compare-rider-eig.png',
                     dpi=200)

# compare the benchmark parameters to some of the bicycles I measured

benchmark = bp.Bicycle('Benchmark', pathToData=pathToData)

browser = bp.Bicycle('Browser', pathToData=pathToData, forceRawCalc=True)
browser.add_rider('Jason')

stratos = bp.Bicycle('Stratos', pathToData=pathToData, forceRawCalc=True)
stratos.add_rider('Jason')

benchmarkReal = bp.plot_eigenvalues([benchmark, browser, stratos], speeds)
Пример #15
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def plot_update(value, wheel, frame, general, options, slider):

    # accesses Input properties to avoid redundancies
    ctx = dash.callback_context
    wheelData = ctx.inputs.get('wheel-table.data')
    frameData = ctx.inputs.get('frame-table.data')
    genData = ctx.inputs.get('general-table.data')
    checklistData = ctx.inputs.get('geometry-checklist.value')
    rangeSliderData = ctx.inputs.get('range-slider.value')

    # construct flags for selected values of the geometry plot display options
    mass_boolean = 'centers' in checklistData
    ellipse_boolean = 'ellipse' in checklistData

    # sets the speed range for eigen-plot based on range-slider
    minBound = rangeSliderData[0]
    maxBound = rangeSliderData[1]
    steps = (maxBound - minBound) / 0.1
    speeds = np.linspace(minBound, maxBound, num=int(steps))

    Bike = bp.Bicycle(value, pathToData=path_to_app_data)

    # must convert steer axis tilt into radians when recieving values from the datatables
    if ctx.triggered[0].get('prop_id') != 'bike-dropdown.value':

        # convert to radians
        degrees = float(genData[2].get('con'))
        radians = np.deg2rad(degrees)
        genData[2]['con'] = radians

        # creates an alternating list of [parameter,value] from table data
        newP = []
        for p in range(8):
            if p < 4:
                newP.extend([pList[p], wheelData[p].get('fW')])
            else:
                newP.extend([pList[p], wheelData[p - 4].get('rW')])
        for p in range(12, len(pList)):
            if p < 19:
                newP.extend([pList[p], frameData[p - 12].get('rB')])
            else:
                newP.extend([pList[p], frameData[p - 19].get('fA')])
        for p in range(8, 12):
            newP.extend([pList[p], genData[p - 8].get('con')])

        # edits bicycle parameters based on table data
        for i in range(0, len(newP), 2):
            Bike.parameters['Benchmark'][newP[i]] = newP[i + 1]

    # create geometry-plot image
    geo_fake = io.BytesIO()
    geo_plot = Bike.plot_bicycle_geometry(show=False,
                                          centerOfMass=mass_boolean,
                                          inertiaEllipse=ellipse_boolean)
    geo_plot.savefig(geo_fake)
    geo_image = base64.b64encode(geo_fake.getvalue())
    plt.close(geo_plot)

    # create eigen-plot image
    eigen_fake = io.BytesIO()
    eigen_plot = Bike.plot_eigenvalues_vs_speed(speeds,
                                                show=False,
                                                grid=True,
                                                show_legend=False)
    eigen_plot.savefig(eigen_fake)
    eigen_image = base64.b64encode(eigen_fake.getvalue())
    plt.close(eigen_plot)

    return 'data:image/png;base64,{}'.format(
        geo_image.decode()), 'data:image/png;base64,{}'.format(
            eigen_image.decode())
Пример #16
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def new_par(bike_name):
    bike = bp.Bicycle(bike_name, pathToData=path_to_app_data)
    par = bike.parameters['Benchmark']
    parPure = bp.io.remove_uncertainties(par)
    return parPure