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Experiments in using deep learning to model competition in liberalised electricity markets.

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Electricity Market Deep Learning Framework.

The aim of this software is to provide an adversarial reinforcement learning model of a restructured electricity market, specifically Australia's National Electricity Market. It is intended to work as an environment plugin for Elon Musk & Sam Altman's OpenAi Gym.

Usage

Keras, Tensorflow and Python 3.* are required to run the simulations. The software consists of three components: The market simulation webserver, the keras machine reinforcement learning setup, and the user interface. These components communicate in real-time over websockets.

Demo

A video of the working UI and simulator can be found here A demo, which works based on whether or not simulations are currently running, can be found here

screenshot 1

screenshot 2

Notes on machine learning outcomes

Start with generators at >0 capacity - otherwise the many variables they have to optimise don't appear consistent with sending generation and price positive - it appears that by reducing generation at a negative price, score is improved. Takes about 20,000 runs to get it to learn the market cap. Sometimes a few more

Atari games take ~18 million gens to learn - 30 fps. We do about 50 fps effective, with our sim. So OK speed with websockets.

Increasing fuzz (ie. epsilon) on the DDPG optimizer seems to instantly help - at least we follow a trend of the demand profile which is interesting. I also increased default learning rate by a factor of 10 (0.001 to 0.01)

One problem is there is barely any discovery with the default settings. I increased sigma in the Ornstein-Uhlenbeck process which has made for a significantly more random appearance in the bidding - but I haven't yet had the model converge (not many runs though).

Extremely good explanation: https://keon.io/deep-q-learning/

References

At the moment, based on examples and code from Matthias Plappert, repo found here: https://github.com/matthiasplappert/keras-rl

Notes

Make demand discrete in a tiny range Then show each participant their opponents moves last time demand was at that level.

What if we kept demand constant? This would really show the equilibrium. Next. No it wouldn't. They would get stuck in wack scenarios for each one max bidding and no competition.

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