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Intelligent Electric Water Heater Control with Varying State Information

机译:具有不同状态信息的智能电热水器控制

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摘要

The increasing share of renewable energy sources in the electricity grid results in a higher degree of uncertainty regarding electrical energy production. In response to this, flexibility of the demand has been proposed as part of the solution. An important source of flexibility available at the residential consumer side are thermostatically controlled loads (TCLs). In this paper the activation of this source of flexibility is achieved by applying batch reinforcement learning (BRL) to an electric water heater (EWH) in a Time of Use (ToU) setting. The cost performance of six BRL agents with six different state spaces is compared quantitatively. In every case, the BRL agent can successfully shift energy consumption within 20-25 days. The performance of an agent with access to multiple temperature sensors along the height of the EWH is comparable to the performance of an agent with access to only the highest temperature sensor. This indicates manufacturing costs related to sensors can be reduced while maintaining the same performance. Additionally, results show that the inclusion of a theoretical state of charge value in the state space increases performance by more than 8% compared to the performance of the other BRL agents. It is therefore argued that an estimation of the state of charge should be included in future work as it would increase cost performance.
机译:可再生能源在电网中的份额增加导致电能生产的更高程度的不确定性。响应于此,已经提出了需求的灵活性作为解决方案的一部分。住宅消费者侧可用的重要性源泉是恒温控制载荷(TCL)。在本文中,通过将批量加强学习(BRL)应用于使用时间(TOU)设置来实现这种灵活性来源的激活。定量比较六种不同状态空间的六种BRL代理的成本性能。在每种情况下,BRL代理人可以在20-25天内成功换档能源消耗。沿着EWH的高度的具有多个温度传感器的代理的性能与仅具有最高温度传感器的代理的性能相当。这表明可以减少与传感器相关的制造成本,同时保持相同的性能。另外,结果表明,与其他BRL代理商的性能相比,在状态空间中包含在状态空间中的电荷值的理论状态将性能提高了8%以上。因此,有人认为,应在将来的工作中估计收费状态,因为它会增加成本绩效。

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