基于自适应pid的温度轨迹跟踪控制提高咖啡烘焙的重复性

Tirta Inovan, A. Cahyadi, O. Wahyunggoro
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引用次数: 0

摘要

对高品质精品咖啡的需求日益增长,使得咖啡行业特别关注烘焙过程中的温度管理。比起将温度保持在一个精确的点上,随着时间的推移管理温度更重要,这直接影响到最终烘焙咖啡豆的风味发展。一般来说,咖啡烘焙机内的温度是由人工操作的,因此很难在不同批次的烘焙中重现相似的温度曲线。本文提出了一种新的嵌入式系统,实现了基于自适应PID-M的轨迹跟踪控制,目的是消除对操作员技能的过度依赖,以管理重复的焙烧过程。实验结果表明,所实现的系统能够以4.56^{\circ}\mathrm{C}$的均方误差(MSE)重建温度分布,比人工操作的21.7^{\circ}\mathrm{C}$有很大的提高。实施这一系统将使咖啡烘焙店改善质量控制,减少因烘焙批次不一致而造成的浪费。
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Implementation of Adaptive-PID Based Temperature Trajectory Tracking Control to Improve Repeatability in Coffee Roasting
The increasing demand for higher-quality specialty coffee is making the industry pay special attention to temperature management during roasting. Instead of keeping the temperature at an exact point, managing the temperature over time is more important, directly impacting flavor development on the final roasted beans. Generally, the temperature within the coffee roaster is managed by a human operator, making it hard to recreate a similar temperature profile between different roasting batches. This paper proposes a novel embedded system that implements trajectory tracking control based on Adaptive PID-M with the goal of eliminating over-reliance on an operator’s skill to manage the repetitive roasting process. Experimental results show that the implemented system is able to recreate temperature profile with a mean square error (MSE) of $4.56^{\circ}\mathrm{C}$ which is a huge improvement from human operators with an MSE of $21.7^{\circ}\mathrm{C}$. Implementing this system will allow coffee roasting shops to improve quality control and reduce waste from inconsistent roasting batches.
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