Inner Stabilization

The mission of this script is to process data from Mirnov coils, determine plasma position and thus help with plasma stabilization. Mirnov coils are type of magnetic diagnostics and are used to the plasma position determination on GOLEM. 4 Mirnov coils are placed inside the tokamak 93 mm from the center of the chamber. The effective area of each coil is $A_{eff}=3.8\cdot10^{-3}$ m. Coils mc9 and mc1 are used to determination the horizontal plasma position and coils mc5 and mc13 to determination vertical plasma position.

In [1]:
import os
import glob

#remove files from the previous discharge
def remove_old(name):
    if os.path.exists(name):
        os.remove(name)
        
names = ['analysis.html','icon-fig.png', 'plasma_position.png']
for name in names:
    remove_old(name)
    
if os.path.exists('Results/'):
    file=glob.glob('Results/*')
    for f in file:
        os.remove(f)

import numpy as np
import matplotlib.pyplot as plt

from scipy import integrate, signal, interpolate
import pandas as pd


import holoviews as hv
hv.extension('bokeh')
import hvplot.pandas
import requests

from IPython.display import Markdown

#execute time
from timeit import default_timer as timer
start_execute = timer()
In [2]:
BDdata_URL = "http://golem.fjfi.cvut.cz/shots/{shot_no}/Diagnostics/BasicDiagnostics/{identifier}.csv"
data_URL = "http://golem.fjfi.cvut.cz/shots/{shot_no}/Diagnostics/LimiterMirnovCoils/DAS_raw_data_dir/NIdata_6133.lvm" #NI Standart (DAS) new address


shot_no = 36706 # to be replaced by the actual discharge number
# shot_no = 35940
vacuum_shot = 36688 # to be replaced by the discharge command line paramater "vacuum_shot"
# vacuum_shot = 35937 #number of the vacuum shot or 'False'

ds = np.DataSource(destpath='')  
In [3]:
def open_remote(shot_no, identifier, url_template=data_URL):
    return ds.open(url_template.format(shot_no=shot_no, identifier=identifier))

def read_signal(shot_no, identifier, url = data_URL, data_type='csv'): 
    file = open_remote(shot_no, identifier, url)
    if data_type == 'lvm':
        channels = ['Time', 'mc1', 'mc5', 'mc9', 'mc13', '5', 'RogQuadr', '7', '8', '9', '10', '11', '12']
        return pd.read_table(file, sep = '\t', names=channels)
    else:
        return pd.read_csv(file, names=['Time', identifier],
                     index_col = 'Time', squeeze=True)

Data integration and $B_t$ elimination

The coils measure voltage induced by changes in poloidal magnetic field. In order to obtain measured quantity (poloidal magnetic field), it is necessary to integrate the measured voltage and multiply by constant: $B(t)=\frac{1}{A_{eff}}\int_{0}^{t} U_{sig}(\tau)d\tau$

Ideally axis of the coils is perpendicular to the toroidal magnetic field, but in fact they are slightly deflected and measure toroidal magnetic field too. To determine the position of the plasma, we must eliminate this additional signal. For this we use vacuum discharge with the same parameters.

In [4]:
def elimination (shot_no, identifier, vacuum_shot = False):
    #load data 
    mc = (read_signal(shot_no, identifier, data_URL, 'lvm'))
    mc = mc.set_index('Time')
    mc = mc.replace([np.inf, -np.inf, np.nan], value = 0)
    mc = mc[identifier]
    
    konst = 1/(3.8e-03)
    
       
    if vacuum_shot == False: 
        signal_start = mc.index[0]
        length = len(mc)
        Bt = read_signal(shot_no, 'BtCoil_integrated', BDdata_URL).loc[signal_start:signal_start+length*1e-06]
        if len(Bt)>len(mc):
            Bt = Bt.iloc[:length]            
        if len(Bt)<len(mc):
            mc = mc.iloc[:len(Bt)]
        
        if identifier == 'mc1':
            k=300
        elif identifier == 'mc5':
            k= 14
        elif identifier == 'mc9':
            k = 31
        elif identifier == 'mc13':
            k = -100 
        
        mc_vacuum = Bt/k
    else:
        mc_vacuum = (read_signal(vacuum_shot, identifier, data_URL, 'lvm'))
        mc_vacuum = mc_vacuum.set_index('Time')
        mc_vacuum = mc_vacuum[identifier]
        mc_vacuum -= mc_vacuum.loc[:0.9e-3].mean()    #remove offset
        mc_vacuum = mc_vacuum.replace([np.inf, -np.inf], value = 0)
        
        mc_vacuum = pd.Series(integrate.cumtrapz(mc_vacuum, x=mc_vacuum.index, initial=0) * konst,
                    index=mc_vacuum.index*1000, name= identifier)    #integration

    mc -= mc.loc[:0.9e-3].mean()  #remove offset
       
    mc = pd.Series(integrate.cumtrapz(mc, x=mc.index, initial=0) * konst,
                    index=mc.index*1000, name= identifier)    #integration
    
    #Bt elimination
    mc_vacuum = np.array(mc_vacuum) 
    mc_elim = mc - mc_vacuum
    
    return mc_elim

Plasma life time

In [5]:
loop_voltage = read_signal(shot_no, 'U_Loop', BDdata_URL)
dIpch = read_signal(shot_no, 'U_RogCoil', BDdata_URL)

dIpch -= dIpch.loc[:0.9e-3].mean()

Ipch = pd.Series(integrate.cumtrapz(dIpch, x=dIpch.index, initial=0) * (-5.3*1e06),
                index=dIpch.index, name='Ipch')

U_l_func = interpolate.interp1d(loop_voltage.index, loop_voltage)  
def dIch_dt(t, Ich):
    return (U_l_func(t) - 0.0097 * Ich) / (1.2e-6/2)
t_span = loop_voltage.index[[0, -1]]
solution = integrate.solve_ivp(dIch_dt, t_span, [0], t_eval=loop_voltage.index, )
Ich = pd.Series(solution.y[0], index=loop_voltage.index, name='Ich')
Ip = Ipch - Ich
Ip.name = 'Ip'

Ip_detect = Ip.loc[0.0025:]

dt = (Ip_detect.index[-1] - Ip_detect.index[0]) / (Ip_detect.index.size) 

window_length = int(0.5e-3/dt)  
if window_length % 2 == 0:  
    window_length += 1
dIp = pd.Series(signal.savgol_filter(Ip_detect, window_length, polyorder=3, deriv=1, delta=dt),
                name='dIp', index=Ip_detect.index) / 1e6 

threshold = 0.05

CD = requests.get("http://golem.fjfi.cvut.cz/shots/%i/Production/Parameters/CD_orientation" % shot_no)
CD_orientation = CD.text

if "ACW" in CD_orientation:
    plasma_start = dIp[dIp < dIp.min()*threshold].index[0]*1e3 
    plasma_end = dIp.idxmax()*1e3 
else: 
    plasma_start = dIp[dIp > dIp.max()*threshold].index[0]*1e3 
    plasma_end = dIp.idxmin()*1e3 + 0.5    


print ('Plasma start =', round(plasma_start, 3), 'ms')
print ('Plasma end =', round(plasma_end, 3), 'ms')
# print (CD_orientation)
Plasma start = 2.5 ms
Plasma end = 20.139 ms

Plasma Position

To calculate displacement of plasma column, we can use approximation of the straight conductor. If we measure the poloidal field on the two opposite sides of the column, its displacement can be expressed as: $\Delta=\frac{B_{\Theta=0}-B_{\Theta=\pi}}{B_{\Theta=0}+B_{\Theta=\pi}}\cdot b$

Horizontal plasma position $\Delta r$ calculation

In [6]:
def horpol(shot_no, vacuum_shot=False):
    mc1 = elimination(shot_no, 'mc1', vacuum_shot)
    mc9 = elimination (shot_no, 'mc9', vacuum_shot)
    
    b = 93
    
    r = ((mc1-mc9)/(mc1+mc9))*b
    r = r.replace([np.nan], value = 0)
    
#     return r.loc[plasma_start:]
    return r.loc[plasma_start:plasma_end]
#     return r
In [7]:
r = horpol(shot_no, vacuum_shot)
ax = r.plot()
ax.set(ylim=(-85,85), xlim=(plasma_start,plasma_end), xlabel= 'Time [ms]', ylabel = '$\Delta$r [mm]', title = 'Horizontal plasma position #{}'.format(shot_no))
ax.axhline(y=0, color='k', ls='--', lw=1, alpha=0.4)
Out[7]:
<matplotlib.lines.Line2D at 0x7fcef5069b50>

Vertical plasma position $\Delta z$ calculation

In [8]:
def vertpol(shot_no, vacuum_shot = False):
    mc5 = elimination(shot_no, 'mc5', vacuum_shot)
    mc13 = elimination (shot_no, 'mc13', vacuum_shot)
    
    b = 93
    
    z = ((mc5-mc13)/(mc5+mc13))*b
    z = z.replace([np.nan], value = 0)
#     return z.loc[plasma_start:]
    return z.loc[plasma_start:plasma_end]
#     return z
In [9]:
z = vertpol (shot_no, vacuum_shot)
ax = z.plot()
ax.set(ylim=(-85, 85), xlim=(plasma_start,plasma_end), xlabel= 'Time [ms]', ylabel = '$\Delta$z [mm]', title = 'Vertical plasma position #{}'.format(shot_no))
ax.axhline(y=0, color='k', ls='--', lw=1, alpha=0.4)
Out[9]:
<matplotlib.lines.Line2D at 0x7fcec6c340d0>

Plasma column radius $a$ calculation

In [10]:
def plasma_radius(shot_no, vacuum_shot=False):
    r = horpol(shot_no, vacuum_shot) 
    z = vertpol(shot_no, vacuum_shot) 
    
    a0 = 85
    a = a0 - np.sqrt((r**2)+(z**2)) 
    a = a.replace([np.nan], value = 0)
#     return a.loc[plasma_start:]
    return a.loc[plasma_start:plasma_end]
#     return a
In [11]:
a = plasma_radius(shot_no,vacuum_shot)
ax = a.plot()
ax.set(ylim=(0,85), xlim=(plasma_start,plasma_end), xlabel= 'Time [ms]', ylabel = '$a$ [mm]', title = 'Plasma column radius #{}'.format(shot_no))
Out[11]:
[(0, 85),
 Text(0, 0.5, '$a$ [mm]'),
 (2.5004816, 20.139481599999996),
 Text(0.5, 0, 'Time [ms]'),
 Text(0.5, 1.0, 'Plasma column radius #36706')]
In [12]:
plasma_time = []
t = 0
for i in a:
    if i>85 or i <0:
        a = a.replace(i, value = 0)
    else:

        plasma_time.append(a.index[t])

    t+=1
start = plasma_time[0]-1e-03 
end = plasma_time[-1]-1e-03 
print('start =', round(start, 3), 'ms')
print('end =', round(end, 3), 'ms')
start = 2.5 ms
end = 13.379 ms

Data

In [13]:
r_cut = r.loc[start:end]
a_cut = a.loc[start:end]
z_cut = z.loc[start:end]

df_processed = pd.concat([r_cut.rename('r'), z_cut.rename('z'), a_cut.rename('a')], axis= 'columns')
df_processed
Out[13]:
r z a
Time
2.501 -33.767461 49.610213 24.988212
2.502 -34.837108 52.495001 21.997228
2.503 -34.144821 51.862080 22.906971
2.504 -32.294854 47.924504 27.209727
2.505 -31.652610 47.720899 27.735945
... ... ... ...
13.375 44.679822 72.130229 0.152746
13.376 44.966885 72.690150 0.000000
13.377 45.044157 72.726252 0.000000
13.378 44.830545 72.264266 0.000000
13.379 44.537994 71.923194 0.403435

10879 rows × 3 columns

In [14]:
savedata = 'plasma_position.csv'
df_processed.to_csv(savedata)
In [15]:
Markdown("[Plasma position data - $r, z, a$ ](./{})".format(savedata))

Graphs

In [16]:
hline = hv.HLine(0)
hline.opts(color='k',line_dash='dashed', alpha = 0.4,line_width=1.0)

layout = hv.Layout([df_processed[v].hvplot.line(
       xlabel='', ylabel=l,ylim=(-85,85), xlim=(start,end),legend=False, title='', grid=True, group_label=v)
                        for (v, l) in [('r', ' r [mm]'), ('z', 'z [mm]'), ('a', 'a [mm]')] ])*hline

plot=layout.cols(1).opts(hv.opts.Curve(width=600, height=200),  hv.opts.Curve('a', xlabel='time [ms]'))

plot
Out[16]:

Results

In [17]:
df_processed.describe()
Out[17]:
r z a
count 10879.000000 10879.000000 10879.000000
mean 11.534023 54.184923 27.264211
std 20.945873 14.570533 17.863132
min -34.837108 31.372348 0.000000
25% -5.586158 41.913367 8.968849
50% 6.314072 48.076127 35.095550
75% 28.645261 70.789493 42.055429
max 46.583193 82.042936 53.153351
In [18]:
z_end=round(z_cut.iat[-25],2)
z_start=round(z_cut.iat[25],2)
r_end=round(r_cut.iat[-25],2)
r_start=round(r_cut.iat[25],2)

name=('z_start', 'z_end', 'r_start', 'r_end')
values=(z_start, z_end, r_start, r_end)
data={'Values':[z_start, z_end, r_start, r_end]}
results=pd.DataFrame(data, index=name)
    
dictionary='Results/'
j=0
for i in values :
    with open(dictionary+name[j], 'w') as f:
        f.write(str(i))
    j+=1
    
results
Out[18]:
Values
z_start 46.39
z_end 72.32
r_start -29.37
r_end 45.30

Icon fig

In [19]:
responsestab = requests.get("http://golem.fjfi.cvut.cz/shots/%i/Production/Parameters/PowSup4InnerStab"%shot_no)
stab = responsestab.text

if not '-1' in stab or 'Not Found' in stab and exStab==False:
    fig, axs = plt.subplots(4, 1, sharex=True, dpi=200)
    dataNI = (read_signal(shot_no, 'Rog', data_URL, 'lvm')) #data from NI
    dataNI = dataNI.set_index('Time')
    dataNI = dataNI.set_index(dataNI.index*1e3)
    Irog = dataNI['RogQuadr']
#     Irog=abs(Irog)
    Irog*=1/5e-3
    r.plot(grid=True, ax=axs[0])
    z.plot(grid=True, ax=axs[1])
    a.plot(grid=True, ax=axs[2])
    Irog.plot(grid=True, ax=axs[3])
    axs[3].set(xlim=(start,end), ylabel = 'I [A]')
    axs[2].set(ylim=(0,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$a$ [mm]')
    axs[1].set(ylim=(-85,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$\Delta$z [mm]')
    axs[0].set(ylim=(-85,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$\Delta$r [mm]', 
               title = 'Horizontal, vertical plasma position and radius #{}'.format(shot_no))
    
else:
    fig, axs = plt.subplots(3, 1, sharex=True, dpi=200)
    r.plot(grid=True, ax=axs[0])
    z.plot(grid=True, ax=axs[1])
    a.plot(grid=True, ax=axs[2])
    axs[2].set(ylim=(0,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$a$ [mm]')
    axs[1].set(ylim=(-85,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$\Delta$z [mm]')
    axs[0].set(ylim=(-85,85), xlim=(start,end), xlabel= 'Time [ms]', ylabel = '$\Delta$r [mm]', 
               title = 'Horizontal, vertical plasma position and radius #{}'.format(shot_no))
    
plt.savefig('icon-fig')   

Plasma position during discharge

In [20]:
tms = np.arange(np.round(plasma_start),np.round(plasma_end)-1,1)

circle1 = plt.Circle((0, 0), 100, color='black', fill = False, lw = 5)
circle2 = plt.Circle((0, 0), 85, color='black', fill = False, lw = 3)

fig, ax = plt.subplots(figsize = (10,10)) 
ax.axvline(x=0, color = 'black', alpha = 0.5)
ax.axhline(y=0, color = 'black', alpha = 0.5)

ax.set_xlim(-100,100)
ax.set_ylim(-100,100)
ax.add_patch(circle1)
ax.add_patch(circle2)
plt.annotate('vessel',xy=(27-100, 170-100), xytext=(2-100, 190-100),
             arrowprops=dict(facecolor='black', shrink=0.05), fontsize = 12)
plt.annotate('limiter',xy=(175-100, 140-100), xytext=(170-100, 190-100),
             arrowprops=dict(facecolor='black', shrink=0.05), fontsize = 12)

color_idx = np.linspace(0, 1, tms.size)
a = 0
for i in tms:
    mask_pos = ((df_processed.index>i) & (df_processed.index<i+1))
    a_mean = df_processed['a'][mask_pos].mean()
    r_mean = df_processed['r'][mask_pos].mean()
    z_mean = df_processed['z'][mask_pos].mean()   
    circle3 = plt.Circle((r_mean, z_mean), a_mean, fill = False, 
                         color=plt.cm.jet(color_idx[a]),label = str(i) +'-' + str(i+1) + ' ms')
    ax.add_patch(circle3)
    a+=1
    
    
plt.grid(True)
plt.title('Estimated plasma position during discharge', fontweight = 'bold', fontsize = 20)
leg=plt.legend(bbox_to_anchor = (1,1))
for text in leg.get_texts():
     plt.setp(text, fontsize = 16)
ax.set_xlabel('r [mm]',fontweight = 'bold', fontsize = 15)
ax.set_ylabel('z [mm]', fontweight = 'bold', fontsize = 15)
plt.xticks( fontweight = 'bold', fontsize = 14)
plt.yticks( fontweight = 'bold', fontsize = 14)

plt.savefig('plasma_position.png', bbox_inches='tight')

Fast Cameras

In [21]:
from PIL import Image
from io import BytesIO
from IPython.display import Image as DispImage

FastCamera = True


try:
    url = "http://golem.fjfi.cvut.cz/shots/%i/Diagnostics/FastExCameras/plasma_film.png"%(shot_no)
    image = requests.get(url)
    img = Image.open(BytesIO(image.content)).convert('P') #'L','1'

    data = np.asanyarray(img)

    r = []
#     z = []
    for i in range(data.shape[1]):
        a=0
        b=0
        for j in range(336):
            a += data[j,i]*j
            b += data[j,i]
        r.append((a/b)*(170/336))
        
    Tcd = 3 #delay
    camera_time = np.linspace(start+abs(start-Tcd), end, len(r))
    r_camera = pd.Series(r, index = camera_time)-85
    r_mirnov = horpol(shot_no, vacuum_shot).loc[start:end]
        
    fig = plt.figure()
    ax = r_camera.plot(label = 'Fast Camera')
    ax = r_mirnov.plot(label = 'Mirnov coils')
    
    plt.legend()
    ax.set(ylim=(-85, 85), title='#%i'%shot_no,ylabel='$\Delta$r visible radiation')
    ax.axhline(y=0, color='k', ls='--', lw=1, alpha=0.4)
    fig.savefig('FastCameras_deltaR')

except OSError:
    FastCamera = False
In [22]:
if FastCamera == True:
    plt.imshow(img)
In [23]:
if not '-1' in stab and not 'Not Found' in stab:
    dataNI = (read_signal(shot_no, 'Rog', data_URL, 'lvm')) #data from NI
    dataNI = dataNI.set_index('Time')
    dataNI=dataNI.set_index(dataNI.index*1e3)
    Irog = dataNI['RogQuadr']
    
    Irog*=1/5e-3
    Irog=Irog.loc[start:end]
    data = pd.concat([df_processed, Irog], axis='columns')
    data.to_csv('plasma_position.csv')
    data['RogQuadr'].plot()