具有随机成本函数的经济调度的强化学习解

Imthias Ahmed, F. Pazheri, Jasmin E A
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引用次数: 3

摘要

强化学习(RL)是一种机器学习范式,其中学习系统通过使用从环境中获得的标量评估来学习在不同情况下采取何种行动。这种学习方法的一个主要特点是它可以在随机环境中学习。RL已成功地应用于许多电力系统优化问题。经济调度是一个重要的优化问题,其目的是在不违反系统约束的情况下,确定分配给各发电机组的发电量,使发电总成本最小。调度问题之一是适应不同发电机组的随机成本行为。在本文中,我们证明了RL算法考虑燃料成本随机性的能力。
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Reinforcement Learning solution for economic scheduling with stochastic cost function
Reinforcement Learning (RL) is a machine learning paradigm in which learning system learns which action to take in different situations by using a scalar evaluation received from the environment on performing an action. One major feature of this learning method is that it can learn in a stochastic environment. RL has been successfully applied to many power system optimization problems. Economic Scheduling is an important optimization problem to decide the amount of generation to be allocated to each generating unit so that the total cost of generation is minimized without violating system constraints. One scheduling issue is to accommodate the stochastic cost behaviour of the different generating units. In this paper we demonstrate the capacity of RL algorithm to account the stochastic nature of fuel cost.
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