PHELP: Pixel Heating Experiment Learning Platform for Education and Research on IAI-based Smart Control Engineering

J. Viola, Carlos Rodriguez, Y. Chen
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引用次数: 1

Abstract

Thermal processes are one of the most common systems in the industry, making its understanding a mandatory skill for control engineers. So, multiple efforts are focused on developing low-cost and portable experimental training rigs recreating the thermal process dynamics and controls, usually limited to SISO or low order 2×2 MIMO systems. This paper presents PHELP, a low-cost, portable, and high order MIMO educational platform for uniformity temperature control training. The platform is composed of an array of 16 Peltier modules as heating elements, with a lower heating and cooling times, resulting in a 16×16 high order MIMO system. A low-cost realtime infrared thermal camera is employed as a temperature feedback sensor instead of a standard thermal sensor, ideal for high order MIMO system sensing and temperature distribution tracking. The control algorithm is developed in Matlab/Simulink and employs an Arduino board in hardware in the loop configuration to apply the control action to each Peltier module in the array. A temperature control experiment is performed, showing that the platform is suitable for teaching and training experiences not only in the classroom but also for engineers in the industry. Furthermore, various abnormal conditions can be introduced so that smart control engineering features can be tested.
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基于ai的智能控制工程教育与研究的像素加热实验学习平台
热过程是行业中最常见的系统之一,使其理解控制工程师的强制性技能。因此,多种努力都集中在开发低成本和便携式实验训练钻机重建热过程动力学和控制,通常仅限于SISO或低阶2×2 MIMO系统。本文介绍了一种低成本、便携、高阶多输入多输出(MIMO)的均匀性温度控制培训平台PHELP。该平台由16个Peltier模块组成的阵列作为加热元件,具有更短的加热和冷却时间,从而形成16×16高阶MIMO系统。采用低成本的实时红外热像仪作为温度反馈传感器,而不是标准的热传感器,是高阶MIMO系统传感和温度分布跟踪的理想选择。控制算法在Matlab/Simulink中开发,采用硬件在环配置中的Arduino板将控制动作应用于阵列中的每个Peltier模块。实验结果表明,该平台不仅适用于课堂教学和培训,也适用于行业工程师的教学和培训体验。此外,还可以引入各种异常情况,以便测试智能控制工程特性。
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