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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Peak shaving in district heating exploiting reinforcement learning and agent-based modelling
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Peak shaving in district heating exploiting reinforcement learning and agent-based modelling

机译:地区供热爆破爆破剥削加固学习和基于代理的建模

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摘要

District Heating (DH) technology is considered to be a sustainable and quasi-renewable way of producing and distributing hot water along the city to heat buildings. However, the main obstacle to wider adoption of DH technology is represented by the thermal request peak in the morning hours of winter days, especially in Mediterranean countries. In this paper, this peak-shaving problem is tackled by combining three different approaches. A thermodynamic model is used to monitor the buildings' thermal response to energy profile modifications. An agent-based model is adopted in order to represent the end-users and their adaptability to variations of temperatures in buildings. Finally, a Reinforcement Learning algorithm is used to optimally mediate between two needs: on the one hand, a set of anticipations and delays is applied to the energy profiles in order to reduce the thermal request peak. On the other hand, the algorithm learns by trial and error the individual agents' sensitivity to thermal comfort, avoiding drastic modifications for the most sensitive users. The experiments carried out in the DH network in Torino (north-west of Italy) demonstrate that the proposed approach, compared with a literature solution chosen as a baseline, allows to achieve better results in terms of overall performances and speed of convergence.
机译:地区供暖(DH)技术被认为是一种可持续和准可再生的生产和分配城市热水的可持续和准可再生的含水。然而,更广泛采用DH技术的主要障碍由冬季的早晨的热量请求峰值代表,特别是在地中海国家。在本文中,通过组合三种不同的方法来解决这个峰值问题。热力学模型用于监测建筑物对能量轮廓修改的热响应。采用基于代理的模型,以表示最终用户及其对建筑物中温度变化的适应性。最后,使用加强学习算法用于在两个需要之间进行最佳地介导:一方面,将一组预期和延迟应用于能量轮廓以减少热请求峰值。另一方面,该算法通过试验和误差来学习各个代理对热舒适度的敏感性,避免对最敏感的用户进行剧烈修改。与意大利港(意大利西北部)的DH网络中进行的实验表明,与选择作为基线的文献解决方案相比,拟议的方法允许在整体性能和收敛速度方面实现更好的结果。

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