RMC for stochastic control.


License
Apache-2.0
Install
pip install RMCgp==0.0.30

Documentation

An RMC library for renewable stochastic control problems [arXiv]

Building on the well-understood mathematical theory of stochstic optimal control, we solve renewable energy control problems using RMC that involves:

  • Dynamic Programming
  • Policy and Value emulators
  • Demonstrate state-of-the-art performance.

The method is straight forward to implement and evaluate using existing tools, in particular GP and the GPy library.


Getting started: installing with pip

We strongly recommend using the anaconda python distribution. With anaconda you can install RMCpy by the following:

sudo apt-get update
sudo apt-get install python3-dev
sudo apt-get install build-essential   
conda update anaconda

And finally,

pip install RMCgp

Example

We encourage looking at nb.ipynb, which demonstrates how to use the library to train an optimal control model for hybrid renewabl-battery asset.

A self contained short example:

import RMC
import numpy as np
import GPy
### Defining Model 
X0 =np.random.normal(5,np.sqrt(0.5),10000)
process = RMC.simulate.OU(X0,96,10000,24,[1],[5],[1])
running_cost = RMC.costfunctions.L2()
final_cost = RMC.costfunctions.final_SOCcontraint(0,0)
parameters = (2,8,0.95,0.05)
batch_size = 30
value_kernel= GPy.kern.Matern52
normalize_v = True
policy_kernel = GPy.kern.Matern32
normalize_policy = True
hybrid_solution = RMC.model.HybridControl(600,process,running_cost,final_cost,parameters,batch_size,\
                                          value_kernel,normalize_v,policy_kernel,normalize_policy)

## Run RMC solve
hybrid_solution.solve()

Reproducing experiments

Results

Citation