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Passing from a Gas to an Electric Water Heater System: Adaptive PID Versus Smith Predictive Control

机译:从燃气到电热水器系统:自适应PID与史密斯预测控制

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This paper presents the control results of an electric water heater system using two approaches: adaptive proportional integral derivative and Smith predictive control based on the physical internal model control structure. The electric water heater was modelled with two variable blocks connected in series: a first order system and a time delay. In fact, the gain, the time constant and the time delay of the system change linearly with the water that flows in the permutation chamber. The physical model of the electric water heater system was retched based on energy dynamic equations and validated with open loop data of the system in a similar way that was made in a previews study about modelling and controlling a gas water heater. The two different control algorithms explored are the adaptive proportional integral derivative (APID) and the Smith predictive control (SPC) based on the internal physical model control algorithm. The first approach has some problems dealing with the time constant and the time delay variations of the system. This solution can control the overshoot for all different water flows but the time constant of the close loop systems changes with the water flow. The APID does not deal well with water flow variations. The second approach is more adequate to control this kind of systems (first order system followed by a time delay that changes in time).
机译:本文介绍了采用两种方法的电热水器系统的控制结果:自适应比例积分微分和基于物理内部模型控制结构的史密斯预测控制。用两个串联的可变模块对电热水器进行建模:一阶系统和时间延迟。实际上,系统的增益,时间常数和时间延迟会随着在置换室内流动的水而线性变化。基于能量动力学方程式对电热水器系统的物理模型进行了推演,并以类似于对燃气热水器建模和控制的预研研究中的方式,通过系统的开环数据对其进行了验证。探索的两种不同的控制算法是基于内部物理模型控制算法的自适应比例积分微分(APID)和史密斯预测控制(SPC)。第一种方法在处理系统的时间常数和时延变化方面存在一些问题。该解决方案可以控制所有不同水流的过冲,但是闭环系统的时间常数随水流而变化。 APID不能很好地处理水流变化。第二种方法更适合控制此类系统(一阶系统,其后是随时间变化的时间延迟)。

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