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I'm trying to optimize the daily production of a natural gas power plant to maximize profits during the day.

Here is the problem: The problem is that the space of possible solutions is huge: 6^24 and I'm not sure I can brute-force through it although I haven't tried yet.

Is there an easier way of thinking about this? Or if I've been going in the correct direction is there a way to find the optimum solution without going through all the set of possibilities?

Thank you!

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closed as off topic by Jim Garrison, rgettman, Roman C, Toon Krijthe, Charles Menguy Apr 17 '13 at 6:08

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Six states, add shutting down. This is assuming you can't do anything until it goes from shut down to off. –  dlp Apr 16 '13 at 19:54
SO is for specific programming problems that can be answered concisely. Your problem has to do with general optimization, and could be the subject of an entire semester project, requiring significant research into topics such as linear programming and state-space searching. As such it's not a very good fit for SO, as it's likely to elicit opinions and discussion instead of hard answers. –  Jim Garrison Apr 16 '13 at 20:08
Is the demand changing as well, or is this embedded in the price alone? If you produce 800MW, will the electricity network accept that no matter what, or are the times that you are limited to e.g 600MW? –  DeltaLima Apr 16 '13 at 22:25
How long in advance is the electricity price know? What is your prediction horizon? –  DeltaLima Apr 16 '13 at 22:28
I will assume that the network will accept all production for now. Prediction horizon is a single day, divided into 24 hours that need to be optimized. For now, assuming only the next day's price is "known." –  Şükrü Hasdemir Apr 17 '13 at 18:36

4 Answers 4

The problem here seems to be that the constraints vary with time. This means it becomes a statistical prediction problem. Calculating the gains to be had for a given MO is of course trivial, but knowing the sale price of electricity is not.

Look into making a statistical predictor to narrow down the search space.

Also consider: are the gains to be had high enough to warrant just hiring a guy to manually run the plant? Humans are often really good at predicting things like this.

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Thanks, but it seems like I wasn't clear on this point: The price of electricity is assumed to be known beforehand, and it is just an input to my optimization. –  Şükrü Hasdemir Apr 16 '13 at 20:03

You can look into drools software. It's designed for all things operations researchs.

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More specifically, this is a typical problem for Drools Planner, which has been recently renamed to OptaPlanner (java, open source). –  Geoffrey De Smet Apr 17 '13 at 7:21

Look at Mixed Integer Linear Programming.

That allows you to combine non-integer cost functions with integer states.


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The problem seems to be a nice optimization problem. What I would suggest you, is to first relax as much as your constraints as possible, and then try to model your problem as a simple optimization problem (lets say a simple LP or in general any convex optimization form). After getting some initial results try to add more constraints and get more approximation.

For these kind of problems its very important how you model the problem, and a very good starting point is to check out the lecture notes of Stanford Convex Optimization Course.

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