基于卡尔曼滤波的燃油传感器降噪系统设计

Rico Bernando Putra, Suhartati Agoes
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引用次数: 0

摘要

在交通运输领域,远程信息处理是利用全球定位系统(GPS)技术获取车辆信息,GPS技术与传感器相结合,实现对车辆信息的监控。其中之一是燃料监测。燃油传感器在静止状态下具有良好的精度,但车辆在不平路面行驶时,数据的稳定性会受到干扰,导致油箱晃动。本文讨论了一种采用卡尔曼滤波的燃油传感器降噪系统,以克服冲击引起的数据不稳定问题。本研究旨在降低噪声,使滤波结果更接近实际结果。滤波是通过改变卡尔曼滤波器中的过程误差协方差(Q)和测量误差(R)来实现的。燃油传感器的噪声是通过一个模拟器油箱来模拟的,该模拟器油箱由一个可以向x轴和y轴倾斜的致动器驱动,以模拟车辆的行为。来自传感器读数的油位数据由GPS通过蜂窝网络发送到服务器,然后使用web应用程序进行过滤。从测试结果中得到了(Q) = 0.1^3和(R) = 0.1^3的最佳滤波器。最佳滤波结果的平均误差为4.73%,比滤波前传感器数据的平均误差6.65%小1.92%。因此,这证明了该系统可以通过卡尔曼滤波来降低燃油传感器中的噪声。
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Design of a Fuel Sensor Noise Reduction System Using Kalman Filter
In the field of transportation, telematics is used to obtain vehicle information using Global Positioning System (GPS) technology which is integrated with sensors so that vehicle information can be monitored. One of them is fuel monitoring. The fuel sensor has good accuracy in stationary conditions, but the tability of the data is disturbed when the vehicle is running on an uneven road and causes the tank to shake. This study discusses a fuel sensor noise reduction system using a Kalman filter to overcome the problem of data instability due to shocks. This research aims to reduce noise so that the filter results are closer to the actual result. Filtering is done by changing the process error covariance (Q) and measurement error (R) in the Kalman filter. The fuel sensor noise is simulated using a simulator tank driven by an actuator that can tilt towards the x-axis and the y-axis to resemble the behavior of a vehicle. The fuel level data from the sensor readings are sent by GPS via the cellular network to a server which is then filtered using a web application. From the test results obtained the best filter with (Q) equals 0.1^3 and (R) equals 0.1^3. The average error of the best filter results is 4.73% where this value is 1.92% smaller than the average error of sensor data before filtering, which is 6.65%. Therefore, this proves that the system can reduce noise that occurs in the fuel sensor with the Kalman filter.
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