A comparison of approximate dynamic programming techniques on benchmark energy storage problems: Does anything work?

Adaptive Dynamic Programming and Reinforcement Learning(2014)

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摘要
As more renewable, yet volatile, forms of energy like solar and wind are being incorporated into the grid, the problem of finding optimal control policies for energy storage is becoming increasingly important. These sequential decision problems are often modeled as stochastic dynamic programs, but when the state space becomes large, traditional (exact) techniques such as backward induction, policy iteration, or value iteration quickly become computationally intractable. Approximate dynamic programming (ADP) thus becomes a natural solution technique for solving these problems to near-optimality using significantly fewer computational resources. In this paper, we compare the performance of the following: various approximation architectures with approximate policy iteration (API), approximate value iteration (AVI) with structured lookup table, and direct policy search on a benchmarked energy storage problem (i.e., the optimal solution is computable).
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关键词
dynamic programming,energy storage,power engineering computing,power system management,renewable energy sources,table lookup,ADP,API,AVI,approximate dynamic programming,approximate policy iteration,approximate value iteration,backward induction,dynamic programming techniques,energy storage control policy,lookup table,natural solution technique,solar energy,stochastic dynamic programs,wind energy
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