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Groundhog Day: Iterative Learning for Building Temperature Control

机译:土拨鼠日:建筑温度控制的迭代学习

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As the cost of energy continues to grow, there is an increasing need for more effective building control, particularly regarding heating, ventilation, and air conditioning (HVAC) systems. Existing HVAC control systems are primarily based on measured temperature feedback, and typically do not utilize temperature forecasts and historical data. As a result, building room temperatures tend to fluctuate with the outside temperature, compromising occupant comfort and energy efficiency (as users overcompensate in setting the desired temperature). This paper proposes a feedforward scheme for building temperature control based on iterative learning control (ILC) to extract information from historical data with similar temperature patterns and preemptively account for expected future error. We apply the ILC strategy to building temperature control by considering a 24-hour period as one iteration. The weather forecast is used to find the historical record best matched with the predicted outside temperature and initial condition (room temperature). The recorded heat input and room temperature data is then used to generate a feedforward update of the heat input based on an ILC update. This method allows anticipatory feedforward control (on top of the feedback control) to prepare the room condition for the upcoming weather conditions, instead of only reacting to the current condition. We use a 4-room simulation to illustrate our approach. The result shows that the iterative learning controller produces substantially less error and oscillation as compared to the feedback control alone. However, the scheme consumes more energy as the temperature is more tightly regulated around the desired setting. This issue is addressed by relaxing the temperature learning criterion to reduce the control effort.
机译:随着能源成本继续增长,越来越需要更有效的建筑物控制,特别是关于加热,通风和空调(HVAC)系统。现有的HVAC控制系统主要基于测量的温度反馈,通常不利用温度预测和历史数据。结果,建筑室温往往会随着外部温度而波动,损害乘员舒适性和能源效率(因为用户在设定所需温度时通过复位)。本文提出了一种基于迭代学习控制(ILC)的迭代学习控制(ILC)来建立温度控制的前馈方案,以提取来自类似温度模式的历史数据和先发制人地解释预期的未来误差。我们将ILC策略应用于通过考虑24小时作为一次迭代来构建温度控制。天气预报用于找到与预测的外部温度和初始条件(室温)最佳匹配的历史记录。然后使用记录的热输入和室温数据来产生基于ILC更新的热输入的前馈更新。该方法允许预期的前馈控制(在反馈控制的顶部)以准备即将到来的天气条件的房间条件,而不是仅对当前条件进行反应。我们使用4室仿真来说明我们的方法。结果表明,与单独的反馈控制相比,迭代学习控制器产生的误差和振荡基本上更少。然而,该方案消耗更多的能量,因为温度围绕所需设置更紧密地调节。通过放松温度学习标准来解决这些问题来减少控制工作来解决此问题。

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