/WFLOP_Python-1

Applied Energy - Wind Farm Layout Optimization using Self-Informed Genetic Algorithm with Information Guided Exploitation

Primary LanguagePythonMIT LicenseMIT

Wind farm layout optimization problem (WFLOP) Python toolbox

Reference

[1] Xinglong Ju, and Victoria C. P. Chen. "A MARS Python version using truncated linear function." 2019. DOI
[2] Victoria C.P. Chen, David Ruppert, and Christine A. Shoemaker. "Applying experimental design and regression splines to high-dimensional continuous-state stochastic dynamic programming." Operations Research 47.1 (1999): 38-53. DOI
[3] Xinglong Ju, and Feng Liu. "Wind farm layout optimization using self-informed genetic algorithm with information guided exploitation." Applied Energy 248 (2019): 429-445. DOI
[4] Xinglong Ju, Victoria C. P. Chen, Jay M. Rosenberger, and Feng Liu. "Knot Optimization for Multivariate Adaptive Regression Splines." In IISE Annual Conference. Proceedings, Institute of Industrial and Systems Engineers (IISE), 2019.

If you have any questions, please email Feng Liu (fliu0@mgh.harvard.edu), or Xinglong Ju (xinglong.ju@mavs.uta.edu).

Wind farm land cells illustration
Wind farm land cells illustration.

WFLOP Python toolbox guide

Import necessary libraries

import numpy as np
import pandas as pd
import MARS  # MARS (Multivariate Adaptive Regression Splines) regression class
import WindFarmGeneticToolbox  # wind farm layout optimization using genetic algorithms classes
from datetime import datetime
import os

Wind farm settings and algorithm settings

# parameters for the genetic algorithm
elite_rate = 0.2
cross_rate = 0.6
random_rate = 0.5
mutate_rate = 0.1

# wind farm size, cells
rows = 21
cols = 21
cell_width = 77.0 * 2 # unit : m

#
N = 60  # number of wind turbines
pop_size = 100  # population size, number of inidividuals in a population
iteration = 1  # number of genetic algorithm iterations

Create a WindFarmGenetic object

# all data will be save in data folder
data_folder = "data"
if not os.path.exists(data_folder):
    os.makedirs(data_folder)

# create an object of WindFarmGenetic
wfg = WindFarmGeneticToolbox.WindFarmGenetic(rows=rows, cols=cols, N=N, pop_size=pop_size,
                                             iteration=iteration, cell_width=cell_width, elite_rate=elite_rate,
                                             cross_rate=cross_rate, random_rate=random_rate, mutate_rate=mutate_rate)
# set wind distribution
# wind distribution is discrete (number of wind speeds) by (number of wind directions)
# wfg.init_4_direction_1_speed_12()
wfg.init_1_direction_1_N_speed_12()

Generate initial populations

init_pops_data_folder = "data/init_pops"
if not os.path.exists(init_pops_data_folder):
    os.makedirs(init_pops_data_folder)
# n_init_pops : number of initial populations
n_init_pops = 60
for i in range(n_init_pops):
    wfg.gen_init_pop()
    wfg.save_init_pop("{}/init_{}.dat".format(init_pops_data_folder,i))

Create results folder

# results folder
# adaptive_best_layouts_N60_9_20190422213718.dat : best layout for AGA of run index 9
# result_CGA_20190422213715.dat : run time and best eta for CGA method
results_data_folder = "data/results"
if not os.path.exists(results_data_folder):
    os.makedirs(results_data_folder)

n_run_times = 1  # number of run times
# result_arr stores the best conversion efficiency of each run
result_arr = np.zeros((n_run_times, 2), dtype=np.float32)

Run conventional genetic algorithm (CGA)

# CGA method
CGA_results_data_folder = "{}/CGA".format(results_data_folder)
if not os.path.exists(CGA_results_data_folder):
    os.makedirs(CGA_results_data_folder)
for i in range(0, n_run_times):  # run times
    print("run times {} ...".format(i))
    wfg.load_init_pop("{}/init_{}.dat".format(init_pops_data_folder, i))
    run_time, eta = wfg.conventional_genetic_alg(ind_time=i, result_folder=CGA_results_data_folder)
    result_arr[i, 0] = run_time
    result_arr[i, 1] = eta
time_stamp = datetime.now().strftime("%Y%m%d%H%M%S")
filename = "{}/result_CGA_{}.dat".format(CGA_results_data_folder, time_stamp)
np.savetxt(filename, result_arr, fmt='%f', delimiter="  ")

Run adaptive genetic algorithm (AGA)

# AGA method
AGA_results_data_folder = "{}/AGA".format(results_data_folder)
if not os.path.exists(AGA_results_data_folder):
    os.makedirs(AGA_results_data_folder)
for i in range(0, n_run_times):  # run times
    print("run times {} ...".format(i))
    wfg.load_init_pop("{}/init_{}.dat".format(init_pops_data_folder, i))
    run_time, eta = wfg.adaptive_genetic_alg(ind_time=i, result_folder=AGA_results_data_folder)
    result_arr[i, 0] = run_time
    result_arr[i, 1] = eta
time_stamp = datetime.now().strftime("%Y%m%d%H%M%S")
filename = "{}/result_AGA_{}.dat".format(AGA_results_data_folder, time_stamp)
np.savetxt(filename, result_arr, fmt='%f', delimiter="  ")

Run self-informed genetic algorithm (SIGA)

Generate wind distribution surface

wds_data_folder = "data/wds"
if not os.path.exists(wds_data_folder):
    os.makedirs(wds_data_folder)
# mc : monte-carlo
n_mc_samples = 10000

# each layout is binary list and the length of the list is (rows*cols)
# 1 indicates there is a wind turbine in that cell
# 0 indicates there is no wind turbine in the cell
# in "mc_layout.dat", there are 'n_mc_samples' line and each line is a layout.

# generate 'n_mc_samples' layouts and save it in 'mc_layout.data' file
WindFarmGeneticToolbox.LayoutGridMCGenerator.gen_mc_grid(rows=rows, cols=cols, n=n_mc_samples, N=N,
                                                         lofname="{}/{}".format(wds_data_folder, "mc_layout.dat"))
# read layouts from 'mc_layout.dat' file
layouts = np.genfromtxt("{}/{}".format(wds_data_folder,"mc_layout.dat"), delimiter="  ", dtype=np.int32)

# generate dataset to build wind farm distribution surface
wfg.mc_gen_xy(rows=rows, cols=cols, layouts=layouts, n=n_mc_samples, N=N, xfname="{}/{}".format(wds_data_folder, "x.dat"),
              yfname="{}/{}".format(wds_data_folder, "y.dat"))

# parameters for MARS regression method
n_variables = 2
n_points = rows * cols
n_candidate_knots = [rows, cols]
n_max_basis_functions = 100
n_max_interactions = 4
difference = 1.0e-3

x_original = pd.read_csv("{}/{}".format(wds_data_folder,"x.dat"), header=None, nrows=n_points, delim_whitespace=True)
x_original = x_original.values

y_original = pd.read_csv("{}/{}".format(wds_data_folder,"y.dat"), header=None, nrows=n_points, delim_whitespace=True)
y_original = y_original.values

mars = MARS.MARS(n_variables=n_variables, n_points=n_points, x=x_original, y=y_original,
                 n_candidate_knots=n_candidate_knots, n_max_basis_functions=n_max_basis_functions,
                 n_max_interactions=n_max_interactions, difference=difference)
mars.MARS_regress()
# save wind distribution model to 'wds.mars'
mars.save_mars_model_to_file()
with open("{}/{}".format(wds_data_folder,"wds.mars"), "wb") as mars_file:
    pickle.dump(mars, mars_file)

SIGA method

SIGA_results_data_folder = "{}/SIGA".format(results_data_folder)
if not os.path.exists(SIGA_results_data_folder):
    os.makedirs(SIGA_results_data_folder)
# wds_mars_file : wind distribution surface MARS model file
wds_mars_file = "{}/{}".format(wds_data_folder, "wds.mars")
for i in range(0, n_run_times):  # run times
    print("run times {} ...".format(i))
    wfg.load_init_pop("{}/init_{}.dat".format(init_pops_data_folder, i))
    run_time, eta = wfg.self_informed_genetic_alg(ind_time=i, result_folder=SIGA_results_data_folder,
                                                   wds_file=wds_mars_file)
    result_arr[i, 0] = run_time
    result_arr[i, 1] = eta
time_stamp = datetime.now().strftime("%Y%m%d%H%M%S")
filename = "{}/result_self_informed_{}.dat".format(SIGA_results_data_folder, time_stamp)
np.savetxt(filename, result_arr, fmt='%f', delimiter="  ")