家用电器能量优化的模型预测控制技术

David Oliveira, E. Rodrigues, T. D. P. Mendes, J. Catalão, E. Pouresmaeil
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引用次数: 10

摘要

一些政府正在逐步淘汰燃煤发电厂,以减少温室气体排放。与此同时,核发电设施的使用寿命即将结束,在福岛灾难之后,发达国家选择在本世纪20年代初逐步淘汰核能,将其能源结构中最稳定、最可靠的部分减少15%。这两个原因使我们迫切需要在高峰时期增加新的发电能力或减少消耗,或者两者兼而有之。发电的第一个选择是使用可再生能源,它可以在不排放温室气体的情况下向电网注入电力。但是,可再生能源资源的容量不足以提供负荷侧所需的全部电力。所有这些事实都导致提出新的方法来减少不同部门的能源利用,即在住宅,商业,农业和/或工业部门,以减少客户的总能源成本,能源需求,特别是在高峰期间,以及温室气体排放,同时考虑到最终用户的偏好。本文的主要目的是论证优化技术对居民家庭节能的影响。在这方面,提出了一种基于模型的预测控制方法用于家庭制冷和供暖系统。通过在家庭中提供24小时的模拟,将其有效性与恒温器传统控制进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model predictive control technique for energy optimization in residential appliances
Several governments are phasing out coal fired generation power plants to reduce greenhouse gas emission. At the same time, nuclear generating facilities are reaching the end of their life and in the wake of the Fukushima disaster, developed countries have chosen to phase out nuclear energy early in the 2020s, removing 15% of the most stable and reliable portion of their energy mix. These two reasons create an urgent need to add new generating capacity or reduce consumption during peak periods, or both. The first option for power generation is the use of renewable energy resources, which can inject power to the grid without greenhouse gas emissions. But, the capacities of renewable energy resources are not enough to supply all the required power from the load side. All of these facts are leading to the proposal of novel approaches to reduce the utilization of energy in different sectors i.e. in residential, commercial, agricultural and/or industrial sectors to reduce the customer's total energy costs, energy demand, especially during on-peak, and greenhouse gas emissions, while taking into account the end-user preferences. The main objective of this paper is to demonstrate the impact of optimization technologies on energy savings of residential households. In this regard, a model-based predictive control approach is proposed for home cooling and heating systems. Its effectiveness is compared to thermostat conventional control by providing simulations upon 24 hours in a household.
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