A Statistical Parameter Optimization Tool
Project description
Purpose
SPOTPY is a Python tool that enables the use of Computational optimization techniques for calibration, uncertainty and sensitivity analysis techniques of almost every (environmental-) model. The package is puplished in the open source journal PLoS One
Houska, T, Kraft, P, Chamorro-Chavez, A and Breuer, L; SPOTting Model Parameters Using a Ready-Made Python Package; PLoS ONE; 2015
The simplicity and flexibility enables the use and test of different algorithms without the need of complex codes:
sampler = spotpy.algorithms.sceua(model_setup()) # Initialize your model with a setup file sampler.sample(10000) # Run the model results = sampler.getdata() # Load the results spotpy.analyser.plot_parametertrace(results) # Show the results
Features
Complex algorithms bring complex tasks to link them with a model. We want to make this task as easy as possible. Some features you can use with the SPOTPY package are:
Fitting models to evaluation data with different algorithms. Available algorithms are:
Monte Carlo (MC)
Markov-Chain Monte-Carlo (MCMC)
Maximum Likelihood Estimation (MLE)
Latin-Hypercube Sampling (LHS)
Simulated Annealing (SA)
Shuffled Complex Evolution Algorithm (SCE-UA)
Differential Evolution Adaptive Metropolis Algorithm (DE-MCz)
RObust Parameter Estimation (ROPE).
Fourier Amplitude Sensitivity Test (FAST)
Artificial Bee Colony (ABC)
Fitness Scaled Chaotic Artificial Bee Colony (FSCABC)
Wide range of objective functions (also known as loss function, fitness function or energy function) to validate the sampled results. Available functions are
Bias
PBias
Nash-Sutcliff (NSE)
logarithmic Nash-Sutcliff (logNSE)
logarithmic probability (logp)
Correlation Coefficient (r)
Coefficient of Determination (r^2)
Mean Squared Error (MSE)
Root Mean Squared Error (RMSE)
Mean Absolute Error (MAE)
Relative Root Mean Squared Error (RRMSE)
Agreement Index (AI)
Covariance, Decomposed MSE (dMSE)
Kling-Gupta Efficiency (KGE).
Prebuild parameter distribution functions:
Uniform
Normal
logNormal
Chisquare
Exponential
Gamma
Wald
Weilbull
Wide range to adapt algorithms to perform uncertainty-, sensitivity analysis or calibration of a model.
Multi-objective support
MPI support for fast parallel computing
A progress bar monitoring the sampling loops. Enables you to plan your coffee brakes.
Use of NumPy functions as often as possible. This makes your coffee brakes short.
Different databases solutions: ram storage for fast sampling a simple , csv tables the save solution for long duration samplings.
Automatic best run selecting and plotting
Parameter trace plotting
Parameter interaction plot including the Gaussian-kde function
Regression analysis between simulation and evaluation data
Posterior distribution plot
Convergence diagnostics with Gelman-Rubin and the Geweke plot
Install
Installing SPOTPY is easy. Just use:
pip install spotpy
Or, after downloading the source code and making sure python is in your path:
python setup.py install
Support
Feel free to contact the authors of this tool for any support questions.
Please contact the authors in case of any bug.
If you use this package for a scientific research paper, please cite SPOTPY.
Patches/enhancements and any other contributions to this package are very welcome!
Version 1.1.0
Changed likelihood to objectivefunction. Checkout new example spotpy_setup files.
Version 1.1.1
Minor bugfixes
Version 1.1.2
Minor bugfixes
Version 1.1.3
Minor bugfixes
Version 1.1.4
Added a new functionality to sample parameters from a given list. Checkout the corresponding parameter example tutorial and parameter example code
Version 1.2.0
Added Python 3 support
Version 1.2.1
Spotpy supports now userdefined databases. Checkout the corresponding database example tutorial and database example code
Version 1.2.2
Minor bugfix in Monte Carlo sampler
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