# How to add a line of best fit to lognormal probability plot

I am creating a lognormal probability plot using Python 2.7 and matplotlib to represent an oil field size distribution but am having trouble plotting the line of best fit. Using this solution, I've managed to get the points plotting in the correct position however I'm unsure how to add the line of best fit. My current code is:

``````import numpy as np
from scipy import stats
import matplotlib.pyplot as plt

data = np.array((209.67,
97.47,
93.33,
73.00,
51.67,
47.47,
31.33,
22.00,
18.20,
15.83,
13.00,
12.58,
12.50,
12.25,
10.47,
9.83,
9.28,
8.50,
7.92,
5.87,
5.10,
4.92,
4.33,
3.52,
1.17))

# Configures the axes
fig, ax = plt.subplots()

ax.set_xscale('log')

# Calculate quantiles and least-square-fit curve
n = stats.probplot(data, dist='norm')
(quantiles, values), (slope, intercept, r) = n

#plot results
plt.plot(values, quantiles,'ob')

#define ticks
ticks_perc=[1, 5, 10, 20, 30, 40, 50, 60, 70, 80, 90, 95, 99]

#transfrom them from precentile to cumulative density
ticks_quan=[stats.norm.ppf(i/100.) for i in sorted(ticks_perc, reverse=True)]

#assign new ticks
plt.yticks(ticks_quan,ticks_perc)