Implementation of Fuzzy Logic Method to Get Estimation of Fluid Depletion on Smart Infusion

Mira Permata Sari, Ahmad Taqwa, ade Silvia Handayani
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Abstract

Technology plays an important role in improving healthcare, especially in the field of medical care, particularly in infusion. Infusions are essential in hospitals, requiring constant monitoring by healthcare professionals to ensure patient safety.  The system tracks the remaining infusion fluid and displays this data on the nurse's mobile device, enabling remote control of infusion levels in each patient room. The solution incorporates a load cell sensor to measure infusion weight and an optocoupler sensor to measure infusion drip speed. In addition, the solution uses a fuzzy logic control system to make decisions based on drip speed and infusion weight, estimating when the infusion will run out.Applying this automatic infusion drip monitoring device significantly improves the accuracy and reliability of infusion management, leading to substantial improvements in patient care and safety.In this test, the results can be seen that there is a difference between the weight weighed manually and the weight on the device. with the largest weight difference of 2.49%.
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采用模糊逻辑法估算智能输液的液体消耗量
技术在改善医疗保健方面发挥着重要作用,特别是在医疗领域,尤其是输液方面。输液在医院中至关重要,需要医护人员持续监控,以确保患者安全。 该系统可追踪剩余输液量,并将数据显示在护士的移动设备上,从而实现对每个病房输液量的远程控制。该解决方案采用称重传感器测量输液重量,采用光耦合器传感器测量输液滴注速度。此外,该解决方案还使用模糊逻辑控制系统,根据滴注速度和输液重量做出决策,估计输液何时会用完。应用这种自动输液滴注监测设备,可显著提高输液管理的准确性和可靠性,从而大大改善患者护理和安全性。
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