F. Budiman, M. Rivai, I. G. Bagus Prasta Raditya, Daniel Krisrenanto, Irma Zahroul Amiroh
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引用次数: 3
摘要
空调是一种功率要求较高的设备。为减少空调对能源的浪费,空调的温度设置应根据房间的实际情况进行调整。它可能受到人数和房间内活动程度的影响。为了节约电力消耗,本研究参照SNI理事会在印度尼西亚颁布的热舒适标准,设计一种基于人数识别和活动水平识别的智能自动空调系统,利用模糊逻辑控制空调的工作温度。系统采用USB摄像头作为图像采集设备。在图像处理中,采用定向梯度直方图(Histogram of Oriented Gradient, HOG)方法识别人数,采用背景减法识别活动水平。本系统实现在树莓派3上作为单板计算。测试结果表明,该系统能够对3米~ 9米范围内的人进行检测,对30厘米~ 150厘米范围内的2人进行区分,并能区分小、中、高活动水平。测试结果表明,所设计的模糊逻辑控制的工作温度最低为21℃,最高为27℃,符合SNI委员会制定的热舒适标准。工作温度与测量室温之间的差异仅在0.2°C至1.2°C之间。
Smart Control of Air Conditioning System Based on Number and Activity Level of Persons
Air conditioner (AC) is a device that requires high power. To reduce the energy waste by AC, the temperature setting should be adjusted to the room condition. It can be affected by the number of persons and the level of activity in the room. To save electricity consumption, this research is conducted to design an intelligent and automatic AC system based on identification of number of persons and activity level to control working temperature of AC using fuzzy logic refers to thermal comfort standard in Indonesia issued by SNI council. The system used USB camera as an image capture device. In image processing, Histogram of Oriented Gradient (HOG) method is used to identify the number of people, while background subtraction method is used to identify the activity level. This system is implemented into Raspberry Pi 3 as a single board computing. Test results show that the system is capable to detect people from a distance of 3m to 9m and distinguish 2 people within a distance of 30 cm to 150 cm, The system can also differentiate small, medium and high of activity levels. The test results show that the working temperature controlled by the designed fuzzy logic has the lowest value of 21°C and the highest value of 27°C which is in accordance with the thermal comfort standard that has been defined by the SNI council. The differences between working temperature and measured room temperature are within only 0.2°C to 1.2°C.