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Estimation of global solar irradiance with LDR sensor and artificial neural network embedded in an 8-bit microcontroller

机译:利用嵌入在8位微控制器中的LDR传感器和人工神经网络估算全球太阳辐照度

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This work deals with the estimation of global solar irradiance in an embedded platform through the use of a Light Dependent Resistor (LDR) sensor and its temperature. A prototype is built and has its values compared to the data obtained through a commercial pyranometer. An Multilayer Perceptron neural network is used to provide a non-linear regression between the voltage and temperature signals of the LDR on the commercial sensor irradiance data in a data analysis software. A regression with determination coefficient of 96.466 % and with mean squared error of 0.04 was obtained. The neural network present in the embedded system has 100% accuracy in relation to the neural network present in the data analysis software used. The minimum response time of the prototype is 13.49 ms and its dissipated power is 27.2 mW, making the approach quite promising. This neural estimation, using simple sensors like the LDR, can help to reduce the cost of renewable energy applications and make it easier to implement.
机译:这项工作通过使用轻依赖电阻(LDR)传感器及其温度来估算嵌入式平台中的全球太阳辐照度。与通过商业绘制仪获得的数据相比,构建了原型并具有其值。多层的Perceptron神经网络用于在数据分析软件中的LDR上的LDR电压和温度信号之间提供非线性回归。获得测定系数的回归96.466%,并且获得了0.04的平均平方误差。嵌入式系统中存在的神经网络具有100%的准确性,与所使用的数据分析软件中存在的神经网络相关。原型的最小响应时间为13.49毫秒,其耗散功率为27.2兆瓦,使方法非常有前途。这种神经估计,使用LDR这样的简单传感器可以帮助降低可再生能源应用的成本,并使更容易实现。

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