利用遗传算法改进基于 FLC 的婴儿培养箱系统

S. Budiyanto, L. M. Silalahi, Dadang Gunawan, Erry Yulian Triblas Adesta
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引用次数: 0

摘要

本研究课题的重点是治疗因体温过低而必须在保温箱中待上几天的早产儿。传统的早产儿重症监护方法,即母婴之间的皮肤护理方法。与此同时,随着最新技术的发展,该方法已基于电气物联网(IoT)工程。本研究提出了一种基于物联网的智能孵化器原型。该原型配备了实时监控系统,系统设置采用马姆达尼模糊推理系统控制方法,并与遗传算法(GA)方法相结合。结果表明,智能培养箱的理想温度范围为 33°C,精确度为 99.97%,与 29°C ≤x≤37°C 范围内的模糊成员度一致。此外,智能培养箱的理想相对湿度范围为 60%,精确度为 98.60%,与 59 ≤x≤65 范围内的模糊成员度一致。然后,智能培养箱的噪声范围为 37.9dB 至 56.8dB,准确率为 96.44%,符合模糊成员度。在最大距离为 50 厘米时,作为一项安全措施,原型需要 8 秒钟才能检测到移动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An enhancement to the FLC-based baby incubator system using genetic algorithm
This research problem focuses on treating premature babies due to hypothermia so that the baby must be put in an incubator for several days. Conventional intensive care method in premature babies, namely skin-to-skin care method between mother and child. Meanwhile, the latest technological developments, the method is already based on electrical-Internet of Things (IoT) engineering. This research proposes the design of an IoT-based prototype known as a smart incubator. This prototype has been equipped with a real-time monitoring system and system settings using the mamdani fuzzy inference system control method and combined using the Genetic Algorithm (GA) method. The results showed that the ideal temperature range in the smart incubator was 33° C with an accuracy of 99.97% and was in accordance with the fuzzy membership degree in the range of 29° C ≤x≤ 37° C. Furthermore, the ideal relative humidity range in the smart incubator was 60% with an accuracy of 98.60% and was in accordance with the fuzzy membership degree in the range of 59 ≤x≤ 65. Then, the noise range in the smart incubator is 37.9dB to 56.8dB with an accuracy of 96.44% and has been appropriate at the fuzzy membership degree. At a maximum distance of 50cm, it takes 8 seconds for the prototype to detect movement as a safety measure.
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