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Characteristic Curve Fitting of Capacitive Rainfall Sensor Based on BP Neural Network

机译:基于BP神经网络的电容降雨量传感器特征曲线拟合

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摘要

Rainfall is a kind of common weather phenomenon. Accurate measurement of rainfall is of great significance for weather and natural disasters forecasting. In this paper, the capacitive sensor was applied to the measurement of rainfall and the working principle was introduced. Furthermore, the output characteristic curve of the sensor was fitted by BP neural network. The sensor's calibration data were taken as training samples and BP network model was established. The results showed that the fitting algorithm based on BP neural network had faster convergence speed and higher accuracy, and its fitting error was much smaller than that of the least square method.
机译:降雨是一种常见的天气现象。对天气和自然灾害预测的准确测量是具有重要意义。在本文中,电容传感器应用于降雨的测量,并引入了工作原理。此外,传感器的输出特性曲线由BP神经网络装配。传感器的校准数据被视为训练样本,建立了BP网络模型。结果表明,基于BP神经网络的拟合算法具有更快的收敛速度和更高的精度,其拟合误差远小于最小二乘法的误差。

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